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Information Journal Paper

Title

An Autoencoder based Emotional Stress State Detection Approach by using Electroencephalography Signals

Author(s)

Uddin Jia | Issue Writer Certificate 

Pages

  24-30

Abstract

 Identifying hazards from human error is critical for industrial safety since dangerous and reckless industrial worker actions, as well as a lack of measures, are directly accountable for human-caused problems. Lack of sleep, poor nutrition, physical deformities, and weariness are some of the key factors that contribute to these risky and reckless behaviors that might put a person in a perilous scenario. This scenario causes discomfort, worry, despair, cardiovascular disease, a rapid heart rate, and a slew of other undesirable outcomes. As a result, it would be advantageous to recognize people's mental states in the future in order to provide better care for them. Researchers have been studying electroencephalogram (EEG) signals to determine a person's stress level at work in recent years. A full feature analysis from domains is necessary to develop a successful Machine Learning model using electroencephalogram (EEG) inputs. By analyzing EEG data, a time-frequency based hybrid bag of features is designed in this research to determine human stress dependent on their sex. This collection of characteristics includes features from two types of assessments: time-domain statistical analysis and frequency-domain wavelet-based feature assessment. The suggested two layered Autoencoder based neural networks (AENN) are then used to identify the stress level using a hybrid bag of features. The experiment uses the DEAP dataset, which is freely available. The proposed method has a male accuracy of 77. 09% and a female accuracy of 80. 93%.

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  • Cite

    APA: Copy

    Uddin, Jia. (2023). An Autoencoder