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4 months ago

Fully Supervised Speaker Diarization

Aonan Zhang; Quan Wang; Zhenyao Zhu; John Paisley; Chong Wang

Fully Supervised Speaker Diarization

Abstract

In this paper, we propose a fully supervised speaker diarization approach, named unbounded interleaved-state recurrent neural networks (UIS-RNN). Given extracted speaker-discriminative embeddings (a.k.a. d-vectors) from input utterances, each individual speaker is modeled by a parameter-sharing RNN, while the RNN states for different speakers interleave in the time domain. This RNN is naturally integrated with a distance-dependent Chinese restaurant process (ddCRP) to accommodate an unknown number of speakers. Our system is fully supervised and is able to learn from examples where time-stamped speaker labels are annotated. We achieved a 7.6% diarization error rate on NIST SRE 2000 CALLHOME, which is better than the state-of-the-art method using spectral clustering. Moreover, our method decodes in an online fashion while most state-of-the-art systems rely on offline clustering.

Code Repositories

google/uis-rnn
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
speaker-diarization-on-hub5-00-callhomeUIS-RNN
V: 10.6

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Fully Supervised Speaker Diarization | Papers | HyperAI