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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >An improved method for voice pathology detection by means of a HMM-based feature space transformation
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An improved method for voice pathology detection by means of a HMM-based feature space transformation

机译:一种基于HMM的特征空间变换的语音病理检测方法

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摘要

This paper presents new a feature transformation technique applied to improve the screening accuracy for the automatic detection of pathological voices. The statistical transformation is based on Hidden Markov Models, obtaining a transformation and classification stage simultaneously and adjusting the parameters of the model with a criterion that minimizes the classification error. The original feature vectors are built up using classic short-term noise parameters and mel-frequency cepstral coefficients. With respect to conventional approaches found in the literature of automatic detection of pathological voices, the proposed feature space transformation technique demonstrates a significant improvement of the performance with no addition of new features to the original input space. In view of the results, it is expected that this technique could provide good results in other areas such as speaker verification and/or identification.
机译:本文提出了一种新的特征转换技术,该技术用于提高对病理性语音的自动检测的筛选精度。统计转换基于隐马尔可夫模型,同时获得转换和分类阶段,并使用最小化分类误差的标准调整模型的参数。原始特征向量是使用经典的短期噪声参数和梅尔频率倒谱系数建立的。关于在病理语音的自动检测的文献中发现的常规方法,所提出的特征空间变换技术证明了性能的显着改善,而没有向原始输入空间添加新的特征。考虑到结果,期望该技术可以在诸如说话者验证和/或识别之类的其他领域中提供良好的结果。

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