基于iceemd的多模态生理信号表征的情绪识别

O. A. Ordóñez-Bolaños, J. Gómez-Lara, M. A. Becerra, Diego Hernán Peluffo-Ordóñez, C. Duque-Mejía, D. Medrano-David, Cristian Mejía-Arboleda
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引用次数: 2

摘要

基于生理信号分析的方法通常用于自动情绪识别。考虑到信号相关情绪的复杂性,它们的正确识别往往会导致一个非琐碎和详尽的过程——特别是因为这些信号高度依赖于多个外部变量。兴趣的一些情感标准是唤起、效价和支配。一些研究工作已经解决了这个问题,主要是通过创建预测系统,尽管如此,由于准确性,上下文解释和计算成本等方面,它仍然被认为是一个非常感兴趣的开放研究领域。本文旨在验证所谓的改进的完全经验模式分解(ICEEMD)作为情绪预测系统中生理信号表征构建块的有效性。为此,我们考虑了一些生理信号以及来自DEAP数据库的患者元数据。实验设置如下:对信号进行幅度调整和简单滤波预处理。然后,使用HC构建特征集,并从三种考虑的分解(即:icemd、离散小波变换(DWT)和最大重叠小波变换(maximum overlap DWT)给出的信息中获取多个统计量。随后,采用Relief F选择算法对特征空间进行降维。最后,使用分类器(LDC和K-NN级联架构)来评估由特征集给出的类可分离性。比较了不同的分解技术,建立了相应的信号和措施。实验结果证明了ICEEMD分解在生理信号驱动情绪分析中的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognition of emotions using ICEEMD-based characterization of multimodal physiological signals
Physiological-signal-analysis-based approaches are typically used for automatic emotion identification. Given the complex nature of signals-related emotions, their right identification often results in a non-trivial and exhaustive process -especially because such signals suffer from high dependence upon multiple external variables. Some emotional criteria of interest are arousal, valence, and dominance. Several research works have addressed this issue, mainly through creating prediction systems, notwithstanding, due to aspects such as accuracy, in-context interpretation and computational cost, it is still considered a great-of-interest, open research eld. This paper is aimed at verifying the usefulness of the so-called improved complete empirical mode decomposition (ICEEMD) as a physiological-signal-characterization building block within an emotion-predicting system. To this purpose, some physiological signals along with patients’ metadata from the DEAP database are considered. The experiments are set-up as follows: Signals are pre-processed by amplitude adjusting and simple filtering. Then, a feature set is built using HC, and multiple statistic measures from information given by the three considered decompositions, namely: ICEEMD, discrete wavelet transform (DWT),and Maximal overlap DWT. Subsequently, Relief F selection algorithm was applied for reducing the dimensionality of the feature space. Finally, classifiers (LDC and K-NN cascade architectures) are used to assess the class-separability given by the feature set. The different decomposition techniques were compared, and the relevant signals and measures were established. Experimental results evidence the suitability of ICEEMD decomposition for physiological-signal-driven emotions analysis.
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