Requirements for a Reference Dataset for Multimodal Human Stress Detection

Bhargav Mahesh, E. Prassler, Teena Hassan, Jens-Uwe Garbas
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引用次数: 12

Abstract

Stress is necessary for optimal performance and functioning in daily life. However, when stress exceeds person-specific coping levels, then it begins to negatively impact health and productivity. An automatic stress monitoring system that tracks stress levels based on physical and physiological parameters, can assist the user in maintaining stress within healthy limits. In order to build such a system, we need to develop and test various algorithms on a reference dataset consisting of multimodal stress responses. Such a reference dataset should fulfil requirements derived from results and practices of clinical and empirical research. This paper proposes a set of such requirements to support the establishment of a reference dataset for multimodal human stress detection. The requirements cover person-dependent and technical aspects such as selection of sample population, choice of stress stimuli, inclusion of multiple stress modalities, selection of annotation methods, and selection of data acquisition devices. Existing publicly available stress datasets were evaluated based on criteria derived from the proposed requirements. It was found that none of these datasets completely fulfilled the requirements. Therefore, efforts should be made in the future to establish a reference dataset, satisfying the specified requirements, in order to ensure comparability and reliability of results.
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对多模态人体应力检测参考数据集的要求
压力对于日常生活中的最佳表现和功能是必要的。然而,当压力超过个人特定的应对水平时,它就开始对健康和生产力产生负面影响。自动压力监测系统可以根据身体和生理参数跟踪压力水平,帮助用户将压力保持在健康范围内。为了构建这样一个系统,我们需要在包含多模态应力响应的参考数据集上开发和测试各种算法。这样的参考数据集应该满足临床和实证研究结果和实践的要求。本文提出了一组这样的要求,以支持建立多模态人体应力检测的参考数据集。这些要求涵盖了个人依赖和技术方面,如样本群体的选择、应激刺激的选择、多种应激模式的包括、注释方法的选择和数据采集设备的选择。现有的可公开获得的应力数据集是根据拟议要求得出的标准进行评估的。结果发现,这些数据集都没有完全满足要求。因此,未来应努力建立满足规定要求的参考数据集,以确保结果的可比性和可靠性。
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