通过穿戴式驱动的情绪识别和深度强化学习的情商有意练习增强幸福感和缓解压力

IF 2.2 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Sensors Letters Pub Date : 2024-12-11 DOI:10.1109/LSENS.2024.3515881
Yuexin Liu;Amir Tofighi Zavareh;Ben Zoghi
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引用次数: 0

摘要

这项研究设计深入研究了一项突破性的研究,强调了可穿戴设备和深度强化学习的创新使用,以增强情绪健康和管理压力。该研究的重点是利用可穿戴传感器技术,特别是Empatica的恩布拉eplus设备,在情商(EQ)增强、情绪识别和有意识的情商实践的交叉点展开。为了充分利用可穿戴设备的潜力,参与者从德州农工大学的工程技术管理硕士项目中挑选出来,他们参与了与情商和管理相关的研究。目的是通过三个相互关联的目标来研究改善情绪健康的个性化策略:第一,利用可穿戴技术探索情商、压力管理和生理指标之间的关系;第二,评估有意识情商实践在改善情绪健康和减轻压力方面的有效性;第三,利用机器学习优化有意实践对整体幸福感的影响。这种方法强调了可穿戴设备在阐明正念练习伴随的生理反应方面的潜力,为情商、压力管理和有意识的幸福感增强之间的动态关系提供了新的见解。
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Enhancing Well-Being and Alleviating Stress via Wearable-Driven Emotion Recognition and EQ Intentional Practice With Deep Reinforcement Learning
This research design delves into a groundbreaking study that highlights the innovative use of wearables and deep reinforcement learning to enhance emotional well-being and manage stress. With a focus on leveraging wearable sensor technology, specifically the Empatica EmbracePlus device, the research unfolds at the intersection of emotional intelligence (EQ) augmentation, emotion recognition, and intentional EQ practice. Leveraging the potential of wearables, participants were selected from the Master of Engineering Technical Management program at Texas A&M University based on their involvement in studies related to EQ and management. The objective is to investigate personalized strategies for improving emotional well-being through three interconnected aims: first, exploring the relationship between EQ, stress management, and physiological indicators using wearable technology; second, evaluating the effectiveness of intentional EQ practices in improving emotional well-being and reducing stress; and third, utilizing machine learning to optimize the impact of intentional practices on overall well-being. This approach underscores the potential of wearables to illuminate the physiological responses accompanying mindfulness practices, offering fresh insights into the dynamic relationship between EQ, stress management, and intentional well-being enhancement.
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来源期刊
IEEE Sensors Letters
IEEE Sensors Letters Engineering-Electrical and Electronic Engineering
CiteScore
3.50
自引率
7.10%
发文量
194
期刊最新文献
Table of Contents Front Cover IEEE Sensors Council Information IEEE Sensors Letters Subject Categories for Article Numbering Information IEEE Sensors Letters Publication Information
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