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an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the |
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# Object detection |
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[[open-in-colab]] |
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Object detection is the computer vision task of detecting instances (such as humans, buildings, or cars) in an image. Object detection models receive an image as input and output |
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coordinates of the bounding boxes and associated labels of the detected objects. An image can contain multiple objects, |
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each with its own bounding box and a label (e.g. it can have a car and a building), and each object can |
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be present in different parts of an image (e.g. the image can have several cars). |
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This task is commonly used in autonomous driving for detecting things like pedestrians, road signs, and traffic lights. |
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Other applications include counting objects in images, image search, and more. |
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In this guide, you will learn how to: |
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1. Finetune [DETR](https: |
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backbone with an encoder-decoder Transformer, on the [CPPE-5](https: |
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dataset. |
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2. Use your finetuned model for inference. |
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<Tip> |
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The task illustrated in this tutorial is supported by the following model architectures: |
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<!--This tip is automatically generated by `make fix-copies`, do not fill manually!--> |
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[Conditional DETR](../model_doc/conditional_detr), [Deformable DETR](../model_doc/deformable_detr), [DETA](../model_doc/deta), [DETR](../model_doc/detr), [Table Transformer](../model_doc/table-transformer), [YOLOS](../model_doc/yolos) |
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<!--End of the generated tip--> |
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</Tip> |
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Before you begin, make sure you have all the necessary libraries installed: |
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```bash |
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pip install -q datasets transformers evaluate timm albumentations |
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``` |
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You'll use 🤗 Datasets to load a dataset from the Hugging Face Hub, 🤗 Transformers to train your model, |
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and `albumentations` to augment the data. `timm` is currently required to load a convolutional backbone for the DETR model. |
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We encourage you to share your model with the community. Log in to your Hugging Face account to upload it to the Hub. |
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When prompted, enter your token to log in: |
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```py |
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>>> from huggingface_hub import notebook_login |
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>>> notebook_login() |
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``` |
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## Load the CPPE-5 dataset |
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The [CPPE-5 dataset](https: |
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annotations identifying medical personal protective equipment (PPE) in the context of the COVID-19 pandemic. |
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Start by loading the dataset: |
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```py |
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>>> from datasets import load_dataset |
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>>> cppe5 = load_dataset("cppe-5") |
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>>> cppe5 |
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DatasetDict({ |
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train: Dataset({ |
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features: ['image_id', 'image', 'width', 'height', 'objects'], |
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num_rows: 1000 |
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}) |
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test: Dataset({ |
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features: ['image_id', 'image', 'width', 'height', 'objects'], |
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num_rows: 29 |
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}) |
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}) |
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``` |
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You'll see that this dataset already comes with a training set containing 1000 images and a test set with 29 images. |
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To get familiar with the data, explore what the examples look like. |
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```py |
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>>> cppe5["train"][0] |
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{'image_id': 15, |
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'image': <PIL.JpegImagePlugin.JpegImageFile image mode=RGB size=943x663 at 0x7F9EC9E77C10>, |
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'width': 943, |
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'height': 663, |
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'objects': {'id': [114, 115, 116, 117], |
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'area': [3796, 1596, 152768, 81002], |
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'bbox': [[302.0, 109.0, 73.0, 52.0], |
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[810.0, 100.0, 57.0, 28.0], |
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[160.0, 31.0, 248.0, 616.0], |
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[741.0, 68.0, 202.0, 401.0]], |
