Facial Emotion Recognition Based on Brain and Machine Collaborative Intelligence

Wenfen Ling, Wanzeng Kong, Yanfang Long, Can Yang, Xuanyu Jin
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引用次数: 1

Abstract

Facial emotion is an important way for humans to convey the feeling and feed back to others. It is also a key component of human-computer interaction systems(HCISs). Naturally, facial emotion recognition(FER) has become a hot topic of current research. At present, the methods of FER typically rely on vision, using computer technology to extract visual features from face images. However, these features are derived from data-driven models, lacking the cognitive minds from the brain, so the recognition performance is not ideal in some cases. Factually, EEG features evoked by facial emotion images have high-level representations of emotion and good discrimination. For this, we propose a novel brain-machine collaborative method for FER. Firstly, EEG emotional features are extracted from the EEG signals collected when people observe emotion images. Secondly, the image visual features are extracted from the original facial emotion images. Thirdly, a regression model is used to find a mapping relationship between these two features in training stage. Finally, the EEG-like features predicted by pre-trained regression model are used in the test set to identify emotions. This method has been verified on CFAPS and found that the average recognition accuracy of the seven emotions is 88.28%, which is better than the simple image-based method.
基于脑机协同智能的面部情绪识别
面部表情是人类表达情感并反馈给他人的重要方式。它也是人机交互系统(HCISs)的关键组成部分。面部情绪识别自然成为当前研究的热点。目前,人脸识别方法主要依赖于视觉,利用计算机技术从人脸图像中提取视觉特征。然而,这些特征来源于数据驱动的模型,缺乏来自大脑的认知思维,因此在某些情况下识别性能并不理想。事实上,面部情绪图像诱发的脑电图特征具有较高的情绪表征和较好的识别能力。为此,我们提出了一种新的脑机协同方法。首先,从人们观察情绪图像时采集的脑电信号中提取EEG情绪特征;其次,从原始面部情感图像中提取图像视觉特征;第三,在训练阶段,使用回归模型找到这两个特征之间的映射关系。最后,利用预训练回归模型预测的类脑电图特征在测试集中进行情绪识别。该方法在CFAPS上进行了验证,发现7种情绪的平均识别准确率为88.28%,优于简单的基于图像的方法。
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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