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Enhancing Stress Detection: A Comprehensive Approach through rPPG Analysis and Deep Learning Techniques
by
Bird, Jordan J.
, Fontes, Laura
, Machado, Pedro
, Yahaya, Salisu
, Ihianle, Isibor Kennedy
, Vinkemeier, Doratha
in
Algorithms
/ Biomarkers
/ Blood pressure
/ Brain research
/ Cameras
/ Deep Learning
/ Electrocardiography
/ Electroencephalography
/ Emotions
/ Face
/ Health aspects
/ Health Care Costs
/ Heart rate
/ Hormones
/ Humans
/ Job stress
/ Medical care, Cost of
/ Medical research
/ Methods
/ Nervous system
/ Neural networks
/ Neural Networks, Computer
/ Photoplethysmography
/ Physiology
/ Respiration
/ Sensors
/ Skin
/ Smartphones
/ Stress measurement
/ Wearable computers
/ Well being
2024
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Enhancing Stress Detection: A Comprehensive Approach through rPPG Analysis and Deep Learning Techniques
by
Bird, Jordan J.
, Fontes, Laura
, Machado, Pedro
, Yahaya, Salisu
, Ihianle, Isibor Kennedy
, Vinkemeier, Doratha
in
Algorithms
/ Biomarkers
/ Blood pressure
/ Brain research
/ Cameras
/ Deep Learning
/ Electrocardiography
/ Electroencephalography
/ Emotions
/ Face
/ Health aspects
/ Health Care Costs
/ Heart rate
/ Hormones
/ Humans
/ Job stress
/ Medical care, Cost of
/ Medical research
/ Methods
/ Nervous system
/ Neural networks
/ Neural Networks, Computer
/ Photoplethysmography
/ Physiology
/ Respiration
/ Sensors
/ Skin
/ Smartphones
/ Stress measurement
/ Wearable computers
/ Well being
2024
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Do you wish to request the book?
Enhancing Stress Detection: A Comprehensive Approach through rPPG Analysis and Deep Learning Techniques
by
Bird, Jordan J.
, Fontes, Laura
, Machado, Pedro
, Yahaya, Salisu
, Ihianle, Isibor Kennedy
, Vinkemeier, Doratha
in
Algorithms
/ Biomarkers
/ Blood pressure
/ Brain research
/ Cameras
/ Deep Learning
/ Electrocardiography
/ Electroencephalography
/ Emotions
/ Face
/ Health aspects
/ Health Care Costs
/ Heart rate
/ Hormones
/ Humans
/ Job stress
/ Medical care, Cost of
/ Medical research
/ Methods
/ Nervous system
/ Neural networks
/ Neural Networks, Computer
/ Photoplethysmography
/ Physiology
/ Respiration
/ Sensors
/ Skin
/ Smartphones
/ Stress measurement
/ Wearable computers
/ Well being
2024
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Enhancing Stress Detection: A Comprehensive Approach through rPPG Analysis and Deep Learning Techniques
Journal Article
Enhancing Stress Detection: A Comprehensive Approach through rPPG Analysis and Deep Learning Techniques
2024
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Overview
Stress has emerged as a major concern in modern society, significantly impacting human health and well-being. Statistical evidence underscores the extensive social influence of stress, especially in terms of work-related stress and associated healthcare costs. This paper addresses the critical need for accurate stress detection, emphasising its far-reaching effects on health and social dynamics. Focusing on remote stress monitoring, it proposes an efficient deep learning approach for stress detection from facial videos. In contrast to the research on wearable devices, this paper proposes novel Hybrid Deep Learning (DL) networks for stress detection based on remote photoplethysmography (rPPG), employing (Long Short-Term Memory (LSTM), Gated Recurrent Units (GRU), 1D Convolutional Neural Network (1D-CNN)) models with hyperparameter optimisation and augmentation techniques to enhance performance. The proposed approach yields a substantial improvement in accuracy and efficiency in stress detection, achieving up to 95.83% accuracy with the UBFC-Phys dataset while maintaining excellent computational efficiency. The experimental results demonstrate the effectiveness of the proposed Hybrid DL models for rPPG-based-stress detection.
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