Exploring sustained phonation recorded with acoustic and contact microphones to screen for laryngeal disorders

A. Gelzinis, A. Verikas, E. Vaičiukynas, M. Bacauskiene, J. Minelga, M. Hållander, V. Uloza, E. Padervinskis
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引用次数: 9

Abstract

Exploration of various features and different structures of data dependent random forests in screening for laryngeal disorders through analysis of sustained phonation recorded by acoustic and contact microphones is the main objective of this study. To obtain a versatile characterization of voice samples, 14 different sets of features were extracted and used to build an accurate classifier to distinguish between normal and pathological cases. We proposed a new, data dependent random forest-based, way to combine information available from the different feature sets. An approach to exploring data and decisions made by a random forest was also presented. Experimental investigations using a mixed gender database of 273 subjects have shown that the Perceptual linear predictive cepstral coefficients (PLPCC) was the best feature set for both microphones. However, the LP-coefficients and LPCT-coefficients feature sets exhibited good performance in the acoustic microphone case only. Models designed using the acoustic microphone data significantly outperformed the ones built using data recorded by the contact microphone. The contact microphone did not bring any additional information useful for classification. The proposed data dependent random forest significantly outperformed traditional designs.
探索用声学和接触式麦克风记录的持续发声以筛查喉部疾病
通过分析声学和接触式麦克风记录的持续发声,探索数据依赖随机森林在喉部疾病筛查中的各种特征和不同结构是本研究的主要目的。为了获得语音样本的通用特征,提取了14种不同的特征集,并用于构建准确的分类器来区分正常和病理病例。我们提出了一种新的、基于数据依赖的随机森林的方法来组合来自不同特征集的信息。提出了一种探索随机森林数据和决策的方法。在273名受试者的混合性别数据库中进行的实验研究表明,感知线性预测倒谱系数(PLPCC)是两种麦克风的最佳特征集。然而,lp -系数和lpct -系数特征集仅在声学麦克风情况下表现出良好的性能。使用声学麦克风数据设计的模型明显优于使用接触式麦克风记录的数据构建的模型。接触式麦克风没有带来任何对分类有用的额外信息。所提出的数据依赖随机森林显著优于传统设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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