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import asyncio |
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import string |
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from collections import Counter |
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from itertools import count, tee |
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import cv2 |
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import matplotlib.pyplot as plt |
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import numpy as np |
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import pandas as pd |
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import streamlit as st |
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import torch |
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from PIL import Image |
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from transformers import (DetrImageProcessor, |
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TableTransformerForObjectDetection) |
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from vietocr.tool.config import Cfg |
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from vietocr.tool.predictor import Predictor |
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st.set_option('deprecation.showPyplotGlobalUse', False) |
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st.set_page_config(layout='wide') |
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st.title("Table Detection and Table Structure Recognition By VWITS") |
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st.write( |
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"Implemented by MSFT team: https://github.com/microsoft/table-transformer") |
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config = Cfg.load_config_from_name('vgg_seq2seq') |
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config['cnn']['pretrained'] = False |
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config['device'] = 'cpu' |
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config['predictor']['beamsearch'] = False |
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detector = Predictor(config) |
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table_detection_model = TableTransformerForObjectDetection.from_pretrained( |
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"microsoft/table-transformer-detection") |
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table_recognition_model = TableTransformerForObjectDetection.from_pretrained( |
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"microsoft/table-transformer-structure-recognition") |
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def PIL_to_cv(pil_img): |
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return cv2.cvtColor(np.array(pil_img), cv2.COLOR_RGB2BGR) |
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def cv_to_PIL(cv_img): |
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return Image.fromarray(cv2.cvtColor(cv_img, cv2.COLOR_BGR2RGB)) |
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async def pytess(cell_pil_img, threshold: float = 0.5): |
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text, prob = detector.predict(cell_pil_img, return_prob=True) |
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if prob < threshold: |
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return "" |
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return text.strip() |
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def sharpen_image(pil_img): |
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img = PIL_to_cv(pil_img) |
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sharpen_kernel = np.array([[-1, -1, -1], [-1, 9, -1], [-1, -1, -1]]) |
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sharpen = cv2.filter2D(img, -1, sharpen_kernel) |
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pil_img = cv_to_PIL(sharpen) |
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return pil_img |
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def uniquify(seq, suffs=count(1)): |
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"""Make all the items unique by adding a suffix (1, 2, etc). |
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Credit: https://stackoverflow.com/questions/30650474/python-rename-duplicates-in-list-with-progressive-numbers-without-sorting-list |
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`seq` is mutable sequence of strings. |
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`suffs` is an optional alternative suffix iterable. |
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""" |
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not_unique = [k for k, v in Counter(seq).items() if v > 1] |
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suff_gens = dict(zip(not_unique, tee(suffs, len(not_unique)))) |
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for idx, s in enumerate(seq): |
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try: |
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suffix = str(next(suff_gens[s])) |
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except KeyError: |
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continue |
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else: |
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seq[idx] += suffix |
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return seq |
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def binarizeBlur_image(pil_img): |
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image = PIL_to_cv(pil_img) |
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thresh = cv2.threshold(image, 150, 255, cv2.THRESH_BINARY_INV)[1] |
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result = cv2.GaussianBlur(thresh, (5, 5), 0) |
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result = 255 - result |
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return cv_to_PIL(result) |
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def td_postprocess(pil_img): |
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''' |
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Removes gray background from tables |
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''' |
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img = PIL_to_cv(pil_img) |
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hsv = cv2.cvtColor(img, cv2.COLOR_BGR2HSV) |
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mask = cv2.inRange(hsv, (0, 0, 100), |
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(255, 5, 255)) |
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nzmask = cv2.inRange(hsv, (0, 0, 5), |
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(255, 255, 255)) |
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nzmask = cv2.erode(nzmask, np.ones((3, 3))) |
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mask = mask & nzmask |
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new_img = img.copy() |
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new_img[np.where(mask)] = 255 |
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return cv_to_PIL(new_img) |
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def table_detector(image, THRESHOLD_PROBA): |
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''' |
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Table detection using DEtect-object TRansformer pre-trained on 1 million tables |
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''' |
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feature_extractor = DetrImageProcessor(do_resize=True, |
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size=800, |
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max_size=800) |
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encoding = feature_extractor(image, return_tensors="pt") |
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with torch.no_grad(): |
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outputs = table_detection_model(**encoding) |
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probas = outputs.logits.softmax(-1)[0, :, :-1] |
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keep = probas.max(-1).values > THRESHOLD_PROBA |
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target_sizes = torch.tensor(image.size[::-1]).unsqueeze(0) |
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postprocessed_outputs = feature_extractor.post_process( |
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outputs, target_sizes) |
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bboxes_scaled = postprocessed_outputs[0]['boxes'][keep] |