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'category': [4, 4, 0, 0]}} |
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``` |
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The examples in the dataset have the following fields: |
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- `image_id`: the example image id |
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- `image`: a `PIL.Image.Image` object containing the image |
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- `width`: width of the image |
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- `height`: height of the image |
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- `objects`: a dictionary containing bounding box metadata for the objects in the image: |
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- `id`: the annotation id |
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- `area`: the area of the bounding box |
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- `bbox`: the object's bounding box (in the [COCO format](https: |
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- `category`: the object's category, with possible values including `Coverall (0)`, `Face_Shield (1)`, `Gloves (2)`, `Goggles (3)` and `Mask (4)` |
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You may notice that the `bbox` field follows the COCO format, which is the format that the DETR model expects. |
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However, the grouping of the fields inside `objects` differs from the annotation format DETR requires. You will |
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need to apply some preprocessing transformations before using this data for training. |
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To get an even better understanding of the data, visualize an example in the dataset. |
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```py |
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>>> import numpy as np |
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>>> import os |
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>>> from PIL import Image, ImageDraw |
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>>> image = cppe5["train"][0]["image"] |
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>>> annotations = cppe5["train"][0]["objects"] |
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>>> draw = ImageDraw.Draw(image) |
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>>> categories = cppe5["train"].features["objects"].feature["category"].names |
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>>> id2label = {index: x for index, x in enumerate(categories, start=0)} |
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>>> label2id = {v: k for k, v in id2label.items()} |
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>>> for i in range(len(annotations["id"])): |
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... box = annotations["bbox"][i - 1] |
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... class_idx = annotations["category"][i - 1] |
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... x, y, w, h = tuple(box) |
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... draw.rectangle((x, y, x + w, y + h), outline="red", width=1) |
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... draw.text((x, y), id2label[class_idx], fill="white") |
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>>> image |
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``` |
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<div class="flex justify-center"> |
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<img src="https://i.imgur.com/TdaqPJO.png" alt="CPPE-5 Image Example"/> |
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</div> |
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To visualize the bounding boxes with associated labels, you can get the labels from the dataset's metadata, specifically |
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the `category` field. |
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You'll also want to create dictionaries that map a label id to a label class (`id2label`) and the other way around (`label2id`). |
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You can use them later when setting up the model. Including these maps will make your model reusable by others if you share |
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it on the Hugging Face Hub. |
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As a final step of getting familiar with the data, explore it for potential issues. One common problem with datasets for |
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object detection is bounding boxes that "stretch" beyond the edge of the image. Such "runaway" bounding boxes can raise |
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errors during training and should be addressed at this stage. There are a few examples with this issue in this dataset. |
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To keep things simple in this guide, we remove these images from the data. |
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```py |
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>>> remove_idx = [590, 821, 822, 875, 876, 878, 879] |
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>>> keep = [i for i in range(len(cppe5["train"])) if i not in remove_idx] |
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>>> cppe5["train"] = cppe5["train"].select(keep) |
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``` |
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## Preprocess the data |
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To finetune a model, you must preprocess the data you plan to use to match precisely the approach used for the pre-trained model. |
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[`AutoImageProcessor`] takes care of processing image data to create `pixel_values`, `pixel_mask`, and |
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`labels` that a DETR model can train with. The image processor has some attributes that you won't have to worry about: |
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- `image_mean = [0.485, 0.456, 0.406 ]` |
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- `image_std = [0.229, 0.224, 0.225]` |
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These are the mean and standard deviation used to normalize images during the model pre-training. These values are crucial |
