Stress Ocare : An advance IoMT based physiological data analysis for anxiety status prediction using cloud computing

IF 1.2 Q2 MATHEMATICS, APPLIED
Bhupendra Ramani, Warish D. Patel, K. Solanki
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引用次数: 2

Abstract

Abstract In modern times individuals are facing an important social challenge in the form of stress. Combining sensor devices that capture physiological, and brain waves data, this study develops a machine learning technique using cloud computing to recognize stress in people in social contexts. In this paper, we are comparing several classifiers, including Random Forest, Support Vector Machine, k-nearest neighbor and AdaBoost, and also inventing a method that uses sensor data in day-to-day life. It detects stress levels with high accuracy. Our results show that by combining data from all the sensors, we are able to accurately differentiate between the stressful and normal situations of humans. In addition, this paper also evaluates the individual capabilities of each sensor modality and its applicability for stress detection in real-time situations. Methods: We have provided unique technology to incorporate sensor signals using cloud computing. It monitors the user’s sweat level, temperature, heart rate variation, and EEG under various motion estimations and also chooses the best model to detect the anxiety level based on the user’s motion conditions. Results: Evaluation of algorithms using sample data reveals an overall concern detection accuracy of 94% along with a significant reduction in false positives compared to the ultramodern techniques.
压力Ocare:一种基于IoMT的先进生理数据分析,用于云计算的焦虑状态预测
摘要在现代,个人正以压力的形式面临着一个重要的社会挑战。这项研究结合了捕捉生理和脑电波数据的传感器设备,开发了一种机器学习技术,使用云计算来识别人们在社交环境中的压力。在本文中,我们比较了几种分类器,包括随机森林、支持向量机、k近邻和AdaBoost,并发明了一种在日常生活中使用传感器数据的方法。它可以高精度地检测压力水平。我们的研究结果表明,通过结合所有传感器的数据,我们能够准确区分人类的压力和正常情况。此外,本文还评估了每种传感器模态的个体能力及其在实时情况下的应力检测适用性。方法:我们提供了独特的技术,使用云计算整合传感器信号。它监测用户在各种运动估计下的汗液水平、温度、心率变化和脑电图,并根据用户的运动状况选择最佳模型来检测焦虑水平。结果:使用样本数据对算法进行评估显示,与超现代技术相比,总体问题检测准确率为94%,假阳性率显著降低。
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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来源期刊
CiteScore
3.10
自引率
21.40%
发文量
126
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