情绪识别
心理学
脑电图
认知心理学
意识
面部识别系统
情绪分类
机器学习
水准点(测量)
领域(数学)
计算机科学
面部表情
特征提取
持续植物状态
深度学习
情绪检测
人工智能
情感计算
大脑活动与冥想
临床实习
面子(社会学概念)
厌恶
传感器融合
神经影像学
心理信息
数据质量
模式识别(心理学)
作者
Zongnan Chen,Yulan Liang,Jingcong Li,Chenyu Bai,Qiuyou Xie,Jiahui Pan
标识
DOI:10.1109/taffc.2025.3650482
摘要
In the field of Disorders of Consciousness (DoC), traditional diagnostic methods often struggle with high misdiagnosis rates and lack the sensitivity needed to discern subtle emotional responses, necessitating more accurate and comprehensive assessment tools. Current emotion recognition techniques, primarily using single-modality data such as electroencephalography (EEG) or facial expressions, fail to capture the complex interplay of emotional states in patients with DoC, leading to incomplete assessments. To address these challenges, this study proposes a novel multimodal fusion framework that integrates heterogeneous EEG and micro-expression data through an innovative spatio-temporal attention mechanism. This approach significantly enhances the detection and classification of emotional states by leveraging differential entropy features from EEG and temporal features from micro-expressions, fused using deep learning techniques. The proposed method not only achieves mainstream models in terms of accuracy but also demonstrates potential for broad application in medical diagnostics, providing a basis for more personalized patient care and opening avenues for future research in clinical practice settings. We found that two patients had significantly better indicators than the others, indicating better brain activity levels and outcomes in these two patients, which is also consistent with the clinical results one month after the experiment. By effectively merging data from multiple sources, our study sets a new benchmark for emotion recognition in DoC, contributing to more accurate clinical assessments and enhancing the quality of life for affected patients.
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