Introducing WESAD, a Multimodal Dataset for Wearable Stress and Affect Detection

P. Schmidt, Attila Reiss, R. Dürichen, C. Marberger, Kristof Van Laerhoven
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引用次数: 500

Abstract

Affect recognition aims to detect a person's affective state based on observables, with the goal to e.g. improve human-computer interaction. Long-term stress is known to have severe implications on wellbeing, which call for continuous and automated stress monitoring systems. However, the affective computing community lacks commonly used standard datasets for wearable stress detection which a) provide multimodal high-quality data, and b) include multiple affective states. Therefore, we introduce WESAD, a new publicly available dataset for wearable stress and affect detection. This multimodal dataset features physiological and motion data, recorded from both a wrist- and a chest-worn device, of 15 subjects during a lab study. The following sensor modalities are included: blood volume pulse, electrocardiogram, electrodermal activity, electromyogram, respiration, body temperature, and three-axis acceleration. Moreover, the dataset bridges the gap between previous lab studies on stress and emotions, by containing three different affective states (neutral, stress, amusement). In addition, self-reports of the subjects, which were obtained using several established questionnaires, are contained in the dataset. Furthermore, a benchmark is created on the dataset, using well-known features and standard machine learning methods. Considering the three-class classification problem ( baseline vs. stress vs. amusement ), we achieved classification accuracies of up to 80%,. In the binary case ( stress vs. non-stress ), accuracies of up to 93%, were reached. Finally, we provide a detailed analysis and comparison of the two device locations ( chest vs. wrist ) as well as the different sensor modalities.
介绍了一种用于耐磨应力和影响检测的多模态数据集WESAD
情感识别的目的是基于可观察到的数据来检测一个人的情感状态,目的是改善人机交互。众所周知,长期压力对健康有严重影响,这需要持续和自动化的压力监测系统。然而,情感计算社区缺乏常用的可穿戴应力检测标准数据集,这些数据集a)提供多模态高质量数据,b)包括多种情感状态。因此,我们引入了WESAD,这是一个新的公开可用的可穿戴应力和影响检测数据集。这个多模态数据集的特征是生理和运动数据,这些数据是在实验室研究期间从手腕和胸部佩戴的设备记录的。以下传感器模式包括:血容量脉搏、心电图、皮肤电活动、肌电图、呼吸、体温和三轴加速度。此外,该数据集通过包含三种不同的情感状态(中性、压力、娱乐),弥合了之前关于压力和情绪的实验室研究之间的差距。此外,数据集中还包含了使用几份既定问卷获得的受试者自我报告。此外,使用众所周知的特征和标准机器学习方法,在数据集上创建基准。考虑到三类分类问题(基线、压力、娱乐),我们实现了高达80%的分类准确率。在二元情况下(应力与非应力),准确率高达93%,达到。最后,我们提供了两个设备位置(胸部与手腕)以及不同传感器模式的详细分析和比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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