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to replicate when doing inference or finetuning a pre-trained image model. |
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Instantiate the image processor from the same checkpoint as the model you want to finetune. |
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```py |
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>>> from transformers import AutoImageProcessor |
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>>> checkpoint = "facebook/detr-resnet-50" |
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>>> image_processor = AutoImageProcessor.from_pretrained(checkpoint) |
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``` |
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Before passing the images to the `image_processor`, apply two preprocessing transformations to the dataset: |
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- Augmenting images |
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- Reformatting annotations to meet DETR expectations |
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First, to make sure the model does not overfit on the training data, you can apply image augmentation with any data augmentation library. Here we use [Albumentations](https: |
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This library ensures that transformations affect the image and update the bounding boxes accordingly. |
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The 🤗 Datasets library documentation has a detailed [guide on how to augment images for object detection](https: |
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and it uses the exact same dataset as an example. Apply the same approach here, resize each image to (480, 480), |
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flip it horizontally, and brighten it: |
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```py |
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>>> import albumentations |
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>>> import numpy as np |
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>>> import torch |
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>>> transform = albumentations.Compose( |
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... [ |
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... albumentations.Resize(480, 480), |
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... albumentations.HorizontalFlip(p=1.0), |
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... albumentations.RandomBrightnessContrast(p=1.0), |
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... ], |
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... bbox_params=albumentations.BboxParams(format="coco", label_fields=["category"]), |
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... ) |
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``` |
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The `image_processor` expects the annotations to be in the following format: `{'image_id': int, 'annotations': List[Dict]}`, |
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where each dictionary is a COCO object annotation. Let's add a function to reformat annotations for a single example: |
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```py |
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>>> def formatted_anns(image_id, category, area, bbox): |
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... annotations = [] |
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... for i in range(0, len(category)): |
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... new_ann = { |
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... "image_id": image_id, |
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... "category_id": category[i], |
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... "isCrowd": 0, |
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... "area": area[i], |
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... "bbox": list(bbox[i]), |
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... } |
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... annotations.append(new_ann) |
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... return annotations |
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``` |
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Now you can combine the image and annotation transformations to use on a batch of examples: |
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```py |
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>>> # transforming a batch |
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>>> def transform_aug_ann(examples): |
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... image_ids = examples["image_id"] |
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... images, bboxes, area, categories = [], [], [], [] |
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... for image, objects in zip(examples["image"], examples["objects"]): |
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... image = np.array(image.convert("RGB"))[:, :, ::-1] |
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... out = transform(image=image, bboxes=objects["bbox"], category=objects["category"]) |
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... area.append(objects["area"]) |
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... images.append(out["image"]) |
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... bboxes.append(out["bboxes"]) |
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... categories.append(out["category"]) |
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... targets = [ |
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... {"image_id": id_, "annotations": formatted_anns(id_, cat_, ar_, box_)} |
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... for id_, cat_, ar_, box_ in zip(image_ids, categories, area, bboxes) |
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... ] |
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... return image_processor(images=images, annotations=targets, return_tensors="pt") |
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``` |
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Apply this preprocessing function to the entire dataset using 🤗 Datasets [`~datasets.Dataset.with_transform`] method. This method applies |
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transformations on the fly when you load an element of the dataset. |
