A MODIFIED FUZZY SUPPORT VECTOR MACHINE CLASSIFICATION-BASED APPROACH FOR EMOTIONAL RECOGNITION USING PHYSIOLOGICAL SIGNALS

Mohammad Bagher Menhaj
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Abstract

Emotional state recognition has become an essential topic for human–robot interaction researches that diverted and covers a wide range of topics. By specifying emotional expressions, robots can identify the significant variables of human behavior and apply them to communicate in a very human-like fashion and develop interaction possibilities. The multimodality and spontaneity nature of human emotions make them hard to be recognized by robots. Each modality has its advantages and limitations, which, along with the unstructured behavior of spontaneous facial expressions, make several challenges for the proposed approaches in the literature. The most important of these approaches is based on a combination of explicit feature extraction methods and manual modality. This paper proposes a modified fuzzy support vector machine (FSVM) classification-based approach for emotional recognition using physiological signals. The main contribution of this study includes applying various data extraction indices and proper kernels for the FSVM classification method and evaluating the signal's richness in experimental tests. The developed emotional recognition method is also compared with conventional SVM and other existing state-of-the-art emotional recognition algorithms. The comparison results show an improved accuracy of the developed method over other approaches.
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基于改进模糊支持向量机分类的生理信号情感识别方法
情绪状态识别已成为人机交互研究的一个重要课题,涉及的领域非常广泛。通过指定情感表达,机器人可以识别人类行为的重要变量,并应用它们以非常类似人类的方式进行交流,并开发交互可能性。人类情感的多模态和自发性使得它们很难被机器人识别。每种模式都有其优点和局限性,这与自发面部表情的非结构化行为一起,对文献中提出的方法提出了一些挑战。这些方法中最重要的是基于显式特征提取方法和手动模态的结合。提出了一种基于改进模糊支持向量机(FSVM)分类的基于生理信号的情绪识别方法。本研究的主要贡献在于为FSVM分类方法应用了各种数据提取指标和合适的核函数,并在实验测试中评价了信号的丰富度。并将所提出的情绪识别方法与传统的支持向量机和其他现有的先进情绪识别算法进行了比较。对比结果表明,该方法的精度比其他方法有所提高。
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