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Temporal sampling strategy and computational cost #17

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zhenhuat opened this issue Oct 19, 2022 · 0 comments
Open

Temporal sampling strategy and computational cost #17

zhenhuat opened this issue Oct 19, 2022 · 0 comments

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@zhenhuat
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Hello, thank you very much for sharing. I have two issues:
(1)Where is the temporal sampling strategy in your code? It seems to be the most important trick of your model.
(2)I can't train the 9-frame model on the P40 server (with 24G memory). The computational cost seems much greater than the values (FLOPs) reported in your paper.

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