Litcius/Paper detail

Multi-Target Extractor and Detector for Unknown-Number Speaker Diarization

Chin-Yi Cheng, Hung-Shin Lee, Yu Tsao, Hsin‐Min Wang

2023IEEE Signal Processing Letters12 citationsDOI

Abstract

Strong representations of target speakers can help extract important information about speakers and detect corresponding temporal regions in multi-speaker conversations. In this study, we propose a neural architecture that simultaneously extracts speaker representations consistent with the speaker diarization objective and detects the presence of each speaker on a frame-by-frame basis regardless of the number of speakers in a conversation. A speaker representation (called z-vector) extractor and a time-speaker contextualizer, implemented by a residual network and processing data in both temporal and speaker dimensions, are integrated into a unified framework. Tests on the CALLHOME corpus show that our model outperforms most of the methods proposed so far. Evaluations in a more challenging case with simultaneous speakers ranging from 2 to 7 show that our model achieves 6.4% to 30.9% relative diarization error rate reductions over several typical baselines.

Topics & Concepts

Speaker diarisationComputer scienceSpeaker recognitionSpeech recognitionFrame (networking)DetectorVoice activity detectionConversationResidualRepresentation (politics)ExtractorSpeaker identificationArtificial intelligencePattern recognition (psychology)Speech processingAlgorithmPhilosophyTelecommunicationsPolitical scienceLawEngineeringLinguisticsPoliticsProcess engineeringSpeech Recognition and SynthesisSpeech and Audio ProcessingMusic and Audio Processing