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Wespeaker: A Research and Production oriented Speaker Embedding Learning Toolkit

About

Speaker modeling is essential for many related tasks, such as speaker recognition and speaker diarization. The dominant modeling approach is fixed-dimensional vector representation, i.e., speaker embedding. This paper introduces a research and production oriented speaker embedding learning toolkit, Wespeaker. Wespeaker contains the implementation of scalable data management, state-of-the-art speaker embedding models, loss functions, and scoring back-ends, with highly competitive results achieved by structured recipes which were adopted in the winning systems in several speaker verification challenges. The application to other downstream tasks such as speaker diarization is also exhibited in the related recipe. Moreover, CPU- and GPU-compatible deployment codes are integrated for production-oriented development. The toolkit is publicly available at https://github.com/wenet-e2e/wespeaker.

Hongji Wang, Chengdong Liang, Shuai Wang, Zhengyang Chen, Binbin Zhang, Xu Xiang, Yanlei Deng, Yanmin Qian• 2022

Related benchmarks

TaskDatasetResultRank
Speaker VerificationVoxCeleb1 (test)
Cosine EER1.101
80
Speaker VerificationVoxCeleb1 (Vox1-O)--
33
Speaker VerificationVOiCES f-f
EER0.0484
30
Speaker VerificationVOiCES (s-avg)
EER10.99
30
Speaker VerificationVOiCES 5s-1s
EER17.09
30
Speaker VerificationVoxCeleb1 hard (test)
EER2.221
25
Speaker VerificationVoxCeleb1 extended (test)
EER1.252
25
Automatic Speech RecognitionLoquacious (dev)
WER17.26
18
Automatic Speech RecognitionLoquacious (test)
WER17.97
17
Speaker VerificationVoxCeleb Hard 1
EER (f-f)2
15
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