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# Ultralytics YOLOv5 🚀, AGPL-3.0 license | |
""" | |
Export a YOLOv5 PyTorch model to other formats. TensorFlow exports authored by https://github.com/zldrobit | |
Format | `export.py --include` | Model | |
--- | --- | --- | |
PyTorch | - | yolov5s.pt | |
TorchScript | `torchscript` | yolov5s.torchscript | |
ONNX | `onnx` | yolov5s.onnx | |
OpenVINO | `openvino` | yolov5s_openvino_model/ | |
TensorRT | `engine` | yolov5s.engine | |
CoreML | `coreml` | yolov5s.mlmodel | |
TensorFlow SavedModel | `saved_model` | yolov5s_saved_model/ | |
TensorFlow GraphDef | `pb` | yolov5s.pb | |
TensorFlow Lite | `tflite` | yolov5s.tflite | |
TensorFlow Edge TPU | `edgetpu` | yolov5s_edgetpu.tflite | |
TensorFlow.js | `tfjs` | yolov5s_web_model/ | |
PaddlePaddle | `paddle` | yolov5s_paddle_model/ | |
Requirements: | |
$ pip install -r requirements.txt coremltools onnx onnx-simplifier onnxruntime openvino-dev tensorflow-cpu # CPU | |
$ pip install -r requirements.txt coremltools onnx onnx-simplifier onnxruntime-gpu openvino-dev tensorflow # GPU | |
Usage: | |
$ python export.py --weights yolov5s.pt --include torchscript onnx openvino engine coreml tflite ... | |
Inference: | |
$ python detect.py --weights yolov5s.pt # PyTorch | |
yolov5s.torchscript # TorchScript | |
yolov5s.onnx # ONNX Runtime or OpenCV DNN with --dnn | |
yolov5s_openvino_model # OpenVINO | |
yolov5s.engine # TensorRT | |
yolov5s.mlmodel # CoreML (macOS-only) | |
yolov5s_saved_model # TensorFlow SavedModel | |
yolov5s.pb # TensorFlow GraphDef | |
yolov5s.tflite # TensorFlow Lite | |
yolov5s_edgetpu.tflite # TensorFlow Edge TPU | |
yolov5s_paddle_model # PaddlePaddle | |
TensorFlow.js: | |
$ cd .. && git clone https://github.com/zldrobit/tfjs-yolov5-example.git && cd tfjs-yolov5-example | |
$ npm install | |
$ ln -s ../../yolov5/yolov5s_web_model public/yolov5s_web_model | |
$ npm start | |
""" | |
import argparse | |
import contextlib | |
import json | |
import os | |
import platform | |
import re | |
import subprocess | |
import sys | |
import time | |
import warnings | |
from pathlib import Path | |
import pandas as pd | |
import torch | |
from torch.utils.mobile_optimizer import optimize_for_mobile | |
FILE = Path(__file__).resolve() | |
ROOT = FILE.parents[0] # YOLOv5 root directory | |
if str(ROOT) not in sys.path: | |
sys.path.append(str(ROOT)) # add ROOT to PATH | |
if platform.system() != "Windows": | |
ROOT = Path(os.path.relpath(ROOT, Path.cwd())) # relative | |
from models.experimental import attempt_load | |
from models.yolo import ClassificationModel, Detect, DetectionModel, SegmentationModel | |
from utils.dataloaders import LoadImages | |
from utils.general import ( | |
LOGGER, | |
Profile, | |
check_dataset, | |
check_img_size, | |
check_requirements, | |
check_version, | |
check_yaml, | |
colorstr, | |
file_size, | |
get_default_args, | |
print_args, | |
url2file, | |
yaml_save, | |
) | |
from utils.torch_utils import select_device, smart_inference_mode | |
MACOS = platform.system() == "Darwin" # macOS environment | |
class iOSModel(torch.nn.Module): | |
def __init__(self, model, im): | |
""" | |
Initializes an iOS compatible model with normalization based on image dimensions. | |
Args: | |
model (torch.nn.Module): The PyTorch model to be adapted for iOS compatibility. | |
im (torch.Tensor): An input tensor representing a batch of images with shape (B, C, H, W). | |
Returns: | |
None: This method does not return any value. | |
Notes: | |
This initializer configures normalization based on the input image dimensions, which is critical for | |
ensuring the model's compatibility and proper functionality on iOS devices. The normalization step | |
involves dividing by the image width if the image is square; otherwise, additional conditions might apply. | |
""" | |
super().__init__() | |
b, c, h, w = im.shape # batch, channel, height, width | |
self.model = model | |
self.nc = model.nc # number of classes | |
if w == h: | |
self.normalize = 1.0 / w | |
else: | |
self.normalize = torch.tensor([1.0 / w, 1.0 / h, 1.0 / w, 1.0 / h]) # broadcast (slower, smaller) | |
# np = model(im)[0].shape[1] # number of points | |
# self.normalize = torch.tensor([1. / w, 1. / h, 1. / w, 1. / h]).expand(np, 4) # explicit (faster, larger) | |
def forward(self, x): | |
""" | |
Run a forward pass on the input tensor, returning class confidences and normalized coordinates. | |
Args: | |
x (torch.Tensor): Input tensor containing the image data with shape (batch, channels, height, width). | |
Returns: | |
torch.Tensor: Concatenated tensor with normalized coordinates (xywh), confidence scores (conf), | |
and class probabilities (cls), having shape (N, 4 + 1 + C), where N is the number of predictions, | |
and C is the number of classes. | |
Examples: | |
```python | |
model = iOSModel(pretrained_model, input_image) | |
output = model.forward(torch_input_tensor) | |
``` | |
""" | |
xywh, conf, cls = self.model(x)[0].squeeze().split((4, 1, self.nc), 1) | |
return cls * conf, xywh * self.normalize # confidence (3780, 80), coordinates (3780, 4) | |
def export_formats(): | |
""" | |
Returns a DataFrame of supported YOLOv5 model export formats and their properties. | |
Returns: | |
pandas.DataFrame: A DataFrame containing supported export formats and their properties. The DataFrame | |
includes columns for format name, CLI argument suffix, file extension or directory name, and boolean flags | |
indicating if the export format supports training and detection. | |
Examples: | |
```python | |
formats = export_formats() | |
print(f"Supported export formats:\n{formats}") | |
``` | |
Notes: | |
The DataFrame contains the following columns: | |
- Format: The name of the model format (e.g., PyTorch, TorchScript, ONNX, etc.). | |
- Include Argument: The argument to use with the export script to include this format. | |
- File Suffix: File extension or directory name associated with the format. | |
- Supports Training: Whether the format supports training. | |
- Supports Detection: Whether the format supports detection. | |
""" | |
x = [ | |
["PyTorch", "-", ".pt", True, True], | |
["TorchScript", "torchscript", ".torchscript", True, True], | |
["ONNX", "onnx", ".onnx", True, True], | |
["OpenVINO", "openvino", "_openvino_model", True, False], | |
["TensorRT", "engine", ".engine", False, True], | |
["CoreML", "coreml", ".mlpackage", True, False], | |
["TensorFlow SavedModel", "saved_model", "_saved_model", True, True], | |
["TensorFlow GraphDef", "pb", ".pb", True, True], | |
["TensorFlow Lite", "tflite", ".tflite", True, False], | |
["TensorFlow Edge TPU", "edgetpu", "_edgetpu.tflite", False, False], | |
["TensorFlow.js", "tfjs", "_web_model", False, False], | |
["PaddlePaddle", "paddle", "_paddle_model", True, True], | |
] | |
return pd.DataFrame(x, columns=["Format", "Argument", "Suffix", "CPU", "GPU"]) | |
def try_export(inner_func): | |
""" | |
Log success or failure, execution time, and file size for YOLOv5 model export functions wrapped with @try_export. | |
Args: | |
inner_func (Callable): The model export function to be wrapped by the decorator. | |
Returns: | |
Callable: The wrapped function that logs execution details. When executed, this wrapper function returns either: | |
- Tuple (str | torch.nn.Module): On success — the file path of the exported model and the model instance. | |
- Tuple (None, None): On failure — None values indicating export failure. | |
Examples: | |
```python | |
@try_export | |
def export_onnx(model, filepath): | |
# implementation here | |
pass | |
exported_file, exported_model = export_onnx(yolo_model, 'path/to/save/model.onnx') | |
``` | |
Notes: | |
For additional requirements and model export formats, refer to the | |
[Ultralytics YOLOv5 GitHub repository](https://github.com/ultralytics/ultralytics). | |
""" | |
