Mon-1-7-2 Target-Speaker Voice Activity Detection: a Novel Approach for Multi-Speaker Diarization in a Dinner Party Scenario

Ivan Medennikov(STC-innovations Ltd), Maxim Korenevsky(Speech Technology Center), Tatiana Prisyach(STC-innovations Ltd), Yuri Khokhlov(STC-innovations Ltd), Mariya Korenevskaya(STC-innovations Ltd), Ivan Sorokin(STC), Tatiana Timofeeva(STC-innovations Ltd), Anton Mitrofanov(STC-innovations Ltd), Andrei Andrusenko(ITMO University), Ivan Podluzhny(STC-innovations Ltd), Aleksandr Laptev(ITMO University) and Aleksei Romanenko(ITMO University)
Abstract: Speaker diarization for real-life scenarios is an extremely challenging problem. Widely used clustering-based diarization approaches perform rather poorly in such conditions, mainly due to the limited ability to handle overlapping speech. We propose a novel Target-Speaker Voice Activity Detection (TS-VAD) approach, which directly predicts an activity of each speaker on each time frame. TS-VAD model takes conventional speech features (e.g., MFCC) along with i-vectors for each speaker as inputs. A set of binary classification output layers produces activities of each speaker. I-vectors can be estimated iteratively, starting with a strong clustering-based diarization. We also extend the TS-VAD approach to the multi-microphone case using a simple attention mechanism on top of hidden representations extracted from the single-channel TS-VAD model. Moreover, post-processing strategies for the predicted speaker activity probabilities are investigated. Experiments on the CHiME-6 unsegmented data show that TS-VAD achieves state-of-the-art results outperforming the baseline x-vector-based system by more than 30% Diarization Error Rate (DER) abs.
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