Speech Recognition for Functional Decline assessment in older adults

Dona Elisa Bou Zeidan, Abir Noun, Mohamad Nassereddine, Jamal Charara, A. Chkeir
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Abstract

Functional decline is one of the serious syndromes experienced among older adults. Its early assessment is critical to preventing its symptoms. Some Comprehensive Geriatric Assessment CGA questionnaires, chosen amongst others, can be performed as in-home self-assessments by older adults using QuestIO, a device based on automatic speech recognition ASR. This paper investigates the performance of the ASR on English Isolated words while using different features; Mel Frequency Cepstral Coefficient (MFCC), Relative spectra-perceptual linear prediction (RASTA-PLP), Perceptual linear prediction (PLP), Linear Prediction Cepstral Coefficients (LPCCs) or a combination of these, and the random forest classifier, to select the features that give the best performance. The performance was obtained based on the word recognition rate WRR and the real-time factor RTF. As a result, we selected the MFCC and RASTA-PLP cepstral coefficients. The WRR reached for these features is 96.57% with an RTF of 11×10-4.
语音识别在老年人功能衰退评估中的应用
功能衰退是老年人经历的严重综合征之一。早期评估对预防其症状至关重要。一些综合老年评估(Comprehensive Geriatric Assessment,简称CGA)问卷可以由老年人使用QuestIO(一种基于自动语音识别ASR的设备)在家中进行自我评估。本文研究了不同特征对英语孤立词的自动语音识别性能的影响;Mel频率倒谱系数(MFCC),相对频谱感知线性预测(RASTA-PLP),感知线性预测(PLP),线性预测倒谱系数(LPCCs)或这些的组合,以及随机森林分类器,以选择提供最佳性能的特征。该性能是基于单词识别率WRR和实时因子RTF来获得的。因此,我们选择了MFCC和RASTA-PLP倒谱系数。这些特征的WRR为96.57%,RTF为11×10-4。
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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