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Exploration of Whisper fine-tuning strategies for low-resource ASR

Yunpeng Liu, Xukui Yang, Dan Qu

2024EURASIP Journal on Audio Speech and Music Processing30 citationsDOIOpen Access PDF

Abstract

Abstract Limited data availability remains a significant challenge for Whisper’s low-resource speech recognition performance, falling short of practical application requirements. While previous studies have successfully reduced the recognition error rates of target language speech through fine-tuning, a comprehensive exploration and analysis of Whisper’s fine-tuning capabilities and the advantages and disadvantages of various fine-tuning strategies are still lacking. This paper aims to fill this gap by conducting comprehensive experimental exploration for Whisper’s low-resource speech recognition performance using five fine-tuning strategies with limited supervised data from seven low-resource languages. The results and analysis demonstrate that all fine-tuning strategies explored in this paper significantly enhance Whisper’s performance. However, different strategies vary in their suitability and practical effectiveness, highlighting the need for careful selection based on specific use cases and resources available.

Topics & Concepts

Computer scienceFine-tuningResource (disambiguation)PhysicsComputer networkQuantum mechanicsSpeech Recognition and SynthesisNetwork Security and Intrusion DetectionNetwork Packet Processing and Optimization
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