CLAISDASMay 27

Survey of End-to-End Multi-Speaker Automatic Speech Recognition for Monaural Audio

arXiv:2505.1097571.312 citationsh-index: 5
Predicted impact top 88% in CL · last 90 daysOriginality Synthesis-oriented
AI Analysis

For researchers in multi-speaker ASR, this survey offers a comprehensive review and taxonomy of recent end-to-end methods, filling a gap in the literature.

This survey provides a systematic taxonomy of end-to-end neural approaches for monaural multi-speaker ASR, analyzing architectural paradigms, recent improvements, and extensions to long-form speech, with comparative evaluation on standard benchmarks.

Monaural multi-speaker automatic speech recognition (ASR) remains challenging due to data scarcity and the intrinsic difficulty of recognizing and attributing words to individual speakers, particularly in overlapping speech. Recent advances have driven the shift from cascade systems to end-to-end (E2E) architectures, which reduce error propagation and better exploit the synergy between speech content and speaker identity. Despite rapid progress in E2E multi-speaker ASR, the field lacks a comprehensive review of recent developments. This survey provides a systematic taxonomy of E2E neural approaches for multi-speaker ASR, highlighting recent advances and comparative analysis. Specifically, we analyze: (1) architectural paradigms (SIMO vs.~SISO) for pre-segmented audio, analyzing their distinct characteristics and trade-offs; (2) recent architectural and algorithmic improvements based on these two paradigms; (3) extensions to long-form speech, including segmentation strategy and speaker-consistent hypothesis stitching. Further, we (4) evaluate and compare methods across standard benchmarks. We conclude with a discussion of open challenges and future research directions towards building robust and scalable multi-speaker ASR.

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