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Automated Dysarthria Severity Classification for Improved Objective Intelligibility Assessment of Spastic Dysarthric Speech

机译:自动化讨厌的严重性分类,了解痉挛性发育性言论的改进客观智能评估

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In this paper, automatic dysarthria severity classification is explored as a tool to advance objective intelligibility prediction of spastic dysarthric speech. A Mahalanobis distance-based discriminant analysis classifier is developed based on a set of acoustic features formerly proposed for intelligibility prediction and voice pathology assessment. Feature selection is used to sift salient features for both the disorder severity classification and intelligibility prediction tasks. Experimental results show that a two-level severity classifier combined with a 9-dimensional intelligibility prediction mapping can achieve 0.92 correlation and 12.52 root-mean-square error with subjective intelligibility ratings. The effects of classification errors on intelligibility accuracy are also explored and shown to be insignificant.
机译:本文探讨了自动演出严重性分类,作为推进痉挛性发育性言论的客观可懂度预测的工具。基于一组用于可懂度预测和语音病理学评估的一组声学特征开发了一种基于Mahalanobis距离的判别分析。特征选择用于筛选疾病严重性分类和可懂度预测任务的突出特征。实验结果表明,两级严重性分类器与9维可懂度预测映射相结合,可以实现0.92个相关性和具有主观可懂度级别的12.52根均方误差。还探讨了分类误差对可懂度准确性的影响,并显示出微不足道。

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