Department of Instrumentation and Electronics Engineering, Jadavpur University, Jadavpur University Second Campus, Plot No. 8, Salt Lake Bypass, LB Block, Sector III, Kolkata 700106, West Bengal, India.
National Centre of Excellence in Software, Sangmyung University, Seoul 03016, Republic of Korea.
Biosensors (Basel). 2022 Dec 9;12(12):1153. doi: 10.3390/bios12121153.
The human body is designed to experience stress and react to it, and experiencing challenges causes our body to produce physical and mental responses and also helps our body to adjust to new situations. However, stress becomes a problem when it continues to remain without a period of relaxation or relief. When a person has long-term stress, continued activation of the stress response causes wear and tear on the body. Chronic stress results in cancer, cardiovascular disease, depression, and diabetes, and thus is deeply detrimental to our health. Previous researchers have performed a lot of work regarding mental stress, using mainly machine-learning-based approaches. However, most of the methods have used raw, unprocessed data, which cause more errors and thereby affect the overall model performance. Moreover, corrupt data values are very common, especially for wearable sensor datasets, which may also lead to poor performance in this regard. This paper introduces a deep-learning-based method for mental stress detection by encoding time series raw data into Gramian Angular Field images, which results in promising accuracy while detecting the stress levels of an individual. The experiment has been conducted on two standard benchmark datasets, namely WESAD (wearable stress and affect detection) and SWELL. During the studies, testing accuracies of 94.8% and 99.39% are achieved for the WESAD and SWELL datasets, respectively. For the WESAD dataset, chest data are taken for the experiment, including the data of sensor modalities such as three-axis acceleration (ACC), electrocardiogram (ECG), body temperature (TEMP), respiration (RESP), etc.
人体被设计为能够承受压力并对其做出反应,而经历挑战会导致我们的身体产生生理和心理反应,同时帮助我们的身体适应新的情况。然而,当压力持续存在而没有放松或缓解的时期时,它就会成为一个问题。当一个人长期承受压力时,持续激活压力反应会导致身体磨损。慢性压力会导致癌症、心血管疾病、抑郁症和糖尿病,因此对我们的健康有很大的危害。以前的研究人员已经针对心理压力进行了大量的工作,主要使用基于机器学习的方法。然而,大多数方法都使用了原始的、未经处理的数据,这会导致更多的错误,从而影响整体模型性能。此外,尤其是对于可穿戴传感器数据集,错误数据值非常常见,这也可能导致在这方面的性能不佳。本文介绍了一种基于深度学习的方法,通过将时间序列原始数据编码为 Gramian Angular Field 图像来检测心理压力,从而在检测个体的压力水平时获得了有希望的准确性。该实验在两个标准基准数据集 WESAD(可穿戴压力和情感检测)和 SWELL 上进行。在研究过程中,WESAD 和 SWELL 数据集的测试准确率分别达到了 94.8%和 99.39%。对于 WESAD 数据集,实验采用了胸部数据,包括三轴加速度(ACC)、心电图(ECG)、体温(TEMP)、呼吸(RESP)等传感器模式的数据。