Enhancing Large Language Model-based Speech Recognition By Contextualization For Rare And Ambiguous Words
2024 Β· Kento Nozawa, Takashi Masuko, Toru Taniguchi
Abstract
We develop a large language model (LLM) based automatic speech recognition (ASR) system that can be contextualized by providing keywords as prior information in text prompts. We adopt decoder-only architecture and use our in-house LLM, PLaMo-100B, pre-trained from scratch using datasets dominated by Japanese and English texts as the decoder. We adopt a pre-trained Whisper encoder as an audio encoder, and the audio embeddings from the audio encoder are projected to the text embedding space by an adapter layer and concatenated with text embeddings converted from text prompts to form inputs to the decoder. By providing keywords as prior information in the text prompts, we can contextualize our LLM-based ASR system without modifying the model architecture to transcribe ambiguous words in the input audio accurately. Experimental results demonstrate that providing keywords to the decoder can significantly improve the recognition performance of rare and ambiguous words.
Authors
(none)
Tags
Stats
Related papers
- End-to-end Speech Recognition Contextualization With Large Language Models (2023)0.00
- Attention-based Contextual Language Model Adaptation For Speech Recognition (2021)0.00
- Enhancing Speaker Diarization With Large Language Models: A Contextual Beam Search Approach (2023)7.50
- Exploring The Integration Of Large Language Models Into Automatic Speech Recognition Systems: An Empirical Study (2023)8.09
- Large Language Model Can Transcribe Speech In Multi-talker Scenarios With Versatile Instructions (2024)11.23
- Effective Text Adaptation For Llm-based ASR Through Soft Prompt Fine-tuning (2024)5.84
- Multi-stage Large Language Model Correction For Speech Recognition (2023)0.00
- On Decoder-only Architecture For Speech-to-text And Large Language Model Integration (2023)0.00