EF-CorrCA: A multi-modal EEG-fNIRS subject independent model to assess speech quality on brain activity using correlated component analysis

IF 1.2 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Cognitive Computation and Systems Pub Date : 2024-07-15 DOI:10.1049/ccs2.12111
Djimeli Tsamene Charly, Mathias Onabid
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Abstract

An investigation on the effect of mental activity in quality perception is presented using simultaneous measurement of electroencephalography (EEG) and functional near-infrared spectroscopy (fNIRS), in a subject-independent approach. Building a subject-independent model is a harder problem due to noise and high EEG variability between individuals, correlated components analysis (CorrCA) have been proposed to extract significant correlated components for a single subject that experiences multiple identical trials; this is done by identifying spatio-temporal patterns of activity that are well preserved across trials. The aim is to build a model based on neurophysiological data to assess text-to-speech quality. In order to build a subject independent model, we extended the use of CorrCA such that it can be applied to the subject independent model. The authors used two preprocessing steps, namely the subject dependent and the stimulus dependent preprocessing. The second preprocessing used the denoising source separation (DSS) to remove noise/artefact that are subject specific. The discrete convolution is used for data fusion and the support vector machine for regression. With the proposed model, the fusion of EEG and fNIRS performs better than single modality. Using our defined regression accuracy metrics, the authors obtained accuracy of 81.346% for overall impression, 83.28% for valence and 89.714% for arousal. The model compete the baseline that is subject dependent.

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EF-CorrCA:利用相关成分分析评估大脑活动语音质量的多模态脑电图-非红外传感器受试者独立模型
本研究采用与受试者无关的方法,通过同时测量脑电图(EEG)和功能性近红外光谱(fNIRS),对心理活动对质量感知的影响进行了研究。由于噪声和个体间脑电图的高变异性,建立一个与主体无关的模型是一个较难解决的问题,相关成分分析(CorrCA)已被提出,用于提取经历多次相同试验的单个主体的重要相关成分;这是通过识别在不同试验中保持良好的时空活动模式来实现的。我们的目标是建立一个基于神经生理学数据的模型,以评估文本到语音的质量。为了建立独立于受试者的模型,我们扩展了 CorrCA 的使用范围,使其可以应用于独立于受试者的模型。作者使用了两个预处理步骤,即与主体相关的预处理和与刺激相关的预处理。第二个预处理步骤使用去噪源分离(DSS)来去除主体特定的噪音/人工痕迹。离散卷积用于数据融合,支持向量机用于回归。利用所提出的模型,脑电图和 fNIRS 的融合效果优于单一模式。使用我们定义的回归准确度指标,作者获得的总体印象准确度为 81.346%,情绪准确度为 83.28%,唤醒准确度为 89.714%。该模型竞争的基线与受试者有关。
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来源期刊
Cognitive Computation and Systems
Cognitive Computation and Systems Computer Science-Computer Science Applications
CiteScore
2.50
自引率
0.00%
发文量
39
审稿时长
10 weeks
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