inner_args = get_default_args(inner_func) | |
def outer_func(*args, **kwargs): | |
"""Logs success/failure and execution details of model export functions wrapped with @try_export decorator.""" | |
prefix = inner_args["prefix"] | |
try: | |
with Profile() as dt: | |
f, model = inner_func(*args, **kwargs) | |
LOGGER.info(f"{prefix} export success ✅ {dt.t:.1f}s, saved as {f} ({file_size(f):.1f} MB)") | |
return f, model | |
except Exception as e: | |
LOGGER.info(f"{prefix} export failure ❌ {dt.t:.1f}s: {e}") | |
return None, None | |
return outer_func | |
def export_torchscript(model, im, file, optimize, prefix=colorstr("TorchScript:")): | |
""" | |
Export a YOLOv5 model to the TorchScript format. | |
Args: | |
model (torch.nn.Module): The YOLOv5 model to be exported. | |
im (torch.Tensor): Example input tensor to be used for tracing the TorchScript model. | |
file (Path): File path where the exported TorchScript model will be saved. | |
optimize (bool): If True, applies optimizations for mobile deployment. | |
prefix (str): Optional prefix for log messages. Default is 'TorchScript:'. | |
Returns: | |
(str | None, torch.jit.ScriptModule | None): A tuple containing the file path of the exported model | |
(as a string) and the TorchScript model (as a torch.jit.ScriptModule). If the export fails, both elements | |
of the tuple will be None. | |
Notes: | |
- This function uses tracing to create the TorchScript model. | |
- Metadata, including the input image shape, model stride, and class names, is saved in an extra file (`config.txt`) | |
within the TorchScript model package. | |
- For mobile optimization, refer to the PyTorch tutorial: https://pytorch.org/tutorials/recipes/mobile_interpreter.html | |
Example: | |
```python | |
from pathlib import Path | |
import torch | |
from models.experimental import attempt_load | |
from utils.torch_utils import select_device | |
# Load model | |
weights = 'yolov5s.pt' | |
device = select_device('') | |
model = attempt_load(weights, device=device) | |
# Example input tensor | |
im = torch.zeros(1, 3, 640, 640).to(device) | |
# Export model | |
file = Path('yolov5s.torchscript') | |
export_torchscript(model, im, file, optimize=False) | |
``` | |
""" | |
LOGGER.info(f"\n{prefix} starting export with torch {torch.__version__}...") | |
f = file.with_suffix(".torchscript") | |
ts = torch.jit.trace(model, im, strict=False) | |
d = {"shape": im.shape, "stride": int(max(model.stride)), "names": model.names} | |
extra_files = {"config.txt": json.dumps(d)} # torch._C.ExtraFilesMap() | |
if optimize: # https://pytorch.org/tutorials/recipes/mobile_interpreter.html | |
optimize_for_mobile(ts)._save_for_lite_interpreter(str(f), _extra_files=extra_files) | |
else: | |
ts.save(str(f), _extra_files=extra_files) | |
return f, None | |
def export_onnx(model, im, file, opset, dynamic, simplify, prefix=colorstr("ONNX:")): | |
""" | |
Export a YOLOv5 model to ONNX format with dynamic axes support and optional model simplification. | |
Args: | |
model (torch.nn.Module): The YOLOv5 model to be exported. | |
im (torch.Tensor): A sample input tensor for model tracing, usually the shape is (1, 3, height, width). | |
file (pathlib.Path | str): The output file path where the ONNX model will be saved. | |
opset (int): The ONNX opset version to use for export. | |
dynamic (bool): If True, enables dynamic axes for batch, height, and width dimensions. | |
simplify (bool): If True, applies ONNX model simplification for optimization. | |
prefix (str): A prefix string for logging messages, defaults to 'ONNX:'. | |
Returns: | |
tuple[pathlib.Path | str, None]: The path to the saved ONNX model file and None (consistent with decorator). | |
Raises: | |
ImportError: If required libraries for export (e.g., 'onnx', 'onnx-simplifier') are not installed. | |
AssertionError: If the simplification check fails. | |
Notes: | |
The required packages for this function can be installed via: | |
``` | |
pip install onnx onnx-simplifier onnxruntime onnxruntime-gpu | |
``` | |
Example: | |
```python | |
from pathlib import Path | |
import torch | |
from models.experimental import attempt_load | |
from utils.torch_utils import select_device | |
# Load model | |
weights = 'yolov5s.pt' | |
device = select_device('') | |
model = attempt_load(weights, map_location=device) | |
# Example input tensor | |
im = torch.zeros(1, 3, 640, 640).to(device) | |
# Export model | |
file_path = Path('yolov5s.onnx') | |
export_onnx(model, im, file_path, opset=12, dynamic=True, simplify=True) | |
``` | |
""" | |
check_requirements("onnx>=1.12.0") | |
import onnx | |
LOGGER.info(f"\n{prefix} starting export with onnx {onnx.__version__}...") | |
f = str(file.with_suffix(".onnx")) | |
output_names = ["output0", "output1"] if isinstance(model, SegmentationModel) else ["output0"] | |
if dynamic: | |
dynamic = {"images": {0: "batch", 2: "height", 3: "width"}} # shape(1,3,640,640) | |
if isinstance(model, SegmentationModel): | |
dynamic["output0"] = {0: "batch", 1: "anchors"} # shape(1,25200,85) | |
dynamic["output1"] = {0: "batch", 2: "mask_height", 3: "mask_width"} # shape(1,32,160,160) | |
elif isinstance(model, DetectionModel): | |
dynamic["output0"] = {0: "batch", 1: "anchors"} # shape(1,25200,85) | |
torch.onnx.export( | |
model.cpu() if dynamic else model, # --dynamic only compatible with cpu | |
im.cpu() if dynamic else im, | |
f, | |
verbose=False, | |
opset_version=opset, | |
do_constant_folding=True, # WARNING: DNN inference with torch>=1.12 may require do_constant_folding=False | |
input_names=["images"], | |
output_names=output_names, | |
dynamic_axes=dynamic or None, | |
) | |
# Checks | |
model_onnx = onnx.load(f) # load onnx model | |
onnx.checker.check_model(model_onnx) # check onnx model | |
# Metadata | |
d = {"stride": int(max(model.stride)), "names": model.names} | |
for k, v in d.items(): | |
meta = model_onnx.metadata_props.add() | |
meta.key, meta.value = k, str(v) | |
onnx.save(model_onnx, f) | |
# Simplify | |
if simplify: | |
try: | |
cuda = torch.cuda.is_available() | |
check_requirements(("onnxruntime-gpu" if cuda else "onnxruntime", "onnx-simplifier>=0.4.1")) | |
import onnxsim | |
LOGGER.info(f"{prefix} simplifying with onnx-simplifier {onnxsim.__version__}...") | |
model_onnx, check = onnxsim.simplify(model_onnx) | |
assert check, "assert check failed" | |
onnx.save(model_onnx, f) | |
except Exception as e: | |
LOGGER.info(f"{prefix} simplifier failure: {e}") | |
return f, model_onnx | |
def export_openvino(file, metadata, half, int8, data, prefix=colorstr("OpenVINO:")): | |
""" | |
Export a YOLOv5 model to OpenVINO format with optional FP16 and INT8 quantization. | |
Args: | |
file (Path): Path to the output file where the OpenVINO model will be saved. | |
metadata (dict): Dictionary including model metadata such as names and strides. | |
half (bool): If True, export the model with FP16 precision. | |
int8 (bool): If True, export the model with INT8 quantization. | |
data (str): Path to the dataset YAML file required for INT8 quantization. | |
prefix (str): Prefix string for logging purposes (default is "OpenVINO:"). | |
Returns: | |
(str, openvino.runtime.Model | None): The OpenVINO model file path and openvino.runtime.Model object if export is | |
successful; otherwise, None. | |
Notes: | |
- Requires `openvino-dev` package version 2023.0 or higher. Install with: | |
`$ pip install openvino-dev>=2023.0` | |
- For INT8 quantization, also requires `nncf` library version 2.5.0 or higher. Install with: | |
`$ pip install nncf>=2.5.0` | |
Examples: | |
```python | |
from pathlib import Path | |
from ultralytics import YOLOv5 | |
model = YOLOv5('yolov5s.pt') | |
export_openvino(Path('yolov5s.onnx'), metadata={'names': model.names, 'stride': model.stride}, half=True, | |
int8=False, data='data.yaml') | |
``` | |
