P300-Based Partial Face Recognition With xDAWN Spatial Filter and Covariance Matrix

Ingon Chanpornpakdi, Toshihisa Tanaka
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引用次数: 1

Abstract

Face cognition is one of the most crucial cognition processes in social interaction. In the study of face cognition, rapid serial face cognition (RSVP), the presentation of target and non-target images, is often used to understand the cognition mechanism. When a person perceives the target image, the event-related potential (ERP) is evoked. To identify the target image or the event of interest of a person, the classification model machine learning is introduced. However, the machine learning model that works the best when applied to ERP is still in question. This study aimed to investigate the simplest machine learning model that performs best when comparing six classification models applied to ERP peak evoked during the partial face cognition task. The six models used in this investigation were linear discrimination analysis (LDA), xDAWN filter + linear support vector machine (SVM), xDAWN filter + LightGBM, xDAWN covariance matrix + tangent space + linear SVM, xDAWN covariance matrix + tangent space + LightGBM, and xDAWN covariance matrix + minimum distance to mean (MDM). As a result, we found that the xDAWN covariance matrix improved the classification performance compared to combining the xDAWN filter with the same classification models. In addition, the combination of the xDAWN covariance matrix and MDM provided the best performance in participant-dependent cross-validation. In contrast, the xDAWN covariance matrix, tangent space, and LightGBM provided the most promising performance in the participant-independent cross-validation.
基于p300的xDAWN空间滤波和协方差矩阵部分人脸识别
面孔认知是社会交往中最重要的认知过程之一。在人脸认知研究中,经常使用快速序列人脸认知(RSVP),即目标和非目标图像的呈现来理解人脸的认知机制。当一个人感知到目标图像时,事件相关电位(ERP)被激发。为了识别目标图像或人们感兴趣的事件,引入了分类模型机器学习。然而,机器学习模型在应用于ERP时效果最好仍然存在问题。本研究旨在探讨最简单的机器学习模型,并比较6种分类模型在部分人脸认知任务中诱发的ERP峰的表现。本研究使用的6个模型分别是线性判别分析(LDA)、xDAWN滤波器+线性支持向量机(SVM)、xDAWN滤波器+ LightGBM、xDAWN协方差矩阵+切空间+线性支持向量机、xDAWN协方差矩阵+切空间+ LightGBM和xDAWN协方差矩阵+最小均数距离(MDM)。结果发现,与xDAWN滤波器与相同分类模型相结合相比,xDAWN协方差矩阵提高了分类性能。此外,xDAWN协方差矩阵与MDM的组合在参与者相关交叉验证中表现最佳。相比之下,xDAWN协方差矩阵、切线空间和LightGBM在参与者无关的交叉验证中提供了最有希望的性能。
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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