基于SVD和MEEI数据库的声门流动参数语音病理检测研究

Kadria Ezzine, M. Frikha
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引用次数: 11

摘要

本文在两个不同的数据库中研究了声门流动特征在语音病理检测中的表现,特别是初发肿瘤和恶性肿瘤的检测。近年来,声门特征在模式识别中得到了广泛的应用。这项工作的目的是找出最相关的声门流动特征,以检测声音障碍与正常声音。为了选择判别特征,本文采用了两种不同的选择方法。实验分别使用美国和德国两种不同的数据库“MEEI”和“SVD”进行。这些数据库包括男性和女性说话者的正常和病理话语。在分类任务中只使用了持续性元音/a/。采用人工神经元网络(ANN)和支持向量机(SVM)对正常-病理语音进行分类。实验结果表明,不同数据库的声门特征在性能上存在明显差异。所选择的顶级特征也因数据库而异。使用支持向量机分类器有很高的准确率,但与使用人工神经网络获得的准确率相比,它仍然不那么重要。SVD和MEEI数据库的最佳分类率分别为99.27%和93.66%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigation of glottal flow parameters for voice pathology detection on SVD and MEEI databases
This paper investigated the performance of glottal flow features for the voice pathology detection particularly begnin and malignant tumors in two distinct databases. Glottal features have been widely used over the last years in pattern recognition process. The purpose of this work was to find out the most relevant glottal flow features for detecting voice disorders from normal ones. In order to choose the discriminative features, two different selection measures were applied in this work. The experiments were carried out using two different databases, “MEEI” and “SVD”, American and German databases, respectively. These databases included normal and pathalogical utterances pronounced by male and female speakers. Only the sustained vowel /a/ was used in classification task. Artificial Neuron Network (ANN) and Support Vector Machines (SVM) were used to perform the classification of normal-pathological voice. The experimental results prove that there is clear difference in performance of these glottal features independently of the used databases. The top-features selected were also varied from one database to another. There is a high accuracies using the SVM classifier, but it remains less important compared to those obtained using the ANN. The best classification rates achieved are 99.27% and 93.66% for SVD and MEEI databases, respectively.
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