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At this point, you can check what an example from the dataset looks like after the transformations. You should see a tensor |
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with `pixel_values`, a tensor with `pixel_mask`, and `labels`. |
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```py |
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>>> cppe5["train"] = cppe5["train"].with_transform(transform_aug_ann) |
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>>> cppe5["train"][15] |
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{'pixel_values': tensor([[[ 0.9132, 0.9132, 0.9132, ..., -1.9809, -1.9809, -1.9809], |
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[ 0.9132, 0.9132, 0.9132, ..., -1.9809, -1.9809, -1.9809], |
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[ 0.9132, 0.9132, 0.9132, ..., -1.9638, -1.9638, -1.9638], |
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..., |
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[-1.5699, -1.5699, -1.5699, ..., -1.9980, -1.9980, -1.9980], |
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[-1.5528, -1.5528, -1.5528, ..., -1.9980, -1.9809, -1.9809], |
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[-1.5528, -1.5528, -1.5528, ..., -1.9980, -1.9809, -1.9809]], |
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[[ 1.3081, 1.3081, 1.3081, ..., -1.8431, -1.8431, -1.8431], |
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[ 1.3081, 1.3081, 1.3081, ..., -1.8431, -1.8431, -1.8431], |
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[ 1.3081, 1.3081, 1.3081, ..., -1.8256, -1.8256, -1.8256], |
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..., |
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[-1.3179, -1.3179, -1.3179, ..., -1.8606, -1.8606, -1.8606], |
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[-1.3004, -1.3004, -1.3004, ..., -1.8606, -1.8431, -1.8431], |
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[-1.3004, -1.3004, -1.3004, ..., -1.8606, -1.8431, -1.8431]], |
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[[ 1.4200, 1.4200, 1.4200, ..., -1.6476, -1.6476, -1.6476], |
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[ 1.4200, 1.4200, 1.4200, ..., -1.6476, -1.6476, -1.6476], |
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[ 1.4200, 1.4200, 1.4200, ..., -1.6302, -1.6302, -1.6302], |
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..., |
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[-1.0201, -1.0201, -1.0201, ..., -1.5604, -1.5604, -1.5604], |
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[-1.0027, -1.0027, -1.0027, ..., -1.5604, -1.5430, -1.5430], |
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[-1.0027, -1.0027, -1.0027, ..., -1.5604, -1.5430, -1.5430]]]), |
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'pixel_mask': tensor([[1, 1, 1, ..., 1, 1, 1], |
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[1, 1, 1, ..., 1, 1, 1], |
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[1, 1, 1, ..., 1, 1, 1], |
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..., |
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[1, 1, 1, ..., 1, 1, 1], |
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[1, 1, 1, ..., 1, 1, 1], |
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[1, 1, 1, ..., 1, 1, 1]]), |
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'labels': {'size': tensor([800, 800]), 'image_id': tensor([756]), 'class_labels': tensor([4]), 'boxes': tensor([[0.7340, 0.6986, 0.3414, 0.5944]]), 'area': tensor([519544.4375]), 'iscrowd': tensor([0]), 'orig_size': tensor([480, 480])}} |
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``` |
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You have successfully augmented the individual images and prepared their annotations. However, preprocessing isn't |
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complete yet. In the final step, create a custom `collate_fn` to batch images together. |
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Pad images (which are now `pixel_values`) to the largest image in a batch, and create a corresponding `pixel_mask` |
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to indicate which pixels are real (1) and which are padding (0). |
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```py |
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>>> def collate_fn(batch): |
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... pixel_values = [item["pixel_values"] for item in batch] |
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... encoding = image_processor.pad_and_create_pixel_mask(pixel_values, return_tensors="pt") |
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... labels = [item["labels"] for item in batch] |
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... batch = {} |
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... batch["pixel_values"] = encoding["pixel_values"] |
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... batch["pixel_mask"] = encoding["pixel_mask"] |
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... batch["labels"] = labels |
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... return batch |
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``` |
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## Training the DETR model |
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You have done most of the heavy lifting in the previous sections, so now you are ready to train your model! |
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The images in this dataset are still quite large, even after resizing. This means that finetuning this model will |
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require at least one GPU. |
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Training involves the following steps: |
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1. Load the model with [`AutoModelForObjectDetection`] using the same checkpoint as in the preprocessing. |
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2. Define your training hyperparameters in [`TrainingArguments`]. |
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3. Pass the training arguments to [`Trainer`] along with the model, dataset, image processor, and data collator. |
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4. Call [`~Trainer.train`] to finetune your model. |
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When loading the model from the same checkpoint that you used for the preprocessing, remember to pass the `label2id` |
