Basil A. Darwish, Nancy M. Salem, Ghada Kareem, Lamees N. Mahmoud, Ibrahim Sadek
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Utilizing the publicly available Wearable Stress and Affect Detection (WESAD) dataset, we employed two ensemble methods, Majority Voting (MV) and Weighted Averaging (WA), to integrate these signals, achieving maximum accuracies of 99.96% for binary classification and 99.59% for five-class classification. This integration significantly enhances the accuracy and robustness of the stress detection system. Furthermore, ten different classifiers were evaluated, and hyperparameter optimization and K-fold cross-validation ranging from 3-fold to 10-fold were applied. Both time-domain and frequency-domain features were examined separately. A review of commercially available wearable devices supporting these modalities was also conducted, resulting in recommendations for optimal configurations for practical applications. 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引用次数: 0
摘要
压力会对健康产生不利影响,导致高血压、心脏病和免疫系统受损等问题。因此,使用可穿戴设备监测压力对于及时干预和有效管理至关重要。本研究采用二元分类和五元分类模型,研究了可穿戴设备在早期检测心理压力方面的功效。研究观察到压力水平与心电图(ECG)、皮电活动(EDA)和呼吸(RESP)等生理信号之间存在显著的相关性,从而确定这些模式是检测压力的可靠生物标记。利用公开的可穿戴压力和情绪检测(WESAD)数据集,我们采用了两种集合方法--多数表决法(MV)和加权平均法(WA)来整合这些信号,二元分类的最高准确率达到 99.96%,五元分类的最高准确率达到 99.59%。这种整合大大提高了压力检测系统的准确性和鲁棒性。此外,还对十种不同的分类器进行了评估,并应用了超参数优化和 3 倍至 10 倍的 K 倍交叉验证。对时域和频域特征分别进行了研究。我们还对支持这些模式的市售可穿戴设备进行了审查,从而为实际应用提出了最佳配置建议。我们的研究结果凸显了多模态可穿戴设备在推进心理压力的早期检测和持续监测方面的潜力,对未来研究和开发更好的压力检测系统具有重要意义。
Evaluating the Potential of Wearable Technology in Early Stress Detection: A Multimodal Approach
Stress can adversely impact health, leading to issues like high blood pressure, heart diseases, and a compromised immune system. Consequently, using wearable devices to monitor stress is essential for prompt intervention and effective management. This study investigates the efficacy of wearable devices in the early detection of psychological stress, employing both binary and five-class classification models. Significant correlations were observed between stress levels and physiological signals, including Electrocardiogram (ECG), Electrodermal Activity (EDA), and Respiration (RESP), establishing these modalities as reliable biomarkers for stress detection. Utilizing the publicly available Wearable Stress and Affect Detection (WESAD) dataset, we employed two ensemble methods, Majority Voting (MV) and Weighted Averaging (WA), to integrate these signals, achieving maximum accuracies of 99.96% for binary classification and 99.59% for five-class classification. This integration significantly enhances the accuracy and robustness of the stress detection system. Furthermore, ten different classifiers were evaluated, and hyperparameter optimization and K-fold cross-validation ranging from 3-fold to 10-fold were applied. Both time-domain and frequency-domain features were examined separately. A review of commercially available wearable devices supporting these modalities was also conducted, resulting in recommendations for optimal configurations for practical applications. Our findings highlight the potential of multimodal wearable devices in advancing the early detection and continuous monitoring of psychological stress, with significant implications for future research and the development of improved stress detection systems.