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Emotion recognition model based on the Dempster-Shafer evidence theory

机译:基于Dempster-Shafer证据理论的情感识别模型

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Automatic emotion recognition for video clips has become a popular area of research in recent years. Previous studies have explored emotion recognition methods through monomodal approaches, such as voice, text, facial expression, and physiological information. We focus on the complementarity of the information and construct an automatic emotion recognition model based on deep learning technology and multimodal fusion strategy. In this model, visual features, audio features, and text features are extracted from the video clips. A decision-level fusion strategy, based on the theory of evidence, is proposed to fuse the multiple classification results. To solve the problem of evidence conflict in evidence theory, we study a compatibility algorithm designed to correct conflicting evidence based on the similarity matrix of the evidence. This approach is shown to improve the accuracy of emotion recognition. (C) 2020 SPIE and IS&T
机译:近年来,视频剪辑的自动情感识别已成为一个流行的研究领域。 以前的研究通过单态方法,例如语音,文本,面部表情和生理信息,探索了情感识别方法。 我们专注于信息的互补性,构建基于深度学习技术和多峰融合策略的自动情感识别模型。 在此模型中,从视频剪辑中提取可视化功能,音频功能和文本特征。 提出了一种基于证据理论的决策级融合策略,以融合多种分类结果。 为了解决证据理论中的证据冲突问题,我们研究了一个兼容性算法,旨在根据证据的相似性矩阵纠正互相矛盾的证据。 显示这种方法可以提高情感识别的准确性。 (c)2020个SPIE和IS&T

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