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and `id2label` maps that you created earlier from the dataset's metadata. Additionally, we specify `ignore_mismatched_sizes=True` to replace the existing classification head with a new one. |
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```py |
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>>> from transformers import AutoModelForObjectDetection |
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>>> model = AutoModelForObjectDetection.from_pretrained( |
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... checkpoint, |
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... id2label=id2label, |
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... label2id=label2id, |
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... ignore_mismatched_sizes=True, |
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... ) |
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``` |
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In the [`TrainingArguments`] use `output_dir` to specify where to save your model, then configure hyperparameters as you see fit. |
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It is important you do not remove unused columns because this will drop the image column. Without the image column, you |
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can't create `pixel_values`. For this reason, set `remove_unused_columns` to `False`. |
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If you wish to share your model by pushing to the Hub, set `push_to_hub` to `True` (you must be signed in to Hugging |
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Face to upload your model). |
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```py |
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>>> from transformers import TrainingArguments |
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>>> training_args = TrainingArguments( |
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... output_dir="detr-resnet-50_finetuned_cppe5", |
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... per_device_train_batch_size=8, |
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... num_train_epochs=10, |
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... fp16=True, |
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... save_steps=200, |
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... logging_steps=50, |
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... learning_rate=1e-5, |
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... weight_decay=1e-4, |
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... save_total_limit=2, |
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... remove_unused_columns=False, |
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... push_to_hub=True, |
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... ) |
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``` |
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Finally, bring everything together, and call [`~transformers.Trainer.train`]: |
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```py |
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>>> from transformers import Trainer |
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>>> trainer = Trainer( |
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... model=model, |
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... args=training_args, |
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... data_collator=collate_fn, |
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... train_dataset=cppe5["train"], |
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... tokenizer=image_processor, |
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... ) |
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>>> trainer.train() |
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``` |
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If you have set `push_to_hub` to `True` in the `training_args`, the training checkpoints are pushed to the |
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Hugging Face Hub. Upon training completion, push the final model to the Hub as well by calling the [`~transformers.Trainer.push_to_hub`] method. |
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```py |
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>>> trainer.push_to_hub() |
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``` |
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## Evaluate |
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Object detection models are commonly evaluated with a set of <a href="https://cocodataset.org/#detection-eval">COCO-style metrics</a>. |
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You can use one of the existing metrics implementations, but here you'll use the one from `torchvision` to evaluate the final |
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model that you pushed to the Hub. |
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To use the `torchvision` evaluator, you'll need to prepare a ground truth COCO dataset. The API to build a COCO dataset |
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requires the data to be stored in a certain format, so you'll need to save images and annotations to disk first. Just like |
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when you prepared your data for training, the annotations from the `cppe5["test"]` need to be formatted. However, images |
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should stay as they are. |
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The evaluation step requires a bit of work, but it can be split in three major steps. |
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First, prepare the `cppe5["test"]` set: format the annotations and save the data to disk. |
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```py |
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>>> import json |
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>>> # format annotations the same as for training, no need for data augmentation |
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>>> def val_formatted_anns(image_id, objects): |
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... annotations = [] |
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... for i in range(0, len(objects["id"])): |
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... new_ann = { |
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... "id": objects["id"][i], |