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return (probas[keep], bboxes_scaled) |
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def table_struct_recog(image, THRESHOLD_PROBA): |
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''' |
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Table structure recognition using DEtect-object TRansformer pre-trained on 1 million tables |
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''' |
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feature_extractor = DetrImageProcessor(do_resize=True, |
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size=1000, |
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max_size=1000) |
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encoding = feature_extractor(image, return_tensors="pt") |
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with torch.no_grad(): |
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outputs = table_recognition_model(**encoding) |
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probas = outputs.logits.softmax(-1)[0, :, :-1] |
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keep = probas.max(-1).values > THRESHOLD_PROBA |
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target_sizes = torch.tensor(image.size[::-1]).unsqueeze(0) |
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postprocessed_outputs = feature_extractor.post_process( |
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outputs, target_sizes) |
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bboxes_scaled = postprocessed_outputs[0]['boxes'][keep] |
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return (probas[keep], bboxes_scaled) |
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class TableExtractionPipeline(): |
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colors = ["red", "blue", "green", "yellow", "orange", "violet"] |
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def add_padding(self, |
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pil_img, |
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top, |
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right, |
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bottom, |
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left, |
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color=(255, 255, 255)): |
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''' |
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Image padding as part of TSR pre-processing to prevent missing table edges |
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''' |
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width, height = pil_img.size |
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new_width = width + right + left |
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new_height = height + top + bottom |
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result = Image.new(pil_img.mode, (new_width, new_height), color) |
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result.paste(pil_img, (left, top)) |
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return result |
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def plot_results_detection(self, c1, model, pil_img, prob, boxes, |
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delta_xmin, delta_ymin, delta_xmax, delta_ymax): |
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''' |
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crop_tables and plot_results_detection must have same co-ord shifts because 1 only plots the other one updates co-ordinates |
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''' |
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plt.imshow(pil_img) |
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ax = plt.gca() |
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for p, (xmin, ymin, xmax, ymax) in zip(prob, boxes.tolist()): |
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cl = p.argmax() |
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xmin, ymin, xmax, ymax = xmin - delta_xmin, ymin - delta_ymin, xmax + delta_xmax, ymax + delta_ymax |
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ax.add_patch( |
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plt.Rectangle((xmin, ymin), |
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xmax - xmin, |
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ymax - ymin, |
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fill=False, |
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color='red', |
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linewidth=3)) |
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text = f'{model.config.id2label[cl.item()]}: {p[cl]:0.2f}' |
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ax.text(xmin - 20, |
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ymin - 50, |
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text, |
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fontsize=10, |
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bbox=dict(facecolor='yellow', alpha=0.5)) |
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plt.axis('off') |
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c1.pyplot() |
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def crop_tables(self, pil_img, prob, boxes, delta_xmin, delta_ymin, |
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delta_xmax, delta_ymax): |
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''' |
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crop_tables and plot_results_detection must have same co-ord shifts because 1 only plots the other one updates co-ordinates |
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''' |
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cropped_img_list = [] |
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for p, (xmin, ymin, xmax, ymax) in zip(prob, boxes.tolist()): |
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xmin, ymin, xmax, ymax = xmin - delta_xmin, ymin - delta_ymin, xmax + delta_xmax, ymax + delta_ymax |
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cropped_img = pil_img.crop((xmin, ymin, xmax, ymax)) |
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cropped_img_list.append(cropped_img) |
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return cropped_img_list |
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def generate_structure(self, c2, model, pil_img, prob, boxes, |
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expand_rowcol_bbox_top, expand_rowcol_bbox_bottom): |
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''' |
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Co-ordinates are adjusted here by 3 'pixels' |
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To plot table pillow image and the TSR bounding boxes on the table |
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''' |
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plt.figure(figsize=(32, 20)) |
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plt.imshow(pil_img) |
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ax = plt.gca() |
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rows = {} |
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cols = {} |
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idx = 0 |
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for p, (xmin, ymin, xmax, ymax) in zip(prob, boxes.tolist()): |
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xmin, ymin, xmax, ymax = xmin, ymin, xmax, ymax |
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cl = p.argmax() |
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class_text = model.config.id2label[cl.item()] |
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text = f'{class_text}: {p[cl]:0.2f}' |
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if (class_text |
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== 'table row') or (class_text |
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== 'table projected row header') or ( |
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class_text == 'table column'): |
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ax.add_patch( |
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plt.Rectangle((xmin, ymin), |
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xmax - xmin, |
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ymax - ymin, |
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fill=False, |
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color=self.colors[cl.item()], |
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linewidth=2)) |
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ax.text(xmin - 10, |
