一种基于随机森林框架的痉挛性发声障碍语音病理检测新算法

G. Murthy, V. Iswarya, K. R. Sri, K. Harshitha, Ch. Prasanth
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引用次数: 1

摘要

痉挛性语音障碍是一种罕见的语音障碍,在目前的工作中使用随机森林框架来检测。语音病理与影响语音质量的声道区域有关。多年来,许多声音病理都被忽视了,因为症状并不明显。即使症状是已知的,但由于症状的重叠性,这种疾病的性质很难确定。现有的语音病理检测算法能够对正常受试者和受影响受试者进行分类,而本文提出的算法考虑了疾病的性质。由于结合了在非重叠帧上估计的有限重要能量特征,因此降低了计算复杂度。100棵树的分类精度为93.5。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Algorithm for Detecting Spasmodic Dysphonia Voice Pathology using Random Forest Frame Work
Spasmodic dysphonia, a rare voice disorder is detected in the current work using Random Forest frame work. Voice pathology is related to the vocal tract area affecting the quality of speech. Numerous voice pathologies have been over the years of them are unnoticed as the symptoms are not significant. Even the symptoms are known the nature of the disorder is difficult to identify due to the over lapping nature of the symptoms. The existing algorithms for voice pathology detection are capable of classifying between normal and affected subjects, while the nature of the disorder has been considered in the proposed algorithm. Computational complexity has been reduced due to the incorporation of finite significant energy features estimated over non overlapping frames. Classification of accuracy of 93.5 has been seen with a population of 100 trees.
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