document_redaction / tools /redaction_review.py
seanpedrickcase's picture
You can now have output redaction boxes in grey according to an environment variable. Review files are now saved every time page is changed.
c3a8cd7
raw
history blame
13.8 kB
import gradio as gr
import pandas as pd
import numpy as np
from typing import List
from gradio_image_annotation import image_annotator
from gradio_image_annotation.image_annotator import AnnotatedImageData
from tools.file_conversion import is_pdf, convert_review_json_to_pandas_df
from tools.helper_functions import get_file_path_end, output_folder
from tools.file_redaction import redact_page_with_pymupdf
import json
import os
import pymupdf
from fitz import Document
from PIL import ImageDraw, Image
def decrease_page(number:int):
'''
Decrease page number for review redactions page.
'''
#print("number:", str(number))
if number > 1:
return number - 1, number - 1
else:
return 1, 1
def increase_page(number:int, image_annotator_object:AnnotatedImageData):
'''
Increase page number for review redactions page.
'''
if not image_annotator_object:
return 1, 1
max_pages = len(image_annotator_object)
if number < max_pages:
return number + 1, number + 1
else:
return max_pages, max_pages
def update_zoom(current_zoom_level:int, annotate_current_page:int, decrease:bool=True):
if decrease == False:
if current_zoom_level >= 70:
current_zoom_level -= 10
else:
if current_zoom_level < 100:
current_zoom_level += 10
return current_zoom_level, annotate_current_page
def update_annotator(image_annotator_object:AnnotatedImageData, page_num:int, recogniser_entities_drop=gr.Dropdown(value="ALL", allow_custom_value=True), recogniser_dataframe_gr=gr.Dataframe(pd.DataFrame(data={"page":[], "label":[]})), zoom:int=100):
'''
Update a gradio_image_annotation object with new annotation data
'''
recogniser_entities = []
recogniser_dataframe = pd.DataFrame()
if recogniser_dataframe_gr.iloc[0,0] == "":
try:
review_dataframe = convert_review_json_to_pandas_df(image_annotator_object)[["page", "label"]]
#print("review_dataframe['label']", review_dataframe["label"])
recogniser_entities = review_dataframe["label"].unique().tolist()
recogniser_entities.append("ALL")
recogniser_entities = sorted(recogniser_entities)
#print("recogniser_entities:", recogniser_entities)
recogniser_dataframe_out = gr.Dataframe(review_dataframe)
recogniser_dataframe_gr = gr.Dataframe(review_dataframe)
recogniser_entities_drop = gr.Dropdown(value=recogniser_entities[0], choices=recogniser_entities, allow_custom_value=True, interactive=True)
except Exception as e:
print("Could not extract recogniser information:", e)
recogniser_dataframe_out = recogniser_dataframe_gr
else:
review_dataframe = update_entities_df(recogniser_entities_drop, recogniser_dataframe_gr)
recogniser_dataframe_out = gr.Dataframe(review_dataframe)
zoom_str = str(zoom) + '%'
if not image_annotator_object:
page_num_reported = 1
out_image_annotator = image_annotator(
image_annotator_object[page_num_reported - 1],
boxes_alpha=0.1,
box_thickness=1,
#label_list=["Redaction"],
#label_colors=[(0, 0, 0)],
show_label=False,
height=zoom_str,
width=zoom_str,
box_min_size=1,
box_selected_thickness=2,
handle_size=4,
sources=None,#["upload"],
show_clear_button=False,
show_share_button=False,
show_remove_button=False,
handles_cursor=True,
interactive=True
)
number_reported = gr.Number(label = "Page (press enter to change)", value=page_num_reported, precision=0)
return out_image_annotator, number_reported, number_reported, page_num_reported, recogniser_entities_drop, recogniser_dataframe_out, recogniser_dataframe_gr
#print("page_num at start of update_annotator function:", page_num)
if page_num is None:
page_num = 0
# Check bounding values for current page and page max
if page_num > 0:
page_num_reported = page_num
elif page_num == 0: page_num_reported = 1
