Madhu Keerthana Yagnavajjula , Kiran Reddy Mittapalle , Paavo Alku , Sreenivasa Rao K. , Pabitra Mitra
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引用次数: 0
Abstract
Neurological voice disorders are caused by problems in the nervous system as it interacts with the larynx. In this paper, we propose to use wavelet scattering transform (WST)-based features in automatic classification of neurological voice disorders. As a part of WST, a speech signal is processed in stages with each stage consisting of three operations – convolution, modulus and averaging – to generate low-variance data representations that preserve discriminability across classes while minimizing differences within a class. The proposed WST-based features were extracted from speech signals of patients suffering from either spasmodic dysphonia (SD) or recurrent laryngeal nerve palsy (RLNP) and from speech signals of healthy speakers of the Saarbruecken voice disorder (SVD) database. Two machine learning algorithms (support vector machine (SVM) and feed forward neural network (NN)) were trained separately using the WST-based features, to perform two binary classification tasks (healthy vs. SD and healthy vs. RLNP) and one multi-class classification task (healthy vs. SD vs. RLNP). The results show that WST-based features outperformed state-of-the-art features in all three tasks. Furthermore, the best overall classification performance was achieved by the NN classifier trained using WST-based features.
神经性嗓音疾病是由于神经系统与喉部相互作用时出现问题而造成的。在本文中,我们建议在神经性嗓音疾病的自动分类中使用基于小波散射变换(WST)的特征。作为小波散射变换的一部分,语音信号会被分阶段处理,每个阶段包括三次运算--卷积、模数和平均,以生成低方差数据表示,从而保持不同类别之间的可区分性,同时最大限度地减少类别内的差异。所提出的基于 WST 的特征是从痉挛性发音障碍(SD)或喉返神经麻痹(RLNP)患者的语音信号以及萨尔布吕肯语音障碍(SVD)数据库中健康说话者的语音信号中提取的。使用基于 WST 的特征分别训练了两种机器学习算法(支持向量机 (SVM) 和前馈神经网络 (NN)),以完成两项二元分类任务(健康 vs. SD 和健康 vs. RLNP)和一项多类分类任务(健康 vs. SD vs. RLNP)。结果表明,在所有三个任务中,基于 WST 的特征都优于最先进的特征。此外,使用基于 WST 特征训练的 NN 分类器取得了最佳的整体分类性能。
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.