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Achieving FPS mentioned in LPYOLO Paper
❔Question Achieving FPS mentioned in LPYOLO Paper
Additional context
Hey @bestamigunay @sefaburakokcu , The FPS mentioned in paper for 4W4A is about 18 FPS achieved through proper pipelining. I was wondering if you could provide the code files for that. Thanks in advance!
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Requirements
Python>=3.6.0 with all requirements.txt installed including PyTorch>=1.7. To get started:
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