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How to extract latent code volume by scc? #4

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yangfan0421 opened this issue Aug 22, 2022 · 2 comments
Open

How to extract latent code volume by scc? #4

yangfan0421 opened this issue Aug 22, 2022 · 2 comments

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@yangfan0421
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We don't see the latent code f ∈ R88 mentioned in paper 3.2. Is there any other data preprocessing step?

@alvinliu0
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Hi:

Actually, we modify the sparse convolution network structure of NeuralBody (i.e., modify the input and output channel dimension). Hence the concatenation of output feature channels is summed up as 88-dim.

@yangfan0421
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It means that I need to train a new SCN which using data like NeuralBody but only using head part for feature extraction.

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