Real-time Object Detection: YOLOv1 Re-Implementation in PyTorch
Abstract
An implementation and modification of the YOLO v1 architecture using PyTorch to enhance real-time object detection performance.
Real-time object detection is a crucial problem to solve when in comes to computer vision systems that needs to make appropriate decision based on detection in a timely manner. I have chosen the YOLO v1 architecture to implement it using PyTorch framework, with goal to familiarize with entire object detection pipeline I attempted different techniques to modify the original architecture to improve the results. Finally, I compare the metrics of my implementation to the original.
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