ASCLSDJul 9, 2022

Internal Language Model Estimation based Language Model Fusion for Cross-Domain Code-Switching Speech Recognition

arXiv:2207.04176v111 citationsh-index: 44
Originality Synthesis-oriented
AI Analysis

This work addresses speech recognition for code-switching scenarios, which is incremental as it extends an existing method to a new domain.

The paper tackled cross-domain code-switching speech recognition by applying Internal Language Model Estimation-based language model fusion, showing improved recognition results on datasets like SEAME and a Chinese Mainland set.

Internal Language Model Estimation (ILME) based language model (LM) fusion has been shown significantly improved recognition results over conventional shallow fusion in both intra-domain and cross-domain speech recognition tasks. In this paper, we attempt to apply our ILME method to cross-domain code-switching speech recognition (CSSR) work. Specifically, our curiosity comes from several aspects. First, we are curious about how effective the ILME-based LM fusion is for both intra-domain and cross-domain CSSR tasks. We verify this with or without merging two code-switching domains. More importantly, we train an end-to-end (E2E) speech recognition model by means of merging two monolingual data sets and observe the efficacy of the proposed ILME-based LM fusion for CSSR. Experimental results on SEAME that is from Southeast Asian and another Chinese Mainland CS data set demonstrate the effectiveness of the proposed ILME-based LM fusion method.

Foundations

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