基于fNIRS和DBJNet的跨主体情绪识别脑机接口。

IF 10.5 Q1 ENGINEERING, BIOMEDICAL Cyborg and bionic systems (Washington, D.C.) Pub Date : 2023-01-01 DOI:10.34133/cbsystems.0045
Xiaopeng Si, Huang He, Jiayue Yu, Dong Ming
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引用次数: 1

摘要

功能近红外光谱(fNIRS)是一种无创脑成像技术,因其空间分辨率高、实时性好、使用方便等优点,已逐渐应用于情绪识别研究。然而,目前基于近红外光谱的情绪识别研究主要局限于受试者内部,缺乏跨受试者情绪识别的相关研究。为此,我们设计了一个以视频为刺激的情绪唤起实验,并构建了fNIRS情绪识别数据库。在此基础上,首次引入深度学习技术,构建双分支联合网络(DBJNet),使模型能够推广到新的参与者。该模型获得的解码性能表明,fNIRS能够有效区分积极、中性和消极情绪(准确率为74.8%,F1得分为72.9%),在区分积极、中性和消极、中性两类情绪识别任务(准确率为89.5%,F1得分为88.3%)和消极、中性(准确率为91.7%,F1得分为91.1%)上的解码性能证明了fNIRS具有强大的情绪解码能力。此外,模型结构的消蚀研究结果表明,联合卷积神经网络分支和统计分支的解码性能最高。本文的工作有望促进近红外光谱情感脑机接口的发展。
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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Cross-Subject Emotion Recognition Brain-Computer Interface Based on fNIRS and DBJNet.

Functional near-infrared spectroscopy (fNIRS) is a noninvasive brain imaging technique that has gradually been applied in emotion recognition research due to its advantages of high spatial resolution, real time, and convenience. However, the current research on emotion recognition based on fNIRS is mainly limited to within-subject, and there is a lack of related work on emotion recognition across subjects. Therefore, in this paper, we designed an emotion evoking experiment with videos as stimuli and constructed the fNIRS emotion recognition database. On this basis, deep learning technology was introduced for the first time, and a dual-branch joint network (DBJNet) was constructed, creating the ability to generalize the model to new participants. The decoding performance obtained by the proposed model shows that fNIRS can effectively distinguish positive versus neutral versus negative emotions (accuracy is 74.8%, F1 score is 72.9%), and the decoding performance on the 2-category emotion recognition task of distinguishing positive versus neutral (accuracy is 89.5%, F1 score is 88.3%), negative versus neutral (accuracy is 91.7%, F1 score is 91.1%) proved fNIRS has a powerful ability to decode emotions. Furthermore, the results of the ablation study of the model structure demonstrate that the joint convolutional neural network branch and the statistical branch achieve the highest decoding performance. The work in this paper is expected to facilitate the development of fNIRS affective brain-computer interface.

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CiteScore
7.70
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审稿时长
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