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ymin - 10, |
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text, |
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fontsize=5, |
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bbox=dict(facecolor='yellow', alpha=0.5)) |
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if class_text == 'table row': |
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rows['table row.' + |
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str(idx)] = (xmin, ymin - expand_rowcol_bbox_top, xmax, |
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ymax + expand_rowcol_bbox_bottom) |
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if class_text == 'table column': |
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cols['table column.' + |
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str(idx)] = (xmin, ymin - expand_rowcol_bbox_top, xmax, |
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ymax + expand_rowcol_bbox_bottom) |
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idx += 1 |
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plt.axis('on') |
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c2.pyplot() |
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return rows, cols |
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def sort_table_featuresv2(self, rows: dict, cols: dict): |
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rows_ = { |
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table_feature: (xmin, ymin, xmax, ymax) |
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for table_feature, ( |
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xmin, ymin, xmax, |
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ymax) in sorted(rows.items(), key=lambda tup: tup[1][1]) |
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} |
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cols_ = { |
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table_feature: (xmin, ymin, xmax, ymax) |
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for table_feature, ( |
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xmin, ymin, xmax, |
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ymax) in sorted(cols.items(), key=lambda tup: tup[1][0]) |
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} |
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return rows_, cols_ |
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def individual_table_featuresv2(self, pil_img, rows: dict, cols: dict): |
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for k, v in rows.items(): |
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xmin, ymin, xmax, ymax = v |
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cropped_img = pil_img.crop((xmin, ymin, xmax, ymax)) |
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rows[k] = xmin, ymin, xmax, ymax, cropped_img |
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for k, v in cols.items(): |
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xmin, ymin, xmax, ymax = v |
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cropped_img = pil_img.crop((xmin, ymin, xmax, ymax)) |
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cols[k] = xmin, ymin, xmax, ymax, cropped_img |
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return rows, cols |
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def object_to_cellsv2(self, master_row: dict, cols: dict, |
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expand_rowcol_bbox_top, expand_rowcol_bbox_bottom, |
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padd_left): |
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'''Removes redundant bbox for rows&columns and divides each row into cells from columns |
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Args: |
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Returns: |
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''' |
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cells_img = {} |
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header_idx = 0 |
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row_idx = 0 |
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previous_xmax_col = 0 |
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new_cols = {} |
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new_master_row = {} |
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previous_ymin_row = 0 |
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new_cols = cols |
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new_master_row = master_row |
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for k_row, v_row in new_master_row.items(): |
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_, _, _, _, row_img = v_row |
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xmax, ymax = row_img.size |
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xa, ya, xb, yb = 0, 0, 0, ymax |
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row_img_list = [] |
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for idx, kv in enumerate(new_cols.items()): |
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k_col, v_col = kv |
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xmin_col, _, xmax_col, _, col_img = v_col |
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xmin_col, xmax_col = xmin_col - padd_left - 10, xmax_col - padd_left |
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xa = xmin_col |
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xb = xmax_col |
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if idx == 0: |
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xa = 0 |
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if idx == len(new_cols) - 1: |
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xb = xmax |
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xa, ya, xb, yb = xa, ya, xb, yb |
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row_img_cropped = row_img.crop((xa, ya, xb, yb)) |
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row_img_list.append(row_img_cropped) |
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cells_img[k_row + '.' + str(row_idx)] = row_img_list |
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row_idx += 1 |
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return cells_img, len(new_cols), len(new_master_row) - 1 |
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def clean_dataframe(self, df): |
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''' |
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Remove irrelevant symbols that appear with tesseractOCR |
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''' |
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for col in df.columns: |
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df[col] = df[col].str.replace("'", '', regex=True) |
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df[col] = df[col].str.replace('"', '', regex=True) |
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df[col] = df[col].str.replace(']', '', regex=True) |
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df[col] = df[col].str.replace('[', '', regex=True) |
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df[col] = df[col].str.replace('{', '', regex=True) |
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df[col] = df[col].str.replace('}', '', regex=True) |
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return df |
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@st.cache |
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def convert_df(self, df): |
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return df.to_csv().encode('utf-8') |
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def create_dataframe(self, c3, cell_ocr_res: list, max_cols: int, |
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max_rows: int): |
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'''Create dataframe using list of cell values of the table, also checks for valid header of dataframe |
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Args: |
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cell_ocr_res: list of strings, each element representing a cell in a table |
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max_cols, max_rows: number of columns and rows |
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Returns: |
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dataframe : final dataframe after all pre-processing |
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''' |
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headers = cell_ocr_res[:max_cols] |
