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An Embarrassingly Simple Approach for LLM with Strong ASR Capacity

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In this paper, we focus on solving one of the most important tasks in the field of speech processing, i.e., automatic speech recognition (ASR), with speech foundation encoders and large language models (LLM). Recent works have complex designs such as compressing the output temporally for the speech encoder, tackling modal alignment for the projector, and utilizing parameter-efficient fine-tuning for the LLM. We found that delicate designs are not necessary, while an embarrassingly simple composition of off-the-shelf speech encoder, LLM, and the only trainable linear projector is competent for the ASR task. To be more specific, we benchmark and explore various combinations of LLMs and speech encoders, leading to the optimal LLM-based ASR system, which we call SLAM-ASR. The proposed SLAM-ASR provides a clean setup and little task-specific design, where only the linear projector is trained. To the best of our knowledge, SLAM-ASR achieves the best performance on the Librispeech benchmark among LLM-based ASR models and even outperforms the latest LLM-based audio-universal model trained on massive pair data. Finally, we explore the capability emergence of LLM-based ASR in the process of modal alignment. We hope that our study can facilitate the research on extending LLM with cross-modality capacity and shed light on the LLM-based ASR community.

Ziyang Ma, Guanrou Yang, Yifan Yang, Zhifu Gao, Jiaming Wang, Zhihao Du, Fan Yu, Qian Chen, Siqi Zheng, Shiliang Zhang, Xie Chen• 2024

Related benchmarks

TaskDatasetResultRank
Automatic Speech RecognitionAMI
WER12.79
28
Automatic Speech RecognitionLS Clean
WER2.44
25
Automatic Speech Recognitionkathbath Tamil
WER28.7
20
Automatic Speech RecognitionLS-O
WER4.95
14
Automated Speech RecognitionSlideSpeech Ag
WER14.82
10
Automated Speech RecognitionSlideSpeech MI
WER0.1473
10
Automatic Speech RecognitionCH
WER0.2474
9
Automatic Speech RecognitionCC
WER11.43
9
Automatic Speech Recognitionindictts Hindi
CER7.9
8
Automatic Speech Recognitionfleurs Hindi
CER9.2
8
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