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Better Pseudo-labeling with Multi-ASR Fusion and Error Correction by SpeechLLM

Better Pseudo-labeling with Multi-ASR Fusion and Error Correction by SpeechLLM

来源:Arxiv_logoArxiv
英文摘要

Automatic speech recognition (ASR) models rely on high-quality transcribed data for effective training. Generating pseudo-labels for large unlabeled audio datasets often relies on complex pipelines that combine multiple ASR outputs through multi-stage processing, leading to error propagation, information loss and disjoint optimization. We propose a unified multi-ASR prompt-driven framework using postprocessing by either textual or speech-based large language models (LLMs), replacing voting or other arbitration logic for reconciling the ensemble outputs. We perform a comparative study of multiple architectures with and without LLMs, showing significant improvements in transcription accuracy compared to traditional methods. Furthermore, we use the pseudo-labels generated by the various approaches to train semi-supervised ASR models for different datasets, again showing improved performance with textual and speechLLM transcriptions compared to baselines.

Jeena Prakash、Blessingh Kumar、Kadri Hacioglu、Bidisha Sharma、Sindhuja Gopalan、Malolan Chetlur、Shankar Venkatesan、Andreas Stolcke

计算技术、计算机技术

Jeena Prakash,Blessingh Kumar,Kadri Hacioglu,Bidisha Sharma,Sindhuja Gopalan,Malolan Chetlur,Shankar Venkatesan,Andreas Stolcke.Better Pseudo-labeling with Multi-ASR Fusion and Error Correction by SpeechLLM[EB/OL].(2025-06-05)[2025-07-16].https://arxiv.org/abs/2506.11089.点此复制

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