Introduces auxiliary interference speaker loss for target-speaker ASR achieving 6.6% relative WER reduction from 18.06% to 16.87% on mixed speech.
Rec- ognizing overlapped speech in meetings: A multichannel sep ara- tion approach using neural networks,
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Auxiliary Interference Speaker Loss for Target-Speaker Speech Recognition
Introduces auxiliary interference speaker loss for target-speaker ASR achieving 6.6% relative WER reduction from 18.06% to 16.87% on mixed speech.