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YOLO v6
YOLOv6 has a series of models for various industrial scenarios, including N/T/S/M/L, which the architectures vary considering the model size for better accuracy-speed trade-off. And some Bag-of-freebies methods are introduced to further improve the performance, such as self-distillation and more training epochs. For industrial deployment, we adopt QAT with channel-wise distillation and graph optimization to pursue extreme performance. YOLOv6-N hits 35.9% AP on COCO dataset with 1234 FPS on T4. YOLOv6-S strikes 43.5% AP with 495 FPS, and the quantized YOLOv6-S model achieves 43.3% AP at a accelerated speed of 869 FPS on T4. YOLOv6-T/M/L also have excellent performance, which show higher accuracy than other detectors with the similar inference speed.
General | |
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Relese date | June, 2022 |
Author | YOLO |
Repository | https://github.com/meituan/YOLOv6 |
Type | Real time object detection |
Libraries
Discover YOLOv6
- YOLOv6 Web demo Gradio demo for YOLOv6 for object detection on videos. To use it, simply upload your video or click one of the examples to load them. Read more at the links below.
- YOLOv6 NCNN Android app demo This is a sample ncnn android project, it depends on ncnn library and opencv