Improving Target Speaker Extraction with Sparse LDA-transformed Speaker Embeddings
Kai Liu, Xucheng Wan, Ziqing Du, Huan Zhou

TL;DR
This paper proposes using sparse LDA-transformed speaker embeddings as cues in target speaker extraction, demonstrating significant improvements over existing methods on benchmark datasets.
Contribution
It introduces a novel sparse LDA-based speaker embedding for TSE, showing that simplified cues can outperform traditional discriminative embeddings.
Findings
Up to 9.9% relative improvement in SI-SDRi
Achieved top TSE results on WSJ0-2mix dataset
Validated effectiveness of sparse LDA-transformed embeddings
Abstract
As a practical alternative of speech separation, target speaker extraction (TSE) aims to extract the speech from the desired speaker using additional speaker cue extracted from the speaker. Its main challenge lies in how to properly extract and leverage the speaker cue to benefit the extracted speech quality. The cue extraction method adopted in majority existing TSE studies is to directly utilize discriminative speaker embedding, which is extracted from the pre-trained models for speaker verification. Although the high speaker discriminability is a most desirable property for speaker verification task, we argue that it may be too sophisticated for TSE. In this study, we propose that a simplified speaker cue with clear class separability might be preferred for TSE. To verify our proposal, we introduce several forms of speaker cues, including naive speaker embedding (such as, x-vector…
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Taxonomy
TopicsSpeech and Audio Processing · Speech Recognition and Synthesis · Music and Audio Processing
MethodsMulti-Head Attention · Attention Is All You Need · Softmax · Residual Connection · Dense Connections · Layer Normalization · Linear Layer · Position-Wise Feed-Forward Layer · *Communicated@Fast*How Do I Communicate to Expedia? · Parameterized ReLU