This will export the YOLOv5 model to OpenVINO with FP16 precision but without INT8 quantization, saving it to | |
the specified file path. | |
""" | |
check_requirements("openvino-dev>=2023.0") # requires openvino-dev: https://pypi.org/project/openvino-dev/ | |
import openvino.runtime as ov # noqa | |
from openvino.tools import mo # noqa | |
LOGGER.info(f"\n{prefix} starting export with openvino {ov.__version__}...") | |
f = str(file).replace(file.suffix, f"_{'int8_' if int8 else ''}openvino_model{os.sep}") | |
f_onnx = file.with_suffix(".onnx") | |
f_ov = str(Path(f) / file.with_suffix(".xml").name) | |
ov_model = mo.convert_model(f_onnx, model_name=file.stem, framework="onnx", compress_to_fp16=half) # export | |
if int8: | |
check_requirements("nncf>=2.5.0") # requires at least version 2.5.0 to use the post-training quantization | |
import nncf | |
import numpy as np | |
from utils.dataloaders import create_dataloader | |
def gen_dataloader(yaml_path, task="train", imgsz=640, workers=4): | |
"""Generates a DataLoader for model training or validation based on the given YAML dataset configuration.""" | |
data_yaml = check_yaml(yaml_path) | |
data = check_dataset(data_yaml) | |
dataloader = create_dataloader( | |
data[task], imgsz=imgsz, batch_size=1, stride=32, pad=0.5, single_cls=False, rect=False, workers=workers | |
)[0] | |
return dataloader | |
# noqa: F811 | |
def transform_fn(data_item): | |
""" | |
Quantization transform function. | |
Extracts and preprocess input data from dataloader item for quantization. | |
Parameters: | |
data_item: Tuple with data item produced by DataLoader during iteration | |
Returns: | |
input_tensor: Input data for quantization | |
""" | |
assert data_item[0].dtype == torch.uint8, "input image must be uint8 for the quantization preprocessing" | |
img = data_item[0].numpy().astype(np.float32) # uint8 to fp16/32 | |
img /= 255.0 # 0 - 255 to 0.0 - 1.0 | |
return np.expand_dims(img, 0) if img.ndim == 3 else img | |
ds = gen_dataloader(data) | |
quantization_dataset = nncf.Dataset(ds, transform_fn) | |
ov_model = nncf.quantize(ov_model, quantization_dataset, preset=nncf.QuantizationPreset.MIXED) | |
ov.serialize(ov_model, f_ov) # save | |
yaml_save(Path(f) / file.with_suffix(".yaml").name, metadata) # add metadata.yaml | |
return f, None | |
def export_paddle(model, im, file, metadata, prefix=colorstr("PaddlePaddle:")): | |
""" | |
Export a YOLOv5 PyTorch model to PaddlePaddle format using X2Paddle, saving the converted model and metadata. | |
Args: | |
model (torch.nn.Module): The YOLOv5 model to be exported. | |
im (torch.Tensor): Input tensor used for model tracing during export. | |
file (pathlib.Path): Path to the source file to be converted. | |
metadata (dict): Additional metadata to be saved alongside the model. | |
prefix (str): Prefix for logging information. | |
Returns: | |
tuple (str, None): A tuple where the first element is the path to the saved PaddlePaddle model, and the | |
second element is None. | |
Examples: | |
```python | |
from pathlib import Path | |
import torch | |
# Assume 'model' is a pre-trained YOLOv5 model and 'im' is an example input tensor | |
model = ... # Load your model here | |
im = torch.randn((1, 3, 640, 640)) # Dummy input tensor for tracing | |
file = Path("yolov5s.pt") | |
metadata = {"stride": 32, "names": ["person", "bicycle", "car", "motorbike"]} | |
export_paddle(model=model, im=im, file=file, metadata=metadata) | |
``` | |
Notes: | |
Ensure that `paddlepaddle` and `x2paddle` are installed, as these are required for the export function. You can | |
install them via pip: | |
``` | |
$ pip install paddlepaddle x2paddle | |
``` | |
""" | |
check_requirements(("paddlepaddle", "x2paddle")) | |
import x2paddle | |
from x2paddle.convert import pytorch2paddle | |
LOGGER.info(f"\n{prefix} starting export with X2Paddle {x2paddle.__version__}...") | |
f = str(file).replace(".pt", f"_paddle_model{os.sep}") | |
pytorch2paddle(module=model, save_dir=f, jit_type="trace", input_examples=[im]) # export | |
yaml_save(Path(f) / file.with_suffix(".yaml").name, metadata) # add metadata.yaml | |
return f, None | |
def export_coreml(model, im, file, int8, half, nms, mlmodel, prefix=colorstr("CoreML:")): | |
""" | |
Export a YOLOv5 model to CoreML format with optional NMS, INT8, and FP16 support. | |
Args: | |
model (torch.nn.Module): The YOLOv5 model to be exported. | |
im (torch.Tensor): Example input tensor to trace the model. | |
file (pathlib.Path): Path object where the CoreML model will be saved. | |
int8 (bool): Flag indicating whether to use INT8 quantization (default is False). | |
half (bool): Flag indicating whether to use FP16 quantization (default is False). | |
nms (bool): Flag indicating whether to include Non-Maximum Suppression (default is False). | |
mlmodel (bool): Flag indicating whether to export as older *.mlmodel format (default is False). | |
prefix (str): Prefix string for logging purposes (default is 'CoreML:'). | |
Returns: | |
tuple[pathlib.Path | None, None]: The path to the saved CoreML model file, or (None, None) if there is an error. | |
Notes: | |
The exported CoreML model will be saved with a .mlmodel extension. | |
Quantization is supported only on macOS. | |
Example: | |
```python | |
from pathlib import Path | |
import torch | |
from models.yolo import Model | |
model = Model(cfg, ch=3, nc=80) | |
im = torch.randn(1, 3, 640, 640) | |
file = Path("yolov5s_coreml") | |
export_coreml(model, im, file, int8=False, half=False, nms=True, mlmodel=False) | |
``` | |
""" | |
check_requirements("coremltools") | |
import coremltools as ct | |
LOGGER.info(f"\n{prefix} starting export with coremltools {ct.__version__}...") | |
if mlmodel: | |
f = file.with_suffix(".mlmodel") | |
convert_to = "neuralnetwork" | |
precision = None | |
else: | |
f = file.with_suffix(".mlpackage") | |
convert_to = "mlprogram" | |
if half: | |
precision = ct.precision.FLOAT16 | |
else: | |
precision = ct.precision.FLOAT32 | |
if nms: | |
model = iOSModel(model, im) | |
ts = torch.jit.trace(model, im, strict=False) # TorchScript model | |
ct_model = ct.convert( | |
ts, | |
inputs=[ct.ImageType("image", shape=im.shape, scale=1 / 255, bias=[0, 0, 0])], | |
convert_to=convert_to, | |
compute_precision=precision, | |
) | |
bits, mode = (8, "kmeans") if int8 else (16, "linear") if half else (32, None) | |
if bits < 32: | |
if mlmodel: | |
with warnings.catch_warnings(): | |
warnings.filterwarnings( | |
"ignore", category=DeprecationWarning | |
) # suppress numpy==1.20 float warning, fixed in coremltools==7.0 | |
ct_model = ct.models.neural_network.quantization_utils.quantize_weights(ct_model, bits, mode) | |
elif bits == 8: | |
op_config = ct.optimize.coreml.OpPalettizerConfig(mode=mode, nbits=bits, weight_threshold=512) | |
config = ct.optimize.coreml.OptimizationConfig(global_config=op_config) | |
ct_model = ct.optimize.coreml.palettize_weights(ct_model, config) | |
ct_model.save(f) | |
return f, ct_model | |
def export_engine(model, im, file, half, dynamic, simplify, workspace=4, verbose=False, prefix=colorstr("TensorRT:")): | |
""" | |
Export a YOLOv5 model to TensorRT engine format, requiring GPU and TensorRT>=7.0.0. | |
Args: | |
model (torch.nn.Module): YOLOv5 model to be exported. | |
im (torch.Tensor): Input tensor of shape (B, C, H, W). | |
file (pathlib.Path): Path to save the exported model. | |
half (bool): Set to True to export with FP16 precision. | |
dynamic (bool): Set to True to enable dynamic input shapes. | |
simplify (bool): Set to True to simplify the model during export. | |
workspace (int): Workspace size in GB (default is 4). | |
verbose (bool): Set to True for verbose logging output. | |
prefix (str): Log message prefix. | |
Returns: | |
(pathlib.Path, None): Tuple containing the path to the exported model and None. | |
Raises: | |
AssertionError: If executed on CPU instead of GPU. | |
