Pronunciation error detection model based on feature fusion

IF 2.4 3区 计算机科学 Q2 ACOUSTICS
Cuicui Zhu , Aishan Wumaier , Dongping Wei , Zhixing Fan , Jianlei Yang , Heng Yu , Zaokere Kadeer , Liejun Wang
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引用次数: 0

Abstract

Mispronunciation detection and diagnosis (MDD) is a specific speech recognition task that aims to recognize the phoneme sequence produced by a user, compare it with the standard phoneme sequence, and identify the type and location of any mispronunciations. However, the lack of large amounts of phoneme-level annotated data limits the performance improvement of the model. In this paper, we propose a joint training approach, Acoustic Error_Type Linguistic (AEL) that utilizes the error type information, acoustic information, and linguistic information from the annotated data, and achieves feature fusion through multiple attention mechanisms. To address the issue of uneven distribution of phonemes in the MDD data, which can cause the model to make overconfident predictions when using the CTC loss, we propose a new loss function, Focal Attention Loss, to improve the performance of the model, such as F1 score accuracy and other metrics. The proposed method in this paper was evaluated on the TIMIT and L2-Arctic public corpora. In ideal conditions, it was compared with the baseline model CNN-RNN-CTC. The F1 score, diagnostic accuracy, and precision were improved by 31.24%, 16.6%, and 17.35% respectively. Compared to the baseline model, our model reduced the phoneme error rate from 29.55% to 8.49% and showed significant improvements in other metrics. Furthermore, experimental results demonstrated that when we have a model capable of accurately obtaining pronunciation error types, our model can achieve results close to the ideal conditions.

基于特征融合的发音错误检测模型
发音错误检测与诊断(MDD)是一项特定的语音识别任务,其目的是识别用户产生的音素序列,并将其与标准音素序列进行比较,识别任何发音错误的类型和位置。然而,由于缺乏大量的音素级标注数据,限制了模型性能的提高。本文提出了一种联合训练方法Acoustic Error_Type Linguistic(AEL),该方法利用标注数据中的错误类型信息、声学信息和语言信息,通过多注意机制实现特征融合。为了解决MDD数据中音素分布不均匀的问题,这可能导致模型在使用CTC损失时做出过度自信的预测,我们提出了一个新的损失函数Focal Attention loss,以提高模型的性能,如F1分数准确性和其他指标。本文提出的方法在TIMIT和L2-Arctic公共语料库上进行了评估。在理想条件下,与基线模型CNN-RNN-CTC进行比较。F1评分、诊断正确率和精密度分别提高31.24%、16.6%和17.35%。与基线模型相比,我们的模型将音素错误率从29.55%降低到8.49%,并且在其他指标上有显着改善。此外,实验结果表明,当我们有一个能够准确获取发音错误类型的模型时,我们的模型可以达到接近理想条件的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Speech Communication
Speech Communication 工程技术-计算机:跨学科应用
CiteScore
6.80
自引率
6.20%
发文量
94
审稿时长
19.2 weeks
期刊介绍: Speech Communication is an interdisciplinary journal whose primary objective is to fulfil the need for the rapid dissemination and thorough discussion of basic and applied research results. The journal''s primary objectives are: • to present a forum for the advancement of human and human-machine speech communication science; • to stimulate cross-fertilization between different fields of this domain; • to contribute towards the rapid and wide diffusion of scientifically sound contributions in this domain.
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