基于自编码器的新型无监督特征提取协议:在帕金森病分类中的应用

Sai Bharadwaj Appakaya, R. Sankar, E. Sheybani
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引用次数: 2

摘要

由于易于获取和获得已建立的研究协议,语音处理已经对医疗保健中的远程监控和分类应用产生了实质性的研究兴趣。这一日益增长的研究兴趣在处理帕金森言语监测和分类应用方面取得了重大进展。该研究领域的相当一部分研究侧重于开发使用可穿戴或移动设备进行被动数据收集的自动远程监控协议。这些研究大多集中在使用持续元音发音和手工制作的特征来训练分类器。尽管一些研究人员认为连接/运行语音更适合此应用程序,但主要由于处理复杂性,研究较少关注它。本研究的重点是使用连接语音与音高同步分割和卷积自编码器从常规和高级频谱图中提取特征。谱图是用基音同步和块处理创建的,在本研究中对分割进行了评估。该方法还旨在通过使用标准化的TIMIT数据集来训练自动编码器,从而绕过数据可用性问题。使用逻辑回归和线性支持向量机,我们利用自编码器的特征实现了85%的分类准确率。在遗漏一个受试者(LOSO)分类下获得的平均准确率为84%,表明对全新数据的性能可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novel Unsupervised Feature Extraction Protocol using Autoencoders for Connected Speech: Application in Parkinson's Disease Classification
Speech processing has generated substantial research interest for telemonitoring and classification applications in healthcare due to the ease of acquisition and availability of established research protocols. This growing research interest has shown significant progress in processing Parkinsonian speech for monitoring and classification applications. A considerable portion of the studies in this research area focuses on developing automatic telemonitoring protocols with passive data collection using wearable or mobile devices. Most of these studies focus on using sustained vowel phonations and handcrafted features for training classifiers. Though some researchers suggest better suitability of connected/running speech for this application, fewer studies focus on it predominantly because of the processing complexity. This study focuses on using connected speech with pitch synchronous segmentation and convolutional Autoencoders for feature extraction from regular and advanced spectrograms. The spectrograms were created using pitch synchronous and block processing segmentations have been evaluated in this study. This methodology also aims to bypass data availability issues by using standardized TIMIT dataset for training Autoencoders. With Logistic regression and Linear SVM, we achieved 85% classification accuracy using the features from Autoencoders. Mean accuracy of 84% was obtained under leave one subject out (LOSO) classification indicating the performance reliability for entirely new data.
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