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PIT with nn.CrossEntropyLoss() from MIRNet #596

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penguinwang96825 opened this issue Feb 11, 2022 · 1 comment
Open

PIT with nn.CrossEntropyLoss() from MIRNet #596

penguinwang96825 opened this issue Feb 11, 2022 · 1 comment
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enhancement New feature or request help wanted Extra attention is needed

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@penguinwang96825
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🚀 Feature

This is to assign speaker ID of each separated signals with PIT.

Motivation

Authors from MIRNet considers all of the loss terms by calculating every possible permutation of candidate pairs. They computed the PIT loss on estimated speaker identity information. In addition, they use cross-entropy loss with a classifier for the speaker embeddings.

What you'd like

The entire training criterion is as follows:
截圖 2022-02-11 上午8 29 09

@penguinwang96825 penguinwang96825 added enhancement New feature or request help wanted Extra attention is needed labels Feb 11, 2022
@mpariente
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This sounds very interesting, do you want to give it a try?

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Labels
enhancement New feature or request help wanted Extra attention is needed
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