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YOLO-An Object Detection Algorithm
In this paper, an approach to object detection known as YOLO is presented. It is extremely fast. We use this algorithm to detect multiple objects in an image. The base YOLO model processes image in real-time at 45 frames per second. YOLO outperforms other detection methods including R-CNN as it is more generalized. It works on various types of datasets including artworks.
Keywords
YOLO, Object Detection, RCNN.
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