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How to avoid NaN in training #149

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frickyinn opened this issue Jun 22, 2024 · 0 comments
Open

How to avoid NaN in training #149

frickyinn opened this issue Jun 22, 2024 · 0 comments

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@frickyinn
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d = torch.log(depth_est[mask]) - torch.log(depth_gt[mask])

Nan may occur while training because the final depth estimation sometimes yields 0 values. However, the loss function never tries to avoid log(0).
The solution to the situation is simply changing to this:

d = torch.log(depth_est[mask] + 1e-4) - torch.log(depth_gt[mask]) 
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