OAK

AUXILIARY LOSS OF TRANSFORMER WITH RESIDUAL CONNECTION FOR END-TO-END SPEAKER DIARIZATION

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Author(s)
Yu, YechanPark, DongkeonKim, Hong Kook
Type
Conference Paper
Citation
47th IEEE International Conference on Acoustics, Speech, and Signal Processing, ICASSP 2022, pp.8377 - 8381
Issued Date
2022-05-12
Abstract
End-to-end neural diarization (EEND) with self-attention directly predicts speaker labels from inputs and enables the handling of overlapped speech. Although the EEND outperforms clustering-based speaker diarization (SD), it cannot be further improved by simply increasing the number of encoder blocks because the last encoder block is dominantly supervised compared with lower blocks. This paper proposes a new residual auxiliary EEND (RX-EEND) learning architecture for transformers to enforce the lower encoder blocks to learn more accurately. The auxiliary loss is applied to the output of each encoder block, including the last encoder block. The effect of auxiliary loss on the learning of the encoder blocks can be further increased by adding a residual connection between the encoder blocks of the EEND. Performance evaluation and ablation study reveal that the auxiliary loss in the proposed RX-EEND provides relative reductions in the diarization error rate (DER) by 50.3% and 21.0% on the simulated and CALLHOME (CH) datasets, respectively, compared with self-attentive EEND (SA-EEND). Furthermore, the residual connection used in RX-EEND further relatively reduces the DER by 8.1% for CH dataset.
Publisher
Institute of Electrical and Electronics Engineers Inc.
Conference Place
SI
online
URI
https://scholar.gist.ac.kr/handle/local/21901
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