言语异常的分类与分析

J. Nayak , P.S. Bhat , R. Acharya , U.V. Aithal
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引用次数: 40

摘要

语音分析已成为一种流行的非侵入性语言异常评估工具。异常语音的声学性质给出了语音产生系统中异常类型的相关信息。这些信号本质上是非平稳的;可能包含当前疾病的指标,甚至是即将发生疾病的警告。这些指标可以在任何时候出现,也可以在一天的某些时间间隔随机出现。然而,在几个小时收集的大量数据中研究和查明异常是费力和耗时的。因此,基于计算机的分析工具可以在一天的时间间隔内对数据进行深入研究和分类,这在诊断中非常有用。本文用人工神经网络对某些疾病进行分类,并进行分析。这种分析是使用连续小波变换模式进行的。对各种类型的主题进行了详细的讨论,结果表明,本文提出的分类器在准确率的80-85%范围内具有显着的效率。
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Classification and analysis of speech abnormalities

Analysis of speech has become a popular non-invasive tool for assessing the speech abnormalities. Acoustic nature of the abnormal speech gives relevant information about the type of disorder in the speech production system. These signals are essentially non-stationary; may contain indicators of current disease, or even warnings about impending diseases. The indicators may be present at all times or may occur at random — during certain intervals of the day. However, to study and pinpoint abnormalities in voluminous data collected over several hours is strenuous and time consuming. Therefore, computer based analytical tools for in-depth study and classification of data over daylong intervals can be very useful in diagnostics. This paper deals with the classification of certain diseases using artificial neural network, and then analyzed. This analysis is carried out using continuous wavelet transformation patterns. The results for various types of subjects discussed in detail and it is evident that the classifier presented in this paper has a remarkable efficiency in the range of 80–85% of accuracy.

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