RuntimeError: If there is a failure in parsing the ONNX file. | |
Example: | |
```python | |
from ultralytics import YOLOv5 | |
import torch | |
from pathlib import Path | |
model = YOLOv5('yolov5s.pt') # Load a pre-trained YOLOv5 model | |
input_tensor = torch.randn(1, 3, 640, 640).cuda() # example input tensor on GPU | |
export_path = Path('yolov5s.engine') # export destination | |
export_engine(model.model, input_tensor, export_path, half=True, dynamic=True, simplify=True, workspace=8, verbose=True) | |
``` | |
""" | |
assert im.device.type != "cpu", "export running on CPU but must be on GPU, i.e. `python export.py --device 0`" | |
try: | |
import tensorrt as trt | |
except Exception: | |
if platform.system() == "Linux": | |
check_requirements("nvidia-tensorrt", cmds="-U --index-url https://pypi.ngc.nvidia.com") | |
import tensorrt as trt | |
if trt.__version__[0] == "7": # TensorRT 7 handling https://github.com/ultralytics/yolov5/issues/6012 | |
grid = model.model[-1].anchor_grid | |
model.model[-1].anchor_grid = [a[..., :1, :1, :] for a in grid] | |
export_onnx(model, im, file, 12, dynamic, simplify) # opset 12 | |
model.model[-1].anchor_grid = grid | |
else: # TensorRT >= 8 | |
check_version(trt.__version__, "8.0.0", hard=True) # require tensorrt>=8.0.0 | |
export_onnx(model, im, file, 12, dynamic, simplify) # opset 12 | |
onnx = file.with_suffix(".onnx") | |
LOGGER.info(f"\n{prefix} starting export with TensorRT {trt.__version__}...") | |
is_trt10 = int(trt.__version__.split(".")[0]) >= 10 # is TensorRT >= 10 | |
assert onnx.exists(), f"failed to export ONNX file: {onnx}" | |
f = file.with_suffix(".engine") # TensorRT engine file | |
logger = trt.Logger(trt.Logger.INFO) | |
if verbose: | |
logger.min_severity = trt.Logger.Severity.VERBOSE | |
builder = trt.Builder(logger) | |
config = builder.create_builder_config() | |
if is_trt10: | |
config.set_memory_pool_limit(trt.MemoryPoolType.WORKSPACE, workspace << 30) | |
else: # TensorRT versions 7, 8 | |
config.max_workspace_size = workspace * 1 << 30 | |
flag = 1 << int(trt.NetworkDefinitionCreationFlag.EXPLICIT_BATCH) | |
network = builder.create_network(flag) | |
parser = trt.OnnxParser(network, logger) | |
if not parser.parse_from_file(str(onnx)): | |
raise RuntimeError(f"failed to load ONNX file: {onnx}") | |
inputs = [network.get_input(i) for i in range(network.num_inputs)] | |
outputs = [network.get_output(i) for i in range(network.num_outputs)] | |
for inp in inputs: | |
LOGGER.info(f'{prefix} input "{inp.name}" with shape{inp.shape} {inp.dtype}') | |
for out in outputs: | |
LOGGER.info(f'{prefix} output "{out.name}" with shape{out.shape} {out.dtype}') | |
if dynamic: | |
if im.shape[0] <= 1: | |
LOGGER.warning(f"{prefix} WARNING ⚠️ --dynamic model requires maximum --batch-size argument") | |
profile = builder.create_optimization_profile() | |
for inp in inputs: | |
profile.set_shape(inp.name, (1, *im.shape[1:]), (max(1, im.shape[0] // 2), *im.shape[1:]), im.shape) | |
config.add_optimization_profile(profile) | |
LOGGER.info(f"{prefix} building FP{16 if builder.platform_has_fast_fp16 and half else 32} engine as {f}") | |
if builder.platform_has_fast_fp16 and half: | |
config.set_flag(trt.BuilderFlag.FP16) | |
build = builder.build_serialized_network if is_trt10 else builder.build_engine | |
with build(network, config) as engine, open(f, "wb") as t: | |
t.write(engine if is_trt10 else engine.serialize()) | |
return f, None | |
def export_saved_model( | |
model, | |
im, | |
file, | |
dynamic, | |
tf_nms=False, | |
agnostic_nms=False, | |
topk_per_class=100, | |
topk_all=100, | |
iou_thres=0.45, | |
conf_thres=0.25, | |
keras=False, | |
prefix=colorstr("TensorFlow SavedModel:"), | |
): | |
""" | |
Export a YOLOv5 model to the TensorFlow SavedModel format, supporting dynamic axes and non-maximum suppression | |
(NMS). | |
Args: | |
model (torch.nn.Module): The PyTorch model to convert. | |
im (torch.Tensor): Sample input tensor with shape (B, C, H, W) for tracing. | |
file (pathlib.Path): File path to save the exported model. | |
dynamic (bool): Flag to indicate whether dynamic axes should be used. | |
tf_nms (bool, optional): Enable TensorFlow non-maximum suppression (NMS). Default is False. | |
agnostic_nms (bool, optional): Enable class-agnostic NMS. Default is False. | |
topk_per_class (int, optional): Top K detections per class to keep before applying NMS. Default is 100. | |
topk_all (int, optional): Top K detections across all classes to keep before applying NMS. Default is 100. | |
iou_thres (float, optional): IoU threshold for NMS. Default is 0.45. | |
conf_thres (float, optional): Confidence threshold for detections. Default is 0.25. | |
keras (bool, optional): Save the model in Keras format if True. Default is False. | |
prefix (str, optional): Prefix for logging messages. Default is "TensorFlow SavedModel:". | |
Returns: | |
tuple[str, tf.keras.Model | None]: A tuple containing the path to the saved model folder and the Keras model instance, | |
or None if TensorFlow export fails. | |
Notes: | |
- The method supports TensorFlow versions up to 2.15.1. | |
- TensorFlow NMS may not be supported in older TensorFlow versions. | |
- If the TensorFlow version exceeds 2.13.1, it might cause issues when exporting to TFLite. | |
Refer to: https://github.com/ultralytics/yolov5/issues/12489 | |
Example: | |
```python | |
model, im = ... # Initialize your PyTorch model and input tensor | |
export_saved_model(model, im, Path("yolov5_saved_model"), dynamic=True) | |
``` | |
""" | |
# YOLOv5 TensorFlow SavedModel export | |
try: | |
import tensorflow as tf | |
except Exception: | |
check_requirements(f"tensorflow{'' if torch.cuda.is_available() else '-macos' if MACOS else '-cpu'}<=2.15.1") | |
import tensorflow as tf | |
from tensorflow.python.framework.convert_to_constants import convert_variables_to_constants_v2 | |
from models.tf import TFModel | |
LOGGER.info(f"\n{prefix} starting export with tensorflow {tf.__version__}...") | |
if tf.__version__ > "2.13.1": | |
helper_url = "https://github.com/ultralytics/yolov5/issues/12489" | |
LOGGER.info( | |
f"WARNING ⚠️ using Tensorflow {tf.__version__} > 2.13.1 might cause issue when exporting the model to tflite {helper_url}" | |
) # handling issue https://github.com/ultralytics/yolov5/issues/12489 | |
f = str(file).replace(".pt", "_saved_model") | |
batch_size, ch, *imgsz = list(im.shape) # BCHW | |
tf_model = TFModel(cfg=model.yaml, model=model, nc=model.nc, imgsz=imgsz) | |
im = tf.zeros((batch_size, *imgsz, ch)) # BHWC order for TensorFlow | |
_ = tf_model.predict(im, tf_nms, agnostic_nms, topk_per_class, topk_all, iou_thres, conf_thres) | |
inputs = tf.keras.Input(shape=(*imgsz, ch), batch_size=None if dynamic else batch_size) | |
outputs = tf_model.predict(inputs, tf_nms, agnostic_nms, topk_per_class, topk_all, iou_thres, conf_thres) | |
keras_model = tf.keras.Model(inputs=inputs, outputs=outputs) | |
keras_model.trainable = False | |
keras_model.summary() | |
if keras: | |
keras_model.save(f, save_format="tf") | |
else: | |
spec = tf.TensorSpec(keras_model.inputs[0].shape, keras_model.inputs[0].dtype) | |
m = tf.function(lambda x: keras_model(x)) # full model | |
m = m.get_concrete_function(spec) | |
frozen_func = convert_variables_to_constants_v2(m) | |
tfm = tf.Module() | |
tfm.__call__ = tf.function(lambda x: frozen_func(x)[:4] if tf_nms else frozen_func(x), [spec]) | |
tfm.__call__(im) | |
tf.saved_model.save( | |
tfm, | |
f, | |
options=tf.saved_model.SaveOptions(experimental_custom_gradients=False) | |
if check_version(tf.__version__, "2.6") | |
else tf.saved_model.SaveOptions(), | |
) | |
return f, keras_model | |
def export_pb(keras_model, file, prefix=colorstr("TensorFlow GraphDef:")): | |
""" | |
Export YOLOv5 model to TensorFlow GraphDef (*.pb) format. | |
Args: | |
keras_model (tf.keras.Model): The Keras model to be converted. | |
