CLLGSDASSep 29, 2021

FastCorrect 2: Fast Error Correction on Multiple Candidates for Automatic Speech Recognition

arXiv:2109.14420v4665 citations
Originality Incremental advance
AI Analysis

This work addresses error correction for ASR systems, offering a unified post-processing module that improves accuracy, though it is incremental as it builds on prior error correction methods.

The paper tackles the problem of error correction in automatic speech recognition (ASR) by proposing FastCorrect 2, a model that processes multiple ASR candidates to leverage voting effects, resulting in a reduction of word error rate (WER) by 3.2% and 2.6% over previous single-candidate models on in-house and AISHELL-1 datasets.

Error correction is widely used in automatic speech recognition (ASR) to post-process the generated sentence, and can further reduce the word error rate (WER). Although multiple candidates are generated by an ASR system through beam search, current error correction approaches can only correct one sentence at a time, failing to leverage the voting effect from multiple candidates to better detect and correct error tokens. In this work, we propose FastCorrect 2, an error correction model that takes multiple ASR candidates as input for better correction accuracy. FastCorrect 2 adopts non-autoregressive generation for fast inference, which consists of an encoder that processes multiple source sentences and a decoder that generates the target sentence in parallel from the adjusted source sentence, where the adjustment is based on the predicted duration of each source token. However, there are some issues when handling multiple source sentences. First, it is non-trivial to leverage the voting effect from multiple source sentences since they usually vary in length. Thus, we propose a novel alignment algorithm to maximize the degree of token alignment among multiple sentences in terms of token and pronunciation similarity. Second, the decoder can only take one adjusted source sentence as input, while there are multiple source sentences. Thus, we develop a candidate predictor to detect the most suitable candidate for the decoder. Experiments on our inhouse dataset and AISHELL-1 show that FastCorrect 2 can further reduce the WER over the previous correction model with single candidate by 3.2% and 2.6%, demonstrating the effectiveness of leveraging multiple candidates in ASR error correction. FastCorrect 2 achieves better performance than the cascaded re-scoring and correction pipeline and can serve as a unified post-processing module for ASR.

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