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Feature Fusion Algorithm for Multimodal Emotion Recognition from Speech and Facial Expression Signal

机译:特征融合算法的语音和表情信号多态情感识别

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In order to overcome the limitation of single mode emotion recognition. This paper describes a novel multimodal emotion recognition algorithm, and takes speech signal and facial expression signal as the research subjects. First, fuse the speech signal feature and facial expression signal feature, get sample sets by putting back sampling, and then get classifiers by BP neural network (BPNN). Second, measure the difference between two classifiers by double error difference selection strategy. Finally, get the final recognition result by the majority voting rule. Experiments show the method improves the accuracy of emotion recognition by giving full play to the advantages of decision level fusion and feature level fusion, and makes the whole fusion process close to human emotion recognition more, with a recognition rate 90.4%.
机译:为了克服单模情感识别的局限性。本文介绍了一种新颖的多模式情感识别算法,并以语音信号和面部表情信号为研究对象。首先,融合语音信号特征和面部表情信号特征,通过回采样获得样本集,然后通过BP神经网络(BPNN)获得分类器。其次,通过双重误差差异选择策略来测量两个分类器之间的差异。最后,通过多数表决规则获得最终的认可结果。实验表明,该方法通过充分发挥决策级融合和特征级融合的优势,提高了情感识别的准确性,使整个融合过程更接近人类情感识别,识别率达到90.4%。

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