file (Path): The output file path where the GraphDef will be saved. | |
prefix (str): Optional prefix string; defaults to a colored string indicating TensorFlow GraphDef export status. | |
Returns: | |
Tuple[Path, None]: The file path where the GraphDef model was saved and a None placeholder. | |
Notes: | |
For more details, refer to the guide on frozen graphs: https://github.com/leimao/Frozen_Graph_TensorFlow | |
Example: | |
```python | |
from pathlib import Path | |
keras_model = ... # assume an existing Keras model | |
file = Path("model.pb") | |
export_pb(keras_model, file) | |
``` | |
""" | |
import tensorflow as tf | |
from tensorflow.python.framework.convert_to_constants import convert_variables_to_constants_v2 | |
LOGGER.info(f"\n{prefix} starting export with tensorflow {tf.__version__}...") | |
f = file.with_suffix(".pb") | |
m = tf.function(lambda x: keras_model(x)) # full model | |
m = m.get_concrete_function(tf.TensorSpec(keras_model.inputs[0].shape, keras_model.inputs[0].dtype)) | |
frozen_func = convert_variables_to_constants_v2(m) | |
frozen_func.graph.as_graph_def() | |
tf.io.write_graph(graph_or_graph_def=frozen_func.graph, logdir=str(f.parent), name=f.name, as_text=False) | |
return f, None | |
def export_tflite( | |
keras_model, im, file, int8, per_tensor, data, nms, agnostic_nms, prefix=colorstr("TensorFlow Lite:") | |
): | |
# YOLOv5 TensorFlow Lite export | |
""" | |
Export a YOLOv5 model to TensorFlow Lite format with optional INT8 quantization and NMS support. | |
Args: | |
keras_model (tf.keras.Model): The Keras model to be exported. | |
im (torch.Tensor): An input image tensor for normalization and model tracing. | |
file (Path): The file path to save the TensorFlow Lite model. | |
int8 (bool): Enables INT8 quantization if True. | |
per_tensor (bool): If True, disables per-channel quantization. | |
data (str): Path to the dataset for representative dataset generation in INT8 quantization. | |
nms (bool): Enables Non-Maximum Suppression (NMS) if True. | |
agnostic_nms (bool): Enables class-agnostic NMS if True. | |
prefix (str): Prefix for log messages. | |
Returns: | |
(str | None, tflite.Model | None): The file path of the exported TFLite model and the TFLite model instance, or None | |
if the export failed. | |
Example: | |
```python | |
from pathlib import Path | |
import torch | |
import tensorflow as tf | |
# Load a Keras model wrapping a YOLOv5 model | |
keras_model = tf.keras.models.load_model('path/to/keras_model.h5') | |
# Example input tensor | |
im = torch.zeros(1, 3, 640, 640) | |
# Export the model | |
export_tflite(keras_model, im, Path('model.tflite'), int8=True, per_tensor=False, data='data/coco.yaml', | |
nms=True, agnostic_nms=False) | |
``` | |
Notes: | |
- Ensure TensorFlow and TensorFlow Lite dependencies are installed. | |
- INT8 quantization requires a representative dataset to achieve optimal accuracy. | |
- TensorFlow Lite models are suitable for efficient inference on mobile and edge devices. | |
""" | |
import tensorflow as tf | |
LOGGER.info(f"\n{prefix} starting export with tensorflow {tf.__version__}...") | |
batch_size, ch, *imgsz = list(im.shape) # BCHW | |
f = str(file).replace(".pt", "-fp16.tflite") | |
converter = tf.lite.TFLiteConverter.from_keras_model(keras_model) | |
converter.target_spec.supported_ops = [tf.lite.OpsSet.TFLITE_BUILTINS] | |
converter.target_spec.supported_types = [tf.float16] | |
converter.optimizations = [tf.lite.Optimize.DEFAULT] | |
if int8: | |
from models.tf import representative_dataset_gen | |
dataset = LoadImages(check_dataset(check_yaml(data))["train"], img_size=imgsz, auto=False) | |
converter.representative_dataset = lambda: representative_dataset_gen(dataset, ncalib=100) | |
converter.target_spec.supported_ops = [tf.lite.OpsSet.TFLITE_BUILTINS_INT8] | |
converter.target_spec.supported_types = [] | |
converter.inference_input_type = tf.uint8 # or tf.int8 | |
converter.inference_output_type = tf.uint8 # or tf.int8 | |
converter.experimental_new_quantizer = True | |
if per_tensor: | |
converter._experimental_disable_per_channel = True | |
f = str(file).replace(".pt", "-int8.tflite") | |
if nms or agnostic_nms: | |
converter.target_spec.supported_ops.append(tf.lite.OpsSet.SELECT_TF_OPS) | |
tflite_model = converter.convert() | |
open(f, "wb").write(tflite_model) | |
return f, None | |
def export_edgetpu(file, prefix=colorstr("Edge TPU:")): | |
""" | |
Exports a YOLOv5 model to Edge TPU compatible TFLite format; requires Linux and Edge TPU compiler. | |
Args: | |
file (Path): Path to the YOLOv5 model file to be exported (.pt format). | |
prefix (str, optional): Prefix for logging messages. Defaults to colorstr("Edge TPU:"). | |
Returns: | |
tuple[Path, None]: Path to the exported Edge TPU compatible TFLite model, None. | |
Raises: | |
AssertionError: If the system is not Linux. | |
subprocess.CalledProcessError: If any subprocess call to install or run the Edge TPU compiler fails. | |
Notes: | |
To use this function, ensure you have the Edge TPU compiler installed on your Linux system. You can find | |
installation instructions here: https://coral.ai/docs/edgetpu/compiler/. | |
Example: | |
```python | |
from pathlib import Path | |
file = Path('yolov5s.pt') | |
export_edgetpu(file) | |
``` | |
""" | |
cmd = "edgetpu_compiler --version" | |
help_url = "https://coral.ai/docs/edgetpu/compiler/" | |
assert platform.system() == "Linux", f"export only supported on Linux. See {help_url}" | |
if subprocess.run(f"{cmd} > /dev/null 2>&1", shell=True).returncode != 0: | |
LOGGER.info(f"\n{prefix} export requires Edge TPU compiler. Attempting install from {help_url}") | |
sudo = subprocess.run("sudo --version >/dev/null", shell=True).returncode == 0 # sudo installed on system | |
for c in ( | |
"curl https://packages.cloud.google.com/apt/doc/apt-key.gpg | sudo apt-key add -", | |
'echo "deb https://packages.cloud.google.com/apt coral-edgetpu-stable main" | sudo tee /etc/apt/sources.list.d/coral-edgetpu.list', | |
"sudo apt-get update", | |
"sudo apt-get install edgetpu-compiler", | |
): | |
subprocess.run(c if sudo else c.replace("sudo ", ""), shell=True, check=True) | |
ver = subprocess.run(cmd, shell=True, capture_output=True, check=True).stdout.decode().split()[-1] | |
LOGGER.info(f"\n{prefix} starting export with Edge TPU compiler {ver}...") | |
f = str(file).replace(".pt", "-int8_edgetpu.tflite") # Edge TPU model | |
f_tfl = str(file).replace(".pt", "-int8.tflite") # TFLite model | |
subprocess.run( | |
[ | |
"edgetpu_compiler", | |
"-s", | |
"-d", | |
"-k", | |
"10", | |
"--out_dir", | |
str(file.parent), | |
f_tfl, | |
], | |
check=True, | |
) | |
return f, None | |
def export_tfjs(file, int8, prefix=colorstr("TensorFlow.js:")): | |
""" | |
Convert a YOLOv5 model to TensorFlow.js format with optional uint8 quantization. | |
Args: | |
file (Path): Path to the YOLOv5 model file to be converted, typically having a ".pt" or ".onnx" extension. | |
int8 (bool): If True, applies uint8 quantization during the conversion process. | |
prefix (str): Optional prefix for logging messages, default is 'TensorFlow.js:' with color formatting. | |
Returns: | |
(str, None): Tuple containing the output directory path as a string and None. | |
Notes: | |
- This function requires the `tensorflowjs` package. Install it using: | |
```shell | |
pip install tensorflowjs | |
``` | |
- The converted TensorFlow.js model will be saved in a directory with the "_web_model" suffix appended to the original file name. | |
- The conversion involves running shell commands that invoke the TensorFlow.js converter tool. | |
Example: | |
```python | |
from pathlib import Path | |
file = Path('yolov5.onnx') | |
export_tfjs(file, int8=False) | |
``` | |
""" | |
check_requirements("tensorflowjs") | |
import tensorflowjs as tfjs | |
