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首页> 外文期刊>International journal of ad hoc and ubiquitous computing >Fine-grained emotion recognition: fusion of physiological signals and facial expressions on spontaneous emotion corpus
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Fine-grained emotion recognition: fusion of physiological signals and facial expressions on spontaneous emotion corpus

机译:细粒度的情感识别:生理信号和对自发情绪语料库的面部表达的融合

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摘要

The recognition of fine-grained emotions (i.e., happiness, sad, etc.) has shown its importance in a real-world implementation. The emotion recognition using physiological signals is a challenging task due to the precision of the labelled data while using facial expressions is less appropriate for the real environment. This work proposes a framework for fusing physiological signals and facial expressions modalities to improve classification performance. The feature-level fusion (FLF) and decision-level fusion (DLF) techniques are explored in this work to recognise seven fine-grained emotions. The performance of the proposed framework is evaluated using 34 subjects' data. Our result shows that the fusion of the multiple modalities could improve the overall accuracy compared to the unimodal system by 11.66% and 13.63% for facial expression and physiological signals, respectively. Our work achieved a 73.23% accuracy for seven emotions which is considerable accuracy for the spontaneous emotion corpus.
机译:识别细粒度的情绪(即幸福,悲伤等)在真实的实施中表现出其重要性。由于标记数据的精度在使用面部表达式的情况下,使用生理信号的情感识别是一个具有挑战性的任务,这不太适合真实环境。这项工作提出了一种融合生理信号和面部表达方式的框架,以提高分类性能。在这项工作中探讨了特征级融合(FLF)和决策级融合(DLF)技术,以识别七种细粒度的情绪。使用34个受试者的数据评估所提出的框架的性能。我们的结果表明,与单峰体系相比,多种方式的融合可以分别增加11.66%和13.63%的面部表情和生理信号。我们的工作获得了73.23%的精度,精度为七种情绪,这对于自发的情感语料库具有相当大的准确性。

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