| | from typing import List, Optional, Union, Tuple
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| |
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| | import cv2
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| | import numpy as np
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| |
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| | from supervision.detection.core import Detections
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| | from supervision.draw.color import Color, ColorPalette
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| |
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| |
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| | class BoxAnnotator:
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| | """
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| | A class for drawing bounding boxes on an image using detections provided.
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| |
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| | Attributes:
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| | color (Union[Color, ColorPalette]): The color to draw the bounding box,
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| | can be a single color or a color palette
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| | thickness (int): The thickness of the bounding box lines, default is 2
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| | text_color (Color): The color of the text on the bounding box, default is white
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| | text_scale (float): The scale of the text on the bounding box, default is 0.5
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| | text_thickness (int): The thickness of the text on the bounding box,
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| | default is 1
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| | text_padding (int): The padding around the text on the bounding box,
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| | default is 5
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| |
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| | """
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| |
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| | def __init__(
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| | self,
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| | color: Union[Color, ColorPalette] = ColorPalette.DEFAULT,
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| | thickness: int = 3,
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| | text_color: Color = Color.BLACK,
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| | text_scale: float = 0.5,
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| | text_thickness: int = 2,
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| | text_padding: int = 10,
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| | avoid_overlap: bool = True,
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| | ):
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| | self.color: Union[Color, ColorPalette] = color
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| | self.thickness: int = thickness
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| | self.text_color: Color = text_color
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| | self.text_scale: float = text_scale
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| | self.text_thickness: int = text_thickness
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| | self.text_padding: int = text_padding
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| | self.avoid_overlap: bool = avoid_overlap
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| |
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| | def annotate(
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| | self,
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| | scene: np.ndarray,
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| | detections: Detections,
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| | labels: Optional[List[str]] = None,
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| | skip_label: bool = False,
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| | image_size: Optional[Tuple[int, int]] = None,
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| | ) -> np.ndarray:
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| | """
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| | Draws bounding boxes on the frame using the detections provided.
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| |
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| | Args:
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| | scene (np.ndarray): The image on which the bounding boxes will be drawn
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| | detections (Detections): The detections for which the
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| | bounding boxes will be drawn
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| | labels (Optional[List[str]]): An optional list of labels
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| | corresponding to each detection. If `labels` are not provided,
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| | corresponding `class_id` will be used as label.
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| | skip_label (bool): Is set to `True`, skips bounding box label annotation.
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| | Returns:
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| | np.ndarray: The image with the bounding boxes drawn on it
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| |
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| | Example:
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| | ```python
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| | import supervision as sv
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| |
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| | classes = ['person', ...]
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| | image = ...
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| | detections = sv.Detections(...)
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| |
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| | box_annotator = sv.BoxAnnotator()
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| | labels = [
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| | f"{classes[class_id]} {confidence:0.2f}"
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| | for _, _, confidence, class_id, _ in detections
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| | ]
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| | annotated_frame = box_annotator.annotate(
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| | scene=image.copy(),
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| | detections=detections,
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| | labels=labels
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| | )
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| | ```
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| | """
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| | font = cv2.FONT_HERSHEY_SIMPLEX
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| | for i in range(len(detections)):
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| | x1, y1, x2, y2 = detections.xyxy[i].astype(int)
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| | class_id = (
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| | detections.class_id[i] if detections.class_id is not None else None
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| | )
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| | idx = class_id if class_id is not None else i
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| | color = (
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| | self.color.by_idx(idx)
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| | if isinstance(self.color, ColorPalette)
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| | else self.color
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| | )
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| | cv2.rectangle(
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| | img=scene,
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| | pt1=(x1, y1),
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| | pt2=(x2, y2),
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| | color=color.as_bgr(),
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| | thickness=self.thickness,
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| | )
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| | if skip_label:
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| | continue
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| |
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| | text = (
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| | f"{class_id}"
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| | if (labels is None or len(detections) != len(labels))
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| | else labels[i]
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| | )
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| |
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| | text_width, text_height = cv2.getTextSize(
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| | text=text,
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| | fontFace=font,
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| | fontScale=self.text_scale,
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| | thickness=self.text_thickness,
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| | )[0]
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| |
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| | if not self.avoid_overlap:
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| | text_x = x1 + self.text_padding
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| | text_y = y1 - self.text_padding
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| |
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| | text_background_x1 = x1
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| | text_background_y1 = y1 - 2 * self.text_padding - text_height
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| |
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| | text_background_x2 = x1 + 2 * self.text_padding + text_width
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| | text_background_y2 = y1
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| |
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| |
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| |
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| |
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| |
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| |
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| | else:
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| | text_x, text_y, text_background_x1, text_background_y1, text_background_x2, text_background_y2 = get_optimal_label_pos(self.text_padding, text_width, text_height, x1, y1, x2, y2, detections, image_size)
