基于生理信号的可穿戴设备情绪识别研究

Hamidan Z. Wijasena, R. Ferdiana, S. Wibirama
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引用次数: 7

摘要

情绪识别可以为测量情绪健康和筛查生活质量、认知功能障碍和精神障碍建立一个临床框架。情感不仅通过人际行为传递,还通过几种生理差异传递。情绪可以通过智能手表或腕带等可穿戴设备中的生理信号来监测。然而,使用可穿戴或智能手表设备在不受限制的日常生活中检测情绪存在各种挑战。与半受限和实验室环境研究相比,这些挑战导致此类系统的性能较低。在生理信号中加入每个个体生理信号、身体活动水平和活动类型的唯一性会影响这些系统的分类准确性。为了应对这些挑战,我们对过去三年使用可穿戴设备的生理信号研究进行了简要的文献综述。简要定义了利用生理信号进行情绪识别的阶段。本文还列出了生理信号的形式和检测它们的各种传感器。此外,我们还讨论了情绪模型和情绪刺激方法。这项研究有望为研究挑战、局限性以及未来使用可穿戴或智能手表设备进行情感检测和识别带来新的见解。
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A Survey of Emotion Recognition using Physiological Signal in Wearable Devices
Emotion recognition may establish a clinical framework for measuring emotional wellbeing and screening for quality of life, cognitive dysfunction, and mental disorder. Emotions are conveyed not just through interpersonal actions but also by several physiological differences. Emotions can be monitored using physiological signals in wearable devices such as smartwatches or wrist bands. However, there are various challenges for detecting emotion in unrestricted daily life using wearable or smartwatch devices. These challenges result in lower performances of such systems compared to semi-restricted and laboratory environment studies. The addition of uniqueness in each individual physiological signal, physical activity level, and activity type to the physiological signals can affect classification accuracy of these systems. To tackle these challenges, we present a brief literature review on the study of physiological signals using wearable devices primarily from the last three years. The phase of emotion recognition using physiological signals is briefly defined. This paper also presents listed forms of physiological signals and various sensors for detecting them. In addition, we discussed the emotional models and emotional stimulation approaches. This study is expected to bring new insight into research challenges, limitations, and possible future emotion detection and recognition using wearable or smartwatch devices.
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