Whisper Has an Internal Word Aligner
Reviewed by Pithpith:VWINZ6JDopen to challenge →
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There is an increasing interest in obtaining accurate word-level timestamps from strong automatic speech recognizers, in particular Whisper. Existing approaches either require additional training or are simply not competitive. The evaluation in prior work is also relatively loose, typically using a tolerance of more than 200 ms. In this work, we discover attention heads in Whisper that capture accurate word alignments and are distinctively different from those that do not. Moreover, we find that using characters produces finer and more accurate alignments than using wordpieces. Based on these findings, we propose an unsupervised approach to extracting word alignments by filtering attention heads while teacher forcing Whisper with characters. Our approach not only does not require training but also produces word alignments that are more accurate than prior work under a stricter tolerance between 20 ms and 100 ms.
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Forward citations
Cited by 3 Pith papers
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REDDIT corrects non-speech-induced timestamp drift in autoregressive ASR by editing timestamp targets under cached replay context while anchoring non-timestamp behavior to the frozen base distribution.
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Word-level modeling with alignment-aware acoustic fusion on a frozen Whisper model improves text-assisted intelligibility prediction metrics on the CPC3 evaluation set.
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Prompting Whisper for Joint Speech Transcription and Diarization
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