LOGGER.info(f"\n{prefix} starting export with tensorflowjs {tfjs.__version__}...") | |
f = str(file).replace(".pt", "_web_model") # js dir | |
f_pb = file.with_suffix(".pb") # *.pb path | |
f_json = f"{f}/model.json" # *.json path | |
args = [ | |
"tensorflowjs_converter", | |
"--input_format=tf_frozen_model", | |
"--quantize_uint8" if int8 else "", | |
"--output_node_names=Identity,Identity_1,Identity_2,Identity_3", | |
str(f_pb), | |
f, | |
] | |
subprocess.run([arg for arg in args if arg], check=True) | |
json = Path(f_json).read_text() | |
with open(f_json, "w") as j: # sort JSON Identity_* in ascending order | |
subst = re.sub( | |
r'{"outputs": {"Identity.?.?": {"name": "Identity.?.?"}, ' | |
r'"Identity.?.?": {"name": "Identity.?.?"}, ' | |
r'"Identity.?.?": {"name": "Identity.?.?"}, ' | |
r'"Identity.?.?": {"name": "Identity.?.?"}}}', | |
r'{"outputs": {"Identity": {"name": "Identity"}, ' | |
r'"Identity_1": {"name": "Identity_1"}, ' | |
r'"Identity_2": {"name": "Identity_2"}, ' | |
r'"Identity_3": {"name": "Identity_3"}}}', | |
json, | |
) | |
j.write(subst) | |
return f, None | |
def add_tflite_metadata(file, metadata, num_outputs): | |
""" | |
Adds metadata to a TensorFlow Lite (TFLite) model file, supporting multiple outputs according to TensorFlow | |
guidelines. | |
Args: | |
file (str): Path to the TFLite model file to which metadata will be added. | |
metadata (dict): Metadata information to be added to the model, structured as required by the TFLite metadata schema. | |
Common keys include "name", "description", "version", "author", and "license". | |
num_outputs (int): Number of output tensors the model has, used to configure the metadata properly. | |
Returns: | |
None | |
Example: | |
```python | |
metadata = { | |
"name": "yolov5", | |
"description": "YOLOv5 object detection model", | |
"version": "1.0", | |
"author": "Ultralytics", | |
"license": "Apache License 2.0" | |
} | |
add_tflite_metadata("model.tflite", metadata, num_outputs=4) | |
``` | |
Note: | |
TFLite metadata can include information such as model name, version, author, and other relevant details. | |
For more details on the structure of the metadata, refer to TensorFlow Lite | |
[metadata guidelines](https://www.tensorflow.org/lite/models/convert/metadata). | |
""" | |
with contextlib.suppress(ImportError): | |
# check_requirements('tflite_support') | |
from tflite_support import flatbuffers | |
from tflite_support import metadata as _metadata | |
from tflite_support import metadata_schema_py_generated as _metadata_fb | |
tmp_file = Path("/tmp/meta.txt") | |
with open(tmp_file, "w") as meta_f: | |
meta_f.write(str(metadata)) | |
model_meta = _metadata_fb.ModelMetadataT() | |
label_file = _metadata_fb.AssociatedFileT() | |
label_file.name = tmp_file.name | |
model_meta.associatedFiles = [label_file] | |
subgraph = _metadata_fb.SubGraphMetadataT() | |
subgraph.inputTensorMetadata = [_metadata_fb.TensorMetadataT()] | |
subgraph.outputTensorMetadata = [_metadata_fb.TensorMetadataT()] * num_outputs | |
model_meta.subgraphMetadata = [subgraph] | |
b = flatbuffers.Builder(0) | |
b.Finish(model_meta.Pack(b), _metadata.MetadataPopulator.METADATA_FILE_IDENTIFIER) | |
metadata_buf = b.Output() | |
populator = _metadata.MetadataPopulator.with_model_file(file) | |
populator.load_metadata_buffer(metadata_buf) | |
populator.load_associated_files([str(tmp_file)]) | |
populator.populate() | |
tmp_file.unlink() | |
def pipeline_coreml(model, im, file, names, y, mlmodel, prefix=colorstr("CoreML Pipeline:")): | |
""" | |
Convert a PyTorch YOLOv5 model to CoreML format with Non-Maximum Suppression (NMS), handling different input/output | |
shapes, and saving the model. | |
Args: | |
model (torch.nn.Module): The YOLOv5 PyTorch model to be converted. | |
im (torch.Tensor): Example input tensor with shape (N, C, H, W), where N is the batch size, C is the number of channels, | |
H is the height, and W is the width. | |
file (Path): Path to save the converted CoreML model. | |
names (dict[int, str]): Dictionary mapping class indices to class names. | |
y (torch.Tensor): Output tensor from the PyTorch model's forward pass. | |
mlmodel (bool): Flag indicating whether to export as older *.mlmodel format (default is False). | |
prefix (str): Custom prefix for logging messages. | |
Returns: | |
(Path): Path to the saved CoreML model (.mlmodel). | |
Raises: | |
AssertionError: If the number of class names does not match the number of classes in the model. | |
Notes: | |
- This function requires `coremltools` to be installed. | |
- Running this function on a non-macOS environment might not support some features. | |
- Flexible input shapes and additional NMS options can be customized within the function. | |
Examples: | |
```python | |
from pathlib import Path | |
import torch | |
model = torch.load('yolov5s.pt') # Load YOLOv5 model | |
im = torch.zeros((1, 3, 640, 640)) # Example input tensor | |
names = {0: "person", 1: "bicycle", 2: "car", ...} # Define class names | |
y = model(im) # Perform forward pass to get model output | |
output_file = Path('yolov5s.mlmodel') # Convert to CoreML | |
pipeline_coreml(model, im, output_file, names, y) | |
``` | |
""" | |
import coremltools as ct | |
from PIL import Image | |
if mlmodel: | |
f = file.with_suffix(".mlmodel") # filename | |
else: | |
f = file.with_suffix(".mlpackage") # filename | |
print(f"{prefix} starting pipeline with coremltools {ct.__version__}...") | |
batch_size, ch, h, w = list(im.shape) # BCHW | |
t = time.time() | |
# YOLOv5 Output shapes | |
spec = model.get_spec() | |
out0, out1 = iter(spec.description.output) | |
if platform.system() == "Darwin": | |
img = Image.new("RGB", (w, h)) # img(192 width, 320 height) | |
# img = torch.zeros((*opt.img_size, 3)).numpy() # img size(320,192,3) iDetection | |
out = model.predict({"image": img}) | |
out0_shape, out1_shape = out[out0.name].shape, out[out1.name].shape | |
else: # linux and windows can not run model.predict(), get sizes from pytorch output y | |
s = tuple(y[0].shape) | |
out0_shape, out1_shape = (s[1], s[2] - 5), (s[1], 4) # (3780, 80), (3780, 4) | |
# Checks | |
nx, ny = spec.description.input[0].type.imageType.width, spec.description.input[0].type.imageType.height | |
na, nc = out0_shape | |
# na, nc = out0.type.multiArrayType.shape # number anchors, classes | |
assert len(names) == nc, f"{len(names)} names found for nc={nc}" # check | |
# Define output shapes (missing) | |
out0.type.multiArrayType.shape[:] = out0_shape # (3780, 80) | |
out1.type.multiArrayType.shape[:] = out1_shape # (3780, 4) | |
# spec.neuralNetwork.preprocessing[0].featureName = '0' | |
# Flexible input shapes | |
# from coremltools.models.neural_network import flexible_shape_utils | |
# s = [] # shapes | |
# s.append(flexible_shape_utils.NeuralNetworkImageSize(320, 192)) | |
# s.append(flexible_shape_utils.NeuralNetworkImageSize(640, 384)) # (height, width) | |
# flexible_shape_utils.add_enumerated_image_sizes(spec, feature_name='image', sizes=s) | |
# r = flexible_shape_utils.NeuralNetworkImageSizeRange() # shape ranges | |
# r.add_height_range((192, 640)) | |
# r.add_width_range((192, 640)) | |
# flexible_shape_utils.update_image_size_range(spec, feature_name='image', size_range=r) | |
print(spec.description) | |
# Model from spec | |
weights_dir = None | |
if mlmodel: | |
weights_dir = None | |
else: | |
weights_dir = str(f / "Data/com.apple.CoreML/weights") | |
model = ct.models.MLModel(spec, weights_dir=weights_dir) | |
# 3. Create NMS protobuf | |
nms_spec = ct.proto.Model_pb2.Model() | |
nms_spec.specificationVersion = 5 | |
for i in range(2): | |
decoder_output = model._spec.description.output[i].SerializeToString() | |
nms_spec.description.input.add() | |
nms_spec.description.input[i].ParseFromString(decoder_output) | |
nms_spec.description.output.add() | |
