బయోమెడికల్ సైన్సెస్ జర్నల్

  • ISSN: 2254-609X
  • జర్నల్ హెచ్-ఇండెక్స్: 15
  • జర్నల్ సిట్ స్కోర్: 5.60
  • జర్నల్ ఇంపాక్ట్ ఫ్యాక్టర్: 4.85
ఇండెక్స్ చేయబడింది
  • జెనామిక్స్ జర్నల్‌సీక్
  • చైనా నేషనల్ నాలెడ్జ్ ఇన్‌ఫ్రాస్ట్రక్చర్ (CNKI)
  • రీసెర్చ్ జర్నల్ ఇండెక్సింగ్ డైరెక్టరీ (DRJI)
  • OCLC- వరల్డ్ క్యాట్
  • గూగుల్ స్కాలర్
  • షెర్పా రోమియో
  • రహస్య శోధన ఇంజిన్ ల్యాబ్‌లు
ఈ పేజీని భాగస్వామ్యం చేయండి

నైరూప్య

Determination of Stress in Humans using Data Fusion of Off-the-Shelf Wearable Sensors Data for Electrocardiogram and Galvanic Skin Response

Odafe E Jeroh*, Linda S Powers and Janet M Roveda

Stress detection helps individuals understand their stress levels and advises them when to take a break from activities causing stress. Physical activities and environmental influences can affect a person’s stress levels. People with professions as first responders, pilots, and working parents with newborns are examples of people exposed to a large amount of stress. Acquisition and proper analysis of physiological data is helpful in managing stress. In this paper, the results from two commercial, off-the-shelf sensors, Electrocardiogram [ECG] and Galvanic Skin Response [GSR] measurements, are fused to analyze stress in individuals; these sensors are noninvasive and wearable. Data from these sensors are collected simultaneously over a period of 25 minutes from 25 people which are undergoing a simulated stressor. Support Vector Machine [SVM] and Multilayer Perceptron [MLP] are used as the classifiers while Linear Discriminant Analysis [LDA] is used as the stress detection algorithm. The stress detection accuracy achieved varies with individuals and ranges from 85% to 92%. This approach of measuring stress is very suitable for real-time applications and can be used by anybody who wants to improve their performance.