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app.py
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# Import libraries
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import cv2 # for reading images, draw bounding boxes
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from ultralytics import YOLO
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import gradio as gr
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# Define constants
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BOX_COLORS = {
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"unchecked": (242, 48, 48),
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"checked": (38, 115, 101),
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"block": (242, 159, 5)
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}
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BOX_PADDING = 2
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# Load models
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DETECTION_MODEL = YOLO("runs/detect/train_all_classes/best_yolov8l_640_with_background_mixup50.pt")
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CLASSIFICATION_MODEL = YOLO("runs/classify/train/weights/best.pt") # 0: block, 1: checked, 2: unchecked
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def detect(image):
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"""
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Output inference image with bounding box
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Args:
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- image: to check for checkboxes
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Return: image with bounding boxes drawn
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"""
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# Predict on image
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results = DETECTION_MODEL.predict(source=image, conf=0.2, iou=0.8) # Predict on image
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boxes = results[0].boxes # Get bounding boxes
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if len(boxes) == 0:
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return image
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# Get bounding boxes
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for box in boxes:
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detection_class_conf = round(box.conf.item(), 2)
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detection_class = list(BOX_COLORS)[int(box.cls)]
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# Get start and end points of the current box
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start_box = (int(box.xyxy[0][0]), int(box.xyxy[0][1]))
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end_box = (int(box.xyxy[0][2]), int(box.xyxy[0][3]))
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box = image[start_box[1]:end_box[1], start_box[0]: end_box[0], :]
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# Determine the class of the box using classification model
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cls_results = CLASSIFICATION_MODEL.predict(source=box, conf=0.5)
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probs = cls_results[0].probs # cls prob, (num_class, )
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classification_class = list(BOX_COLORS)[2 - int(probs.top1)]
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classification_class_conf = round(probs.top1conf.item(), 2)
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cls = classification_class if classification_class_conf > 0.9 else detection_class
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# 01. DRAW BOUNDING BOX OF OBJECT
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line_thickness = round(0.002 * (image.shape[0] + image.shape[1]) / 2) + 1
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image = cv2.rectangle(img=image,
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pt1=start_box,
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pt2=end_box,
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color=BOX_COLORS[cls],
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thickness = line_thickness) # Draw the box with predefined colors
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# 02. DRAW LABEL
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text = cls + " " + str(detection_class_conf)
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# Get text dimensions to draw wrapping box
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font_thickness = max(line_thickness - 1, 1)
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(text_w, text_h), _ = cv2.getTextSize(text=text, fontFace=2, fontScale=line_thickness/3, thickness=font_thickness)
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# Draw wrapping box for text
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image = cv2.rectangle(img=image,
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pt1=(start_box[0], start_box[1] - text_h - BOX_PADDING*2),
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pt2=(start_box[0] + text_w + BOX_PADDING * 2, start_box[1]),
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color=BOX_COLORS[cls],
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thickness=-1)
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# Put class name on image
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start_text = (start_box[0] + BOX_PADDING, start_box[1] - BOX_PADDING)
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image = cv2.putText(img=image, text=text, org=start_text, fontFace=0, color=(255,255,255), fontScale=line_thickness/3, thickness=font_thickness)
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return image
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iface = gr.Interface(fn=detect,
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inputs=gr.inputs.Image(label="Upload scanned document", type="filepath"),
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outputs="image")
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iface.launch()
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