Low-Cost Heart Rate Sensor and Mental Stress Detection Using Machine Learning

N. E. J. Asha, Ehtesum-Ul-Islam, R. Khan
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引用次数: 8

Abstract

One of our major organs heart does the pumping process of oxygen-containing blood and its distribution to the body's arteries every minute. Heart rate or pulse indicates the cardiovascular fitness of a human body. The health condition is predicted by measuring the heartbeat rate, which changes with age, physical and mental conditions. The most familiar way of measuring the heart rate or rhythm is by sensing the pulse per minute by various devices. This paper implements a low-cost heart rate monitoring system using sensors and IoT devices. First, the sensor will be placed on the finger, and subsequently, the color variation will be seen. The sensor picks the color variation, and it measures the interval of color variation. An Arduino microcontroller is used to process the signal. These devices use light to track the blood. Next, the measured heart rate data from the Arduino is stored in CSV files. The Geneva affective picture database has been used to record the heart rate and classify it into three classes of positive, negative, and neutral emotions. Finally, a machine learning algorithm, support vector machine, has been implemented to predict the mental stress condition from the obtained heart rate. Experimental results demonstrate that the support vector machine with the polynomial kernel exhibits the best accuracy.
使用机器学习的低成本心率传感器和精神压力检测
我们的主要器官之一心脏每分钟都在泵送含氧血液并将其分配到身体的动脉。心率或脉搏表明人体的心血管健康状况。通过测量心率来预测健康状况,心率随着年龄、身体和精神状况的变化而变化。测量心率或节奏的最熟悉的方法是通过各种设备感应每分钟的脉搏。本文利用传感器和物联网设备实现了一种低成本的心率监测系统。首先,传感器将被放置在手指上,随后,颜色变化将被看到。传感器采集颜色变化,测量颜色变化的间隔。使用Arduino微控制器对信号进行处理。这些设备利用光来追踪血液。接下来,将来自Arduino的测量心率数据存储在CSV文件中。日内瓦情感图片数据库被用来记录心率,并将其分为积极、消极和中性三种情绪。最后,实现了一种机器学习算法,即支持向量机,根据得到的心率预测精神压力状态。实验结果表明,采用多项式核的支持向量机具有较好的精度。
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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