nms_spec.description.output[i].ParseFromString(decoder_output) | |
nms_spec.description.output[0].name = "confidence" | |
nms_spec.description.output[1].name = "coordinates" | |
output_sizes = [nc, 4] | |
for i in range(2): | |
ma_type = nms_spec.description.output[i].type.multiArrayType | |
ma_type.shapeRange.sizeRanges.add() | |
ma_type.shapeRange.sizeRanges[0].lowerBound = 0 | |
ma_type.shapeRange.sizeRanges[0].upperBound = -1 | |
ma_type.shapeRange.sizeRanges.add() | |
ma_type.shapeRange.sizeRanges[1].lowerBound = output_sizes[i] | |
ma_type.shapeRange.sizeRanges[1].upperBound = output_sizes[i] | |
del ma_type.shape[:] | |
nms = nms_spec.nonMaximumSuppression | |
nms.confidenceInputFeatureName = out0.name # 1x507x80 | |
nms.coordinatesInputFeatureName = out1.name # 1x507x4 | |
nms.confidenceOutputFeatureName = "confidence" | |
nms.coordinatesOutputFeatureName = "coordinates" | |
nms.iouThresholdInputFeatureName = "iouThreshold" | |
nms.confidenceThresholdInputFeatureName = "confidenceThreshold" | |
nms.iouThreshold = 0.45 | |
nms.confidenceThreshold = 0.25 | |
nms.pickTop.perClass = True | |
nms.stringClassLabels.vector.extend(names.values()) | |
nms_model = ct.models.MLModel(nms_spec) | |
# 4. Pipeline models together | |
pipeline = ct.models.pipeline.Pipeline( | |
input_features=[ | |
("image", ct.models.datatypes.Array(3, ny, nx)), | |
("iouThreshold", ct.models.datatypes.Double()), | |
("confidenceThreshold", ct.models.datatypes.Double()), | |
], | |
output_features=["confidence", "coordinates"], | |
) | |
pipeline.add_model(model) | |
pipeline.add_model(nms_model) | |
# Correct datatypes | |
pipeline.spec.description.input[0].ParseFromString(model._spec.description.input[0].SerializeToString()) | |
pipeline.spec.description.output[0].ParseFromString(nms_model._spec.description.output[0].SerializeToString()) | |
pipeline.spec.description.output[1].ParseFromString(nms_model._spec.description.output[1].SerializeToString()) | |
# Update metadata | |
pipeline.spec.specificationVersion = 5 | |
pipeline.spec.description.metadata.versionString = "https://github.com/ultralytics/yolov5" | |
pipeline.spec.description.metadata.shortDescription = "https://github.com/ultralytics/yolov5" | |
pipeline.spec.description.metadata.author = "[email protected]" | |
pipeline.spec.description.metadata.license = "https://github.com/ultralytics/yolov5/blob/master/LICENSE" | |
pipeline.spec.description.metadata.userDefined.update( | |
{ | |
"classes": ",".join(names.values()), | |
"iou_threshold": str(nms.iouThreshold), | |
"confidence_threshold": str(nms.confidenceThreshold), | |
} | |
) | |
# Save the model | |
model = ct.models.MLModel(pipeline.spec, weights_dir=weights_dir) | |
model.input_description["image"] = "Input image" | |
model.input_description["iouThreshold"] = f"(optional) IOU Threshold override (default: {nms.iouThreshold})" | |
model.input_description["confidenceThreshold"] = ( | |
f"(optional) Confidence Threshold override (default: {nms.confidenceThreshold})" | |
) | |
model.output_description["confidence"] = 'Boxes × Class confidence (see user-defined metadata "classes")' | |
model.output_description["coordinates"] = "Boxes × [x, y, width, height] (relative to image size)" | |
model.save(f) # pipelined | |
print(f"{prefix} pipeline success ({time.time() - t:.2f}s), saved as {f} ({file_size(f):.1f} MB)") | |
def run( | |
data=ROOT / "data/coco128.yaml", # 'dataset.yaml path' | |
weights=ROOT / "yolov5s.pt", # weights path | |
imgsz=(640, 640), # image (height, width) | |
batch_size=1, # batch size | |
device="cpu", # cuda device, i.e. 0 or 0,1,2,3 or cpu | |
include=("torchscript", "onnx"), # include formats | |
half=False, # FP16 half-precision export | |
inplace=False, # set YOLOv5 Detect() inplace=True | |
keras=False, # use Keras | |
optimize=False, # TorchScript: optimize for mobile | |
int8=False, # CoreML/TF INT8 quantization | |
per_tensor=False, # TF per tensor quantization | |
dynamic=False, # ONNX/TF/TensorRT: dynamic axes | |
simplify=False, # ONNX: simplify model | |
mlmodel=False, # CoreML: Export in *.mlmodel format | |
opset=12, # ONNX: opset version | |
verbose=False, # TensorRT: verbose log | |
workspace=4, # TensorRT: workspace size (GB) | |
nms=False, # TF: add NMS to model | |
agnostic_nms=False, # TF: add agnostic NMS to model | |
topk_per_class=100, # TF.js NMS: topk per class to keep | |
topk_all=100, # TF.js NMS: topk for all classes to keep | |
iou_thres=0.45, # TF.js NMS: IoU threshold | |
conf_thres=0.25, # TF.js NMS: confidence threshold | |
): | |
""" | |
Exports a YOLOv5 model to specified formats including ONNX, TensorRT, CoreML, and TensorFlow. | |
Args: | |
data (str | Path): Path to the dataset YAML configuration file. Default is 'data/coco128.yaml'. | |
weights (str | Path): Path to the pretrained model weights file. Default is 'yolov5s.pt'. | |
imgsz (tuple): Image size as (height, width). Default is (640, 640). | |
batch_size (int): Batch size for exporting the model. Default is 1. | |
device (str): Device to run the export on, e.g., '0' for GPU, 'cpu' for CPU. Default is 'cpu'. | |
include (tuple): Formats to include in the export. Default is ('torchscript', 'onnx'). | |
half (bool): Flag to export model with FP16 half-precision. Default is False. | |
inplace (bool): Set the YOLOv5 Detect() module inplace=True. Default is False. | |
keras (bool): Flag to use Keras for TensorFlow SavedModel export. Default is False. | |
optimize (bool): Optimize TorchScript model for mobile deployment. Default is False. | |
int8 (bool): Apply INT8 quantization for CoreML or TensorFlow models. Default is False. | |
per_tensor (bool): Apply per tensor quantization for TensorFlow models. Default is False. | |
dynamic (bool): Enable dynamic axes for ONNX, TensorFlow, or TensorRT exports. Default is False. | |
simplify (bool): Simplify the ONNX model during export. Default is False. | |
opset (int): ONNX opset version. Default is 12. | |
verbose (bool): Enable verbose logging for TensorRT export. Default is False. | |
workspace (int): TensorRT workspace size in GB. Default is 4. | |
nms (bool): Add non-maximum suppression (NMS) to the TensorFlow model. Default is False. | |
agnostic_nms (bool): Add class-agnostic NMS to the TensorFlow model. Default is False. | |
topk_per_class (int): Top-K boxes per class to keep for TensorFlow.js NMS. Default is 100. | |
topk_all (int): Top-K boxes for all classes to keep for TensorFlow.js NMS. Default is 100. | |
iou_thres (float): IoU threshold for NMS. Default is 0.45. | |
conf_thres (float): Confidence threshold for NMS. Default is 0.25. | |
mlmodel (bool): Flag to use *.mlmodel for CoreML export. Default is False. | |
Returns: | |
None | |
Notes: | |
- Model export is based on the specified formats in the 'include' argument. | |
- Be cautious of combinations where certain flags are mutually exclusive, such as `--half` and `--dynamic`. | |
Example: | |
```python | |
run( | |
data="data/coco128.yaml", | |
weights="yolov5s.pt", | |
imgsz=(640, 640), | |
batch_size=1, | |
device="cpu", | |
include=("torchscript", "onnx"), | |
half=False, | |
inplace=False, | |
keras=False, | |
optimize=False, | |
int8=False, | |
per_tensor=False, | |
dynamic=False, | |
simplify=False, | |
opset=12, | |
verbose=False, | |
mlmodel=False, | |
workspace=4, | |
nms=False, | |
agnostic_nms=False, | |
topk_per_class=100, | |
topk_all=100, | |
iou_thres=0.45, | |
conf_thres=0.25, | |
) | |
``` | |
""" | |
t = time.time() | |
include = [x.lower() for x in include] # to lowercase | |
fmts = tuple(export_formats()["Argument"][1:]) # --include arguments | |
flags = [x in include for x in fmts] | |
assert sum(flags) == len(include), f"ERROR: Invalid --include {include}, valid --include arguments are {fmts}" | |
jit, onnx, xml, engine, coreml, saved_model, pb, tflite, edgetpu, tfjs, paddle = flags # export booleans | |
