Reputation-driven multimodal emotion recognition in wearable biosensor network

Yixiang Dai, Xue Wang, Xuanping Li, Pengbo Zhang
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引用次数: 13

Abstract

Emotion recognition is a process in which emotions are identified and recognized according to emotion-related bio signals. Wearable biosensor network expands the application of emotion recognition by measuring different emotion-related bio signals with wearable and portable hardware structures to meet specific needs in complicated measuring environment. This paper develops a multimodal emotion recognition method in wearable biosensor network. Reputation-driven Support Vector Machine (RSVM) classification algorithm is proposed to reduce the classification error caused by wearable sensor nodes. Reputations are figured out by similarity evaluation based on correlation calculation and are used for training sample selection and fuzzy membership degree determination. The experiment results indicate that this framework realizes reliable emotion recognition in wearable web-enable sensing environment and provides a solution to primary recognition and monitoring of emotional states and spiritual health.
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可穿戴生物传感器网络中声誉驱动的多模态情感识别
情绪识别是根据与情绪相关的生物信号对情绪进行识别和识别的过程。可穿戴式生物传感器网络通过可穿戴和便携的硬件结构测量不同的情绪相关生物信号,以满足复杂测量环境下的特定需求,拓展了情绪识别的应用。提出了一种基于可穿戴生物传感器网络的多模态情感识别方法。为了减少可穿戴传感器节点造成的分类误差,提出了信誉驱动支持向量机(RSVM)分类算法。在相关度计算的基础上,通过相似度评价计算出声誉,并用于训练样本的选择和模糊隶属度的确定。实验结果表明,该框架在可穿戴网络感知环境下实现了可靠的情绪识别,为情绪状态和精神健康的初级识别和监测提供了解决方案。
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