Objects as Points
tors represent each object through an axis-aligned bounding box that tightly encompasses the object [18,19,33,43,46]. They then reduce object detection to image classification of an extensive number of potential object bounding boxes. For each bounding box, the classifier determines if the image content is a specific object or background. One-
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