Stuttering Disfluency Detection Using Machine Learning Approaches

Abedal-Kareem Al-Banna, E. Edirisinghe, H. Fang, W. Hadi
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引用次数: 2

Abstract

Stuttering is a neurodevelopmental speech disorder wherein people suffer from disfluency in speech generation. Recent research has applied machine learning and deep learning approaches to stuttering disfluency recognition and classification. However, these studies have focussed on small datasets, generated by a limited number of speakers and within specific tasks, such as reading. This paper rigorously investigates the effective use of eight well-known machine learning classifiers, on two publicly available datasets (FluencyBank and SEP-28k) to automatically detect stuttering disfluency using multiple objective metrics, i.e. prediction accuracy, recall, precision, F1-score, and AUC measures. Our experimental results on the two datasets show that the Random Forest classifier achieves the best performance, with an accuracy of 50.3% and 50.35%, a recall of 50% and 42%, a precision of 42% and 46%, and an F1 score of 42% and 34%, against the FluencyBank and SEP-28K datasets, respectively. Moreover, we show that the machine learning-based approaches may not be effective in accurate stuttering disfluency evaluation, due to diverse variations in speech rate, and differences in vocal tracts between children and adults. We argue that the use of deep learning approaches and Automatic Speech Recognition (ASR) with language models may improve outcomes, specifically for large scale and imbalanced datasets.
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使用机器学习方法检测口吃障碍
口吃是一种神经发育性语言障碍,患者在言语产生方面存在障碍。最近的研究将机器学习和深度学习方法应用于口吃不流利的识别和分类。然而,这些研究都集中在小数据集上,这些数据集是由有限数量的说话者和特定任务(如阅读)生成的。本文严格研究了八个知名机器学习分类器在两个公开可用数据集(FluencyBank和SEP-28k)上的有效使用,以使用多个客观指标(即预测准确性,召回率,精度,f1分数和AUC度量)自动检测口吃不流利。我们在两个数据集上的实验结果表明,Random Forest分类器在FluencyBank和SEP-28K数据集上的准确率分别为50.3%和50.35%,召回率分别为50%和42%,精度分别为42%和46%,F1分数分别为42%和34%。此外,我们发现基于机器学习的方法在准确的口吃不流畅评估中可能并不有效,这是由于儿童和成人在言语速率和声道上的差异。我们认为,深度学习方法和自动语音识别(ASR)与语言模型的使用可能会改善结果,特别是对于大规模和不平衡的数据集。
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