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首页> 外文期刊>International journal of computers, communications and control >Facial Expression Decoding based on fMRI Brain Signal
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Facial Expression Decoding based on fMRI Brain Signal

机译:基于fMRI脑信号的面部表情解码

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The analysis of facial expressions is a hot topic in brain-computer interface research. To determine the facial expressions of the subjects under the corresponding stimulation, we analyze the fMRI images acquired by the Magnetic Resonance. There are six kinds of facial expressions: "anger", "disgust", "sadness", "happiness", "joy" and "surprise". We demonstrate that brain decoding is achievable through the parsing of two facial expressions ("anger" and "joy"). Support vector machine and extreme learning machine are selected to classify these expressions based on time series features. Experimental results show that the classification performance of the extreme learning machine algorithm is better than support vector machine. Among the eight participants in the trials, the classification accuracy of three subjects reached 70-80%, and the remaining five subjects also achieved accuracy of 50-60%. Therefore, we can conclude that the brain decoding can be used to help analyzing human facial expressions.
机译:面部表情分析是脑机接口研究的热门话题。为了确定在相应刺激下受试者的面部表情,我们分析了磁共振采集的功能磁共振成像图像。有六种面部表情:“愤怒”,“厌恶”,“悲伤”,“幸福”,“欢乐”和“惊奇”。我们证明了通过解析两个面部表情(“愤怒”和“欢乐”)可以实现大脑解码。选择支持向量机和极限学习机以基于时间序列特征对这些表达式进行分类。实验结果表明,极限学习机算法的分类性能优于支持向量机。在该试验的八名参与者中,三名受试者的分类准确度达到70-80%,其余五名受试者也达到50-60%的准确度。因此,我们可以得出结论,大脑解码可用于帮助分析人的面部表情。

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