Comments (2)
Hi @brandonwagstaff,
yep, that's related to #11 , a missing torch.exp (and squared term as well) was missing in the first code release.
I'm fixing this, thanks for pointing it out.
As you correctly point out, this affects the colormap scaling of the qualitative results, while numerically does not make a real difference (usually, the second decimal in RMSE metrics).
from mono-uncertainty.
Got it, thanks for the response!
from mono-uncertainty.
Related Issues (19)
- How to deal with the negative loss? HOT 7
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- Modifying Eq 12/13 to deal with negative loss HOT 1
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- Reproducing Monodepth2-Self HOT 1
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- some questions about my implementation HOT 2
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- S and MS models uploaded HOT 3
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- Training code
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from mono-uncertainty.