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| |
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| | cv2.rectangle(
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| | img=scene,
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| | pt1=(text_background_x1, text_background_y1),
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| | pt2=(text_background_x2, text_background_y2),
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| | color=color.as_bgr(),
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| | thickness=cv2.FILLED,
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| | )
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| |
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| | box_color = color.as_rgb()
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| | luminance = 0.299 * box_color[0] + 0.587 * box_color[1] + 0.114 * box_color[2]
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| | text_color = (0,0,0) if luminance > 160 else (255,255,255)
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| | cv2.putText(
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| | img=scene,
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| | text=text,
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| | org=(text_x, text_y),
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| | fontFace=font,
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| | fontScale=self.text_scale,
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| |
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| | color=text_color,
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| | thickness=self.text_thickness,
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| | lineType=cv2.LINE_AA,
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| | )
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| | return scene
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| |
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| |
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| | def box_area(box):
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| | return (box[2] - box[0]) * (box[3] - box[1])
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| |
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| | def intersection_area(box1, box2):
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| | x1 = max(box1[0], box2[0])
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| | y1 = max(box1[1], box2[1])
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| | x2 = min(box1[2], box2[2])
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| | y2 = min(box1[3], box2[3])
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| | return max(0, x2 - x1) * max(0, y2 - y1)
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| |
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| | def IoU(box1, box2, return_max=True):
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| | intersection = intersection_area(box1, box2)
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| | union = box_area(box1) + box_area(box2) - intersection
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| | if box_area(box1) > 0 and box_area(box2) > 0:
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| | ratio1 = intersection / box_area(box1)
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| | ratio2 = intersection / box_area(box2)
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| | else:
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| | ratio1, ratio2 = 0, 0
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| | if return_max:
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| | return max(intersection / union, ratio1, ratio2)
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| | else:
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| | return intersection / union
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| |
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| |
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| | def get_optimal_label_pos(text_padding, text_width, text_height, x1, y1, x2, y2, detections, image_size):
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| | """ check overlap of text and background detection box, and get_optimal_label_pos,
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| | pos: str, position of the text, must be one of 'top left', 'top right', 'outer left', 'outer right' TODO: if all are overlapping, return the last one, i.e. outer right
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| | Threshold: default to 0.3
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| | """
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| |
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| | def get_is_overlap(detections, text_background_x1, text_background_y1, text_background_x2, text_background_y2, image_size):
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| | is_overlap = False
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| | for i in range(len(detections)):
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| | detection = detections.xyxy[i].astype(int)
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| | if IoU([text_background_x1, text_background_y1, text_background_x2, text_background_y2], detection) > 0.3:
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| | is_overlap = True
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| | break
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| |
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| | if text_background_x1 < 0 or text_background_x2 > image_size[0] or text_background_y1 < 0 or text_background_y2 > image_size[1]:
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| | is_overlap = True
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| | return is_overlap
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| |
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| |
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| | text_x = x1 + text_padding
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| | text_y = y1 - text_padding
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| |
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| | text_background_x1 = x1
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| | text_background_y1 = y1 - 2 * text_padding - text_height
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| |
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| | text_background_x2 = x1 + 2 * text_padding + text_width
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| | text_background_y2 = y1
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| | is_overlap = get_is_overlap(detections, text_background_x1, text_background_y1, text_background_x2, text_background_y2, image_size)
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| | if not is_overlap:
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| | return text_x, text_y, text_background_x1, text_background_y1, text_background_x2, text_background_y2
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| |
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| |
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| | text_x = x1 - text_padding - text_width
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| | text_y = y1 + text_padding + text_height
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| |
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| | text_background_x1 = x1 - 2 * text_padding - text_width
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| | text_background_y1 = y1
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| |
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| | text_background_x2 = x1
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| | text_background_y2 = y1 + 2 * text_padding + text_height
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| | is_overlap = get_is_overlap(detections, text_background_x1, text_background_y1, text_background_x2, text_background_y2, image_size)
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| | if not is_overlap:
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| | return text_x, text_y, text_background_x1, text_background_y1, text_background_x2, text_background_y2
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| |
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| |
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| |
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| | text_x = x2 + text_padding
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| | text_y = y1 + text_padding + text_height
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| |
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| | text_background_x1 = x2
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| | text_background_y1 = y1
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| |
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| | text_background_x2 = x2 + 2 * text_padding + text_width
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| | text_background_y2 = y1 + 2 * text_padding + text_height
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| |
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| | is_overlap = get_is_overlap(detections, text_background_x1, text_background_y1, text_background_x2, text_background_y2, image_size)
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| | if not is_overlap:
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| | return text_x, text_y, text_background_x1, text_background_y1, text_background_x2, text_background_y2
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| |
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| |
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| | text_x = x2 - text_padding - text_width
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| | text_y = y1 - text_padding
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| |
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| | text_background_x1 = x2 - 2 * text_padding - text_width
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| | text_background_y1 = y1 - 2 * text_padding - text_height
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| |
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| | text_background_x2 = x2
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| | text_background_y2 = y1
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| |
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| | is_overlap = get_is_overlap(detections, text_background_x1, text_background_y1, text_background_x2, text_background_y2, image_size)
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| | if not is_overlap:
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| | return text_x, text_y, text_background_x1, text_background_y1, text_background_x2, text_background_y2
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| |
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| | return text_x, text_y, text_background_x1, text_background_y1, text_background_x2, text_background_y2
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| |
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