file = Path(url2file(weights) if str(weights).startswith(("http:/", "https:/")) else weights) # PyTorch weights | |
# Load PyTorch model | |
device = select_device(device) | |
if half: | |
assert device.type != "cpu" or coreml, "--half only compatible with GPU export, i.e. use --device 0" | |
assert not dynamic, "--half not compatible with --dynamic, i.e. use either --half or --dynamic but not both" | |
model = attempt_load(weights, device=device, inplace=True, fuse=True) # load FP32 model | |
# Checks | |
imgsz *= 2 if len(imgsz) == 1 else 1 # expand | |
if optimize: | |
assert device.type == "cpu", "--optimize not compatible with cuda devices, i.e. use --device cpu" | |
# Input | |
gs = int(max(model.stride)) # grid size (max stride) | |
imgsz = [check_img_size(x, gs) for x in imgsz] # verify img_size are gs-multiples | |
im = torch.zeros(batch_size, 3, *imgsz).to(device) # image size(1,3,320,192) BCHW iDetection | |
# Update model | |
model.eval() | |
for k, m in model.named_modules(): | |
if isinstance(m, Detect): | |
m.inplace = inplace | |
m.dynamic = dynamic | |
m.export = True | |
for _ in range(2): | |
y = model(im) # dry runs | |
if half and not coreml: | |
im, model = im.half(), model.half() # to FP16 | |
shape = tuple((y[0] if isinstance(y, tuple) else y).shape) # model output shape | |
metadata = {"stride": int(max(model.stride)), "names": model.names} # model metadata | |
LOGGER.info(f"\n{colorstr('PyTorch:')} starting from {file} with output shape {shape} ({file_size(file):.1f} MB)") | |
# Exports | |
f = [""] * len(fmts) # exported filenames | |
warnings.filterwarnings(action="ignore", category=torch.jit.TracerWarning) # suppress TracerWarning | |
if jit: # TorchScript | |
f[0], _ = export_torchscript(model, im, file, optimize) | |
if engine: # TensorRT required before ONNX | |
f[1], _ = export_engine(model, im, file, half, dynamic, simplify, workspace, verbose) | |
if onnx or xml: # OpenVINO requires ONNX | |
f[2], _ = export_onnx(model, im, file, opset, dynamic, simplify) | |
if xml: # OpenVINO | |
f[3], _ = export_openvino(file, metadata, half, int8, data) | |
if coreml: # CoreML | |
f[4], ct_model = export_coreml(model, im, file, int8, half, nms, mlmodel) | |
if nms: | |
pipeline_coreml(ct_model, im, file, model.names, y, mlmodel) | |
if any((saved_model, pb, tflite, edgetpu, tfjs)): # TensorFlow formats | |
assert not tflite or not tfjs, "TFLite and TF.js models must be exported separately, please pass only one type." | |
assert not isinstance(model, ClassificationModel), "ClassificationModel export to TF formats not yet supported." | |
f[5], s_model = export_saved_model( | |
model.cpu(), | |
im, | |
file, | |
dynamic, | |
tf_nms=nms or agnostic_nms or tfjs, | |
agnostic_nms=agnostic_nms or tfjs, | |
topk_per_class=topk_per_class, | |
topk_all=topk_all, | |
iou_thres=iou_thres, | |
conf_thres=conf_thres, | |
keras=keras, | |
) | |
if pb or tfjs: # pb prerequisite to tfjs | |
f[6], _ = export_pb(s_model, file) | |
if tflite or edgetpu: | |
f[7], _ = export_tflite( | |
s_model, im, file, int8 or edgetpu, per_tensor, data=data, nms=nms, agnostic_nms=agnostic_nms | |
) | |
if edgetpu: | |
f[8], _ = export_edgetpu(file) | |
add_tflite_metadata(f[8] or f[7], metadata, num_outputs=len(s_model.outputs)) | |
if tfjs: | |
f[9], _ = export_tfjs(file, int8) | |
if paddle: # PaddlePaddle | |
f[10], _ = export_paddle(model, im, file, metadata) | |
# Finish | |
f = [str(x) for x in f if x] # filter out '' and None | |
if any(f): | |
cls, det, seg = (isinstance(model, x) for x in (ClassificationModel, DetectionModel, SegmentationModel)) # type | |
det &= not seg # segmentation models inherit from SegmentationModel(DetectionModel) | |
dir = Path("segment" if seg else "classify" if cls else "") | |
h = "--half" if half else "" # --half FP16 inference arg | |
s = ( | |
"# WARNING ⚠️ ClassificationModel not yet supported for PyTorch Hub AutoShape inference" | |
if cls | |
else "# WARNING ⚠️ SegmentationModel not yet supported for PyTorch Hub AutoShape inference" | |
if seg | |
else "" | |
) | |
LOGGER.info( | |
f'\nExport complete ({time.time() - t:.1f}s)' | |
f"\nResults saved to {colorstr('bold', file.parent.resolve())}" | |
f"\nDetect: python {dir / ('detect.py' if det else 'predict.py')} --weights {f[-1]} {h}" | |
f"\nValidate: python {dir / 'val.py'} --weights {f[-1]} {h}" | |
f"\nPyTorch Hub: model = torch.hub.load('ultralytics/yolov5', 'custom', '{f[-1]}') {s}" | |
f'\nVisualize: https://netron.app' | |
) | |
return f # return list of exported files/dirs | |
def parse_opt(known=False): | |
""" | |
Parse command-line options for YOLOv5 model export configurations. | |
Args: | |
known (bool): If True, uses `argparse.ArgumentParser.parse_known_args`; otherwise, uses `argparse.ArgumentParser.parse_args`. | |
Default is False. | |
Returns: | |
argparse.Namespace: Object containing parsed command-line arguments. | |
Example: | |
```python | |
opts = parse_opt() | |
print(opts.data) | |
print(opts.weights) | |
``` | |
""" | |
parser = argparse.ArgumentParser() | |
parser.add_argument("--data", type=str, default=ROOT / "data/coco128.yaml", help="dataset.yaml path") | |
parser.add_argument("--weights", nargs="+", type=str, default=ROOT / "yolov5s.pt", help="model.pt path(s)") | |
parser.add_argument("--imgsz", "--img", "--img-size", nargs="+", type=int, default=[640, 640], help="image (h, w)") | |
parser.add_argument("--batch-size", type=int, default=1, help="batch size") | |
parser.add_argument("--device", default="cpu", help="cuda device, i.e. 0 or 0,1,2,3 or cpu") | |
parser.add_argument("--half", action="store_true", help="FP16 half-precision export") | |
parser.add_argument("--inplace", action="store_true", help="set YOLOv5 Detect() inplace=True") | |
parser.add_argument("--keras", action="store_true", help="TF: use Keras") | |
parser.add_argument("--optimize", action="store_true", help="TorchScript: optimize for mobile") | |
parser.add_argument("--int8", action="store_true", help="CoreML/TF/OpenVINO INT8 quantization") | |
parser.add_argument("--per-tensor", action="store_true", help="TF per-tensor quantization") | |
parser.add_argument("--dynamic", action="store_true", help="ONNX/TF/TensorRT: dynamic axes") | |
parser.add_argument("--simplify", action="store_true", help="ONNX: simplify model") | |
parser.add_argument("--mlmodel", action="store_true", help="CoreML: Export in *.mlmodel format") | |
parser.add_argument("--opset", type=int, default=17, help="ONNX: opset version") | |
parser.add_argument("--verbose", action="store_true", help="TensorRT: verbose log") | |
parser.add_argument("--workspace", type=int, default=4, help="TensorRT: workspace size (GB)") | |
parser.add_argument("--nms", action="store_true", help="TF: add NMS to model") | |
parser.add_argument("--agnostic-nms", action="store_true", help="TF: add agnostic NMS to model") | |
parser.add_argument("--topk-per-class", type=int, default=100, help="TF.js NMS: topk per class to keep") | |
parser.add_argument("--topk-all", type=int, default=100, help="TF.js NMS: topk for all classes to keep") | |
parser.add_argument("--iou-thres", type=float, default=0.45, help="TF.js NMS: IoU threshold") | |
parser.add_argument("--conf-thres", type=float, default=0.25, help="TF.js NMS: confidence threshold") | |
parser.add_argument( | |
"--include", | |
nargs="+", | |
default=["torchscript"], | |
help="torchscript, onnx, openvino, engine, coreml, saved_model, pb, tflite, edgetpu, tfjs, paddle", | |
) | |
opt = parser.parse_known_args()[0] if known else parser.parse_args() | |
print_args(vars(opt)) | |
return opt | |
def main(opt): | |
"""Run(**vars(opt)) # Execute the run function with parsed options.""" | |
for opt.weights in opt.weights if isinstance(opt.weights, list) else [opt.weights]: | |
run(**vars(opt)) | |
if __name__ == "__main__": | |
opt = parse_opt() | |
main(opt) | |