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... "category_id": objects["category"][i], |
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... "iscrowd": 0, |
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... "image_id": image_id, |
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... "area": objects["area"][i], |
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... "bbox": objects["bbox"][i], |
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... } |
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... annotations.append(new_ann) |
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... return annotations |
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>>> # Save images and annotations into the files torchvision.datasets.CocoDetection expects |
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>>> def save_cppe5_annotation_file_images(cppe5): |
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... output_json = {} |
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... path_output_cppe5 = f"{os.getcwd()}/cppe5/" |
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|
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... if not os.path.exists(path_output_cppe5): |
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... os.makedirs(path_output_cppe5) |
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|
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... path_anno = os.path.join(path_output_cppe5, "cppe5_ann.json") |
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... categories_json = [{"supercategory": "none", "id": id, "name": id2label[id]} for id in id2label] |
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... output_json["images"] = [] |
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... output_json["annotations"] = [] |
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... for example in cppe5: |
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... ann = val_formatted_anns(example["image_id"], example["objects"]) |
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... output_json["images"].append( |
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... { |
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... "id": example["image_id"], |
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... "width": example["image"].width, |
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... "height": example["image"].height, |
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... "file_name": f"{example['image_id']}.png", |
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... } |
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... ) |
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... output_json["annotations"].extend(ann) |
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... output_json["categories"] = categories_json |
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|
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... with open(path_anno, "w") as file: |
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... json.dump(output_json, file, ensure_ascii=False, indent=4) |
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|
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... for im, img_id in zip(cppe5["image"], cppe5["image_id"]): |
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... path_img = os.path.join(path_output_cppe5, f"{img_id}.png") |
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... im.save(path_img) |
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|
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... return path_output_cppe5, path_anno |
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``` |
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Next, prepare an instance of a `CocoDetection` class that can be used with `cocoevaluator`. |
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```py |
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>>> import torchvision |
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>>> class CocoDetection(torchvision.datasets.CocoDetection): |
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... def __init__(self, img_folder, feature_extractor, ann_file): |
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... super().__init__(img_folder, ann_file) |
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... self.feature_extractor = feature_extractor |
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|
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... def __getitem__(self, idx): |
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... # read in PIL image and target in COCO format |
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... img, target = super(CocoDetection, self).__getitem__(idx) |
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|
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... # preprocess image and target: converting target to DETR format, |
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... # resizing + normalization of both image and target) |
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... image_id = self.ids[idx] |
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... target = {"image_id": image_id, "annotations": target} |
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... encoding = self.feature_extractor(images=img, annotations=target, return_tensors="pt") |
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... pixel_values = encoding["pixel_values"].squeeze() # remove batch dimension |
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... target = encoding["labels"][0] # remove batch dimension |
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|
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... return {"pixel_values": pixel_values, "labels": target} |
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|
|
|
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>>> im_processor = AutoImageProcessor.from_pretrained("MariaK/detr-resnet-50_finetuned_cppe5") |
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|
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>>> path_output_cppe5, path_anno = save_cppe5_annotation_file_images(cppe5["test"]) |
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>>> test_ds_coco_format = CocoDetection(path_output_cppe5, im_processor, path_anno) |
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``` |
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|
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Finally, load the metrics and run the evaluation. |