else:
page_num = 0
page_num_reported = 1
page_max_reported = len(image_annotator_object)
if page_num_reported > page_max_reported:
page_num_reported = page_max_reported
from collections import defaultdict
# Remove duplicate elements that are blank
def remove_duplicate_images_with_blank_boxes(data: List[AnnotatedImageData]) -> List[AnnotatedImageData]:
# Group items by 'image'
image_groups = defaultdict(list)
for item in data:
image_groups[item['image']].append(item)
# Process each group to retain only the entry with non-empty boxes, if available
result = []
for image, items in image_groups.items():
# Filter items with non-empty boxes
non_empty_boxes = [item for item in items if item['boxes']]
if non_empty_boxes:
# Keep the first entry with non-empty boxes
result.append(non_empty_boxes[0])
else:
# If no non-empty boxes, keep the first item with empty boxes
result.append(items[0])
#print("result:", result)
return result
#print("image_annotator_object in update_annotator before function:", image_annotator_object)
image_annotator_object = remove_duplicate_images_with_blank_boxes(image_annotator_object)
#print("image_annotator_object in update_annotator after function:", image_annotator_object)
#print("image_annotator_object[page_num_reported - 1]:", image_annotator_object[page_num_reported - 1])
out_image_annotator = image_annotator(
value = image_annotator_object[page_num_reported - 1],
boxes_alpha=0.1,
box_thickness=1,
#label_list=["Redaction"],
#label_colors=[(0, 0, 0)],
show_label=False,
height=zoom_str,
width=zoom_str,
box_min_size=1,
box_selected_thickness=2,
handle_size=4,
sources=None,#["upload"],
show_clear_button=False,
show_share_button=False,
show_remove_button=False,
handles_cursor=True,
interactive=True
)
number_reported = gr.Number(label = "Page (press enter to change)", value=page_num_reported, precision=0)
return out_image_annotator, number_reported, number_reported, page_num_reported, recogniser_entities_drop, recogniser_dataframe_out, recogniser_dataframe_gr
def modify_existing_page_redactions(image_annotated:AnnotatedImageData, current_page:int, previous_page:int, all_image_annotations:List[AnnotatedImageData], recogniser_entities_drop=gr.Dropdown(value="ALL", allow_custom_value=True),recogniser_dataframe=gr.Dataframe(pd.DataFrame(data={"page":[], "label":[]})), clear_all:bool=False):
'''
Overwrite current image annotations with modifications
'''
if not current_page:
current_page = 1
#If no previous page or is 0, i.e. first time run, then rewrite current page
#if not previous_page:
# previous_page = current_page
#print("image_annotated:", image_annotated)
image_annotated['image'] = all_image_annotations[previous_page - 1]["image"]
if clear_all == False:
all_image_annotations[previous_page - 1] = image_annotated
else:
all_image_annotations[previous_page - 1]["boxes"] = []
#print("all_image_annotations:", all_image_annotations)
# Rewrite all_image_annotations search dataframe with latest updates
try:
review_dataframe = convert_review_json_to_pandas_df(all_image_annotations)[["page", "label"]]
#print("review_dataframe['label']", review_dataframe["label"])
recogniser_entities = review_dataframe["label"].unique().tolist()
recogniser_entities.append("ALL")
recogniser_entities = sorted(recogniser_entities)
recogniser_dataframe_out = gr.Dataframe(review_dataframe)
#recogniser_dataframe_gr = gr.Dataframe(review_dataframe)
recogniser_entities_drop = gr.Dropdown(value=recogniser_entities_drop, choices=recogniser_entities, allow_custom_value=True, interactive=True)
except Exception as e:
print("Could not extract recogniser information:", e)
recogniser_dataframe_out = recogniser_dataframe
return all_image_annotations, current_page, current_page, recogniser_entities_drop, recogniser_dataframe_out