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new_headers = uniquify(headers, |
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(f' {x!s}' for x in string.ascii_lowercase)) |
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counter = 0 |
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cells_list = cell_ocr_res[max_cols:] |
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df = pd.DataFrame("", index=range(0, max_rows), columns=new_headers) |
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cell_idx = 0 |
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for nrows in range(max_rows): |
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for ncols in range(max_cols): |
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df.iat[nrows, ncols] = str(cells_list[cell_idx]) |
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cell_idx += 1 |
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for x, col in zip(string.ascii_lowercase, new_headers): |
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if f' {x!s}' == col: |
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counter += 1 |
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header_char_count = [len(col) for col in new_headers] |
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df = self.clean_dataframe(df) |
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c3.dataframe(df) |
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csv = self.convert_df(df) |
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c3.download_button("Download table", |
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csv, |
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"file.csv", |
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"text/csv", |
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key='download-csv') |
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return df |
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async def start_process(self, image_path: str, TD_THRESHOLD, TSR_THRESHOLD, |
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OCR_THRESHOLD, padd_top, padd_left, padd_bottom, |
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padd_right, delta_xmin, delta_ymin, delta_xmax, |
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delta_ymax, expand_rowcol_bbox_top, |
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expand_rowcol_bbox_bottom): |
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''' |
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Initiates process of generating pandas dataframes from raw pdf-page images |
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''' |
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image = Image.open(image_path).convert("RGB") |
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probas, bboxes_scaled = table_detector(image, |
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THRESHOLD_PROBA=TD_THRESHOLD) |
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if bboxes_scaled.nelement() == 0: |
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st.write('No table found in the pdf-page image') |
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return '' |
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c1, c2, c3 = st.columns((1, 1, 1)) |
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self.plot_results_detection(c1, table_detection_model, image, probas, |
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bboxes_scaled, delta_xmin, delta_ymin, |
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delta_xmax, delta_ymax) |
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cropped_img_list = self.crop_tables(image, probas, bboxes_scaled, |
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delta_xmin, delta_ymin, delta_xmax, |
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delta_ymax) |
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for unpadded_table in cropped_img_list: |
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table = self.add_padding(unpadded_table, padd_top, padd_right, |
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padd_bottom, padd_left) |
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probas, bboxes_scaled = table_struct_recog( |
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table, THRESHOLD_PROBA=TSR_THRESHOLD) |
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rows, cols = self.generate_structure(c2, table_recognition_model, |
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table, probas, bboxes_scaled, |
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expand_rowcol_bbox_top, |
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expand_rowcol_bbox_bottom) |
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rows, cols = self.sort_table_featuresv2(rows, cols) |
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master_row, cols = self.individual_table_featuresv2( |
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table, rows, cols) |
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cells_img, max_cols, max_rows = self.object_to_cellsv2( |
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master_row, cols, expand_rowcol_bbox_top, |
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expand_rowcol_bbox_bottom, padd_left) |
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sequential_cell_img_list = [] |
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for k, img_list in cells_img.items(): |
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for img in img_list: |
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sequential_cell_img_list.append( |
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pytess(cell_pil_img=img, threshold=OCR_THRESHOLD)) |
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cell_ocr_res = await asyncio.gather(*sequential_cell_img_list) |
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self.create_dataframe(c3, cell_ocr_res, max_cols, max_rows) |
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st.write( |
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'Errors in OCR is due to either quality of the image or performance of the OCR' |
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) |
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if __name__ == "__main__": |
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img_name = st.file_uploader("Upload an image with table(s)") |
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st1, st2, st3 = st.columns((1, 1, 1)) |
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TD_th = st1.slider('Table detection threshold', 0.0, 1.0, 0.8) |
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TSR_th = st2.slider('Table structure recognition threshold', 0.0, 1.0, 0.8) |
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OCR_th = st3.slider("Text Probs Threshold", 0.0, 1.0, 0.5) |
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st1, st2, st3, st4 = st.columns((1, 1, 1, 1)) |
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padd_top = st1.slider('Padding top', 0, 200, 40) |
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padd_left = st2.slider('Padding left', 0, 200, 40) |
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padd_right = st3.slider('Padding right', 0, 200, 40) |
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padd_bottom = st4.slider('Padding bottom', 0, 200, 40) |
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te = TableExtractionPipeline() |
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if img_name is not None: |
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asyncio.run( |
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te.start_process(img_name, |
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TD_THRESHOLD=TD_th, |
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TSR_THRESHOLD=TSR_th, |
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OCR_THRESHOLD=OCR_th, |
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padd_top=padd_top, |
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padd_left=padd_left, |
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padd_bottom=padd_bottom, |
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padd_right=padd_right, |
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delta_xmin=0, |
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delta_ymin=0, |
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delta_xmax=0, |
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delta_ymax=0, |
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expand_rowcol_bbox_top=0, |
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expand_rowcol_bbox_bottom=0)) |
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