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Papers/A Hierarchical Context-aware Modeling Approach for Multi-a...

A Hierarchical Context-aware Modeling Approach for Multi-aspect and Multi-granular Pronunciation Assessment

Fu-An Chao, Tien-Hong Lo, Tzu-I Wu, Yao-Ting Sung, Berlin Chen

2023-05-29Automatic Speech RecognitionUtterance-level pronounciation scoringMulti-Task LearningWord-level pronunciation scoringPhone-level pronunciation scoring
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Abstract

Automatic Pronunciation Assessment (APA) plays a vital role in Computer-assisted Pronunciation Training (CAPT) when evaluating a second language (L2) learner's speaking proficiency. However, an apparent downside of most de facto methods is that they parallelize the modeling process throughout different speech granularities without accounting for the hierarchical and local contextual relationships among them. In light of this, a novel hierarchical approach is proposed in this paper for multi-aspect and multi-granular APA. Specifically, we first introduce the notion of sup-phonemes to explore more subtle semantic traits of L2 speakers. Second, a depth-wise separable convolution layer is exploited to better encapsulate the local context cues at the sub-word level. Finally, we use a score-restraint attention pooling mechanism to predict the sentence-level scores and optimize the component models with a multitask learning (MTL) framework. Extensive experiments carried out on a publicly-available benchmark dataset, viz. speechocean762, demonstrate the efficacy of our approach in relation to some cutting-edge baselines.

Results

TaskDatasetMetricValueModel
Pronunciation Assessmentspeechocean762Pearson correlation coefficient (PCC)0.6933MH
Pronunciation Assessmentspeechocean762Pearson correlation coefficient (PCC)0.6943MH
Pronunciation Assessmentspeechocean762Pearson correlation coefficient (PCC)0.8113MH

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