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|
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```py |
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>>> import evaluate |
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>>> from tqdm import tqdm |
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|
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>>> model = AutoModelForObjectDetection.from_pretrained("MariaK/detr-resnet-50_finetuned_cppe5") |
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>>> module = evaluate.load("ybelkada/cocoevaluate", coco=test_ds_coco_format.coco) |
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>>> val_dataloader = torch.utils.data.DataLoader( |
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... test_ds_coco_format, batch_size=8, shuffle=False, num_workers=4, collate_fn=collate_fn |
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... ) |
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|
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>>> with torch.no_grad(): |
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... for idx, batch in enumerate(tqdm(val_dataloader)): |
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... pixel_values = batch["pixel_values"] |
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... pixel_mask = batch["pixel_mask"] |
|
|
|
... labels = [ |
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... {k: v for k, v in t.items()} for t in batch["labels"] |
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... ] # these are in DETR format, resized + normalized |
|
|
|
... # forward pass |
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... outputs = model(pixel_values=pixel_values, pixel_mask=pixel_mask) |
|
|
|
... orig_target_sizes = torch.stack([target["orig_size"] for target in labels], dim=0) |
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... results = im_processor.post_process(outputs, orig_target_sizes) # convert outputs of model to COCO api |
|
|
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... module.add(prediction=results, reference=labels) |
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... del batch |
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|
|
>>> results = module.compute() |
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>>> print(results) |
|
Accumulating evaluation results... |
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DONE (t=0.08s). |
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IoU metric: bbox |
|
Average Precision (AP) @[ IoU=0.50:0.95 | area= all | maxDets=100 ] = 0.150 |
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Average Precision (AP) @[ IoU=0.50 | area= all | maxDets=100 ] = 0.280 |
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Average Precision (AP) @[ IoU=0.75 | area= all | maxDets=100 ] = 0.130 |
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Average Precision (AP) @[ IoU=0.50:0.95 | area= small | maxDets=100 ] = 0.038 |
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Average Precision (AP) @[ IoU=0.50:0.95 | area=medium | maxDets=100 ] = 0.036 |
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Average Precision (AP) @[ IoU=0.50:0.95 | area= large | maxDets=100 ] = 0.182 |
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Average Recall (AR) @[ IoU=0.50:0.95 | area= all | maxDets= 1 ] = 0.166 |
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Average Recall (AR) @[ IoU=0.50:0.95 | area= all | maxDets= 10 ] = 0.317 |
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Average Recall (AR) @[ IoU=0.50:0.95 | area= all | maxDets=100 ] = 0.335 |
|
Average Recall (AR) @[ IoU=0.50:0.95 | area= small | maxDets=100 ] = 0.104 |
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Average Recall (AR) @[ IoU=0.50:0.95 | area=medium | maxDets=100 ] = 0.146 |
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Average Recall (AR) @[ IoU=0.50:0.95 | area= large | maxDets=100 ] = 0.382 |
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``` |
|
These results can be further improved by adjusting the hyperparameters in [`~transformers.TrainingArguments`]. Give it a go! |
|
|
|
## Inference |
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Now that you have finetuned a DETR model, evaluated it, and uploaded it to the Hugging Face Hub, you can use it for inference. |
|
The simplest way to try out your finetuned model for inference is to use it in a [`Pipeline`]. Instantiate a pipeline |
|
for object detection with your model, and pass an image to it: |
|
|
|
```py |
|
>>> from transformers import pipeline |
|
>>> import requests |
|
|
|
>>> url = "https://i.imgur.com/2lnWoly.jpg" |
|
>>> image = Image.open(requests.get(url, stream=True).raw) |
|
|
|
>>> obj_detector = pipeline("object-detection", model="MariaK/detr-resnet-50_finetuned_cppe5") |
|
>>> obj_detector(image) |
|
``` |
|
|
|
You can also manually replicate the results of the pipeline if you'd like: |
|
|
|
```py |
|
>>> image_processor = AutoImageProcessor.from_pretrained("MariaK/detr-resnet-50_finetuned_cppe5") |
|
>>> model = AutoModelForObjectDetection.from_pretrained("MariaK/detr-resnet-50_finetuned_cppe5") |
|
|
|
>>> with torch.no_grad(): |
|
... inputs = image_processor(images=image, return_tensors="pt") |
|
... outputs = model(**inputs) |
|
... target_sizes = torch.tensor([image.size[::-1]]) |
|
... results = image_processor.post_process_object_detection(outputs, threshold=0.5, target_sizes=target_sizes)[0] |
|
|
|
>>> for score, label, box in zip(results["scores"], results["labels"], results["boxes"]): |
|
... box = [round(i, 2) for i in box.tolist()] |
|
... print( |
|
... f"Detected {model.config.id2label[label.item()]} with confidence " |
|
... f"{round(score.item(), 3)} at location {box}" |
|
... ) |
|
Detected Coverall with confidence 0.566 at location [1215.32, 147.38, 4401.81, 3227.08] |
|
Detected Mask with confidence 0.584 at location [2449.06, 823.19, 3256.43, 1413.9] |
|
``` |
|
|
|
Let's plot the result: |
|
```py |
|
>>> draw = ImageDraw.Draw(image) |
|
|
|
>>> for score, label, box in zip(results["scores"], results["labels"], results["boxes"]): |
|
... box = [round(i, 2) for i in box.tolist()] |
|
... x, y, x2, y2 = tuple(box) |
|
... draw.rectangle((x, y, x2, y2), outline="red", width=1) |
|
... draw.text((x, y), model.config.id2label[label.item()], fill="white") |
|
|
|
>>> image |
|
``` |
|
|
|
<div class="flex justify-center"> |
|
<img src="https://i.imgur.com/4QZnf9A.png" alt="Object detection result on a new image"/> |
|
</div> |
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|
|
|