def apply_redactions(image_annotated:AnnotatedImageData, file_paths:List[str], doc:Document, all_image_annotations:List[AnnotatedImageData], current_page:int, review_file_state, save_pdf:bool=True, progress=gr.Progress(track_tqdm=True)):
'''
Apply modified redactions to a pymupdf and export review files
'''
#print("all_image_annotations:", all_image_annotations)
output_files = []
output_log_files = []
#print("File paths in apply_redactions:", file_paths)
image_annotated['image'] = all_image_annotations[current_page - 1]["image"]
all_image_annotations[current_page - 1] = image_annotated
if not image_annotated:
print("No image annotations found")
return doc, all_image_annotations
if isinstance(file_paths, str):
file_paths = [file_paths]
for file_path in file_paths:
#print("file_path:", file_path)
file_base = get_file_path_end(file_path)
file_extension = os.path.splitext(file_path)[1].lower()
if save_pdf == True:
# If working with image docs
if (is_pdf(file_path) == False) & (file_extension not in '.csv'):
image = Image.open(file_paths[-1])
#image = pdf_doc
draw = ImageDraw.Draw(image)
for img_annotation_box in image_annotated['boxes']:
coords = [img_annotation_box["xmin"],
img_annotation_box["ymin"],
img_annotation_box["xmax"],
img_annotation_box["ymax"]]
fill = img_annotation_box["color"]
draw.rectangle(coords, fill=fill)
image.save(output_folder + file_base + "_redacted.png")
doc = [image]
elif file_extension in '.csv':
print("This is a csv")
pdf_doc = []
# If working with pdfs
elif is_pdf(file_path) == True:
pdf_doc = pymupdf.open(file_path)
number_of_pages = pdf_doc.page_count
print("Saving pages to file.")
for i in progress.tqdm(range(0, number_of_pages), desc="Saving redactions to file", unit = "pages"):
#print("Saving page", str(i))
image_loc = all_image_annotations[i]['image']
#print("Image location:", image_loc)
# Load in image object
if isinstance(image_loc, np.ndarray):
image = Image.fromarray(image_loc.astype('uint8'))
#all_image_annotations[i]['image'] = image_loc.tolist()
elif isinstance(image_loc, Image.Image):
image = image_loc
#image_out_folder = output_folder + file_base + "_page_" + str(i) + ".png"
#image_loc.save(image_out_folder)
#all_image_annotations[i]['image'] = image_out_folder
elif isinstance(image_loc, str):
image = Image.open(image_loc)
pymupdf_page = pdf_doc.load_page(i) #doc.load_page(current_page -1)
pymupdf_page = redact_page_with_pymupdf(pymupdf_page, all_image_annotations[i], image)
else:
print("File type not recognised.")
#try:
if pdf_doc:
out_pdf_file_path = output_folder + file_base + "_redacted.pdf"
pdf_doc.save(out_pdf_file_path)
output_files.append(out_pdf_file_path)
try:
print("Saving annotations to JSON")
out_annotation_file_path = output_folder + file_base + '_review_file.json'
with open(out_annotation_file_path, 'w') as f:
json.dump(all_image_annotations, f)
output_log_files.append(out_annotation_file_path)
print("Saving annotations to CSV review file")
#print("review_file_state:", review_file_state)
# Convert json to csv and also save this
review_df = convert_review_json_to_pandas_df(all_image_annotations, review_file_state)
out_review_file_file_path = output_folder + file_base + '_review_file.csv'
review_df.to_csv(out_review_file_file_path, index=None)
output_files.append(out_review_file_file_path)
except Exception as e:
print("Could not save annotations to json or csv file:", e)
return doc, all_image_annotations, output_files, output_log_files
def get_boxes_json(annotations:AnnotatedImageData):
return annotations["boxes"]
def update_entities_df(choice:str, df:pd.DataFrame):
if choice=="ALL":
return df
else:
return df.loc[df["label"]==choice,:]
def df_select_callback(df: pd.DataFrame, evt: gr.SelectData):
#print("index", evt.index)
#print("value", evt.value)
#print("row_value", evt.row_value)
row_value_page = evt.row_value[0] # This is the page number value
return row_value_page