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Comparison of SVM and ANFIS for Snore Related Sounds Classification by Using the Largest Lyapunov Exponent and Entropy

机译:通过使用最大的Lyapunov指数和熵进行SVM和ANFIS对SVM和ANFIS进行打鼾的声音分类

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摘要

Snoring, which may be decisive for many diseases, is an important indicator especially for sleep disorders. In recent years, many studies have been performed on the snore related sounds (SRSs) due to producing useful results for detection of sleep apnea/hypopnea syndrome (SAHS). The first important step of these studies is the detection of snore from SRSs by using different time and frequency domain features. The SRSs have a complex nature that is originated from several physiological and physical conditions. The nonlinear characteristics of SRSs can be examined with chaos theory methods which are widely used to evaluate the biomedical signals and systems, recently. The aim of this study is to classify the SRSs as snore/breathing/silence by using the largest Lyapunov exponent (LLE) and entropy with multiclass support vector machines (SVMs) and adaptive network fuzzy inference system (ANFIS). Two different experiments were performed for different training and test data sets. Experimental results show that the multiclass SVMs can produce the better classification results than ANFIS with used nonlinear quantities. Additionally, these nonlinear features are carrying meaningful information for classifying SRSs and are able to be used for diagnosis of sleep disorders such as SAHS.
机译:打鼾可能对许多疾病具有决定性,是一个重要的指标,特别是睡眠障碍。近年来,由于为检测睡眠呼吸暂停/缺血综合征(SAH)的检测,对Snore相关声音(SRS)进行了许多研究。这些研究的第一步是通过使用不同的时间和频域特征来检测来自SRS的Snores。 SRSS具有复杂性质,起源于若干生理和物理条件。可以用混沌理论方法检查SRS的非线性特性,这些方法广泛用于评估生物医学信号和系统。本研究的目的是通过使用最大的Lyapunov指数(LLE)和带有多字母支持向量机(SVM)和自适应网络模糊推理系统(ANFI)来将SRS分类为SROS /呼吸/静音。对不同的训练和测试数据集进行了两个不同的实验。实验结果表明,多标量SVMS可以产生比使用非线性数量的ANFIS更好的分类结果。另外,这些非线性特征正在携带有意义的信息来分类SRSS,并且能够用于诊断睡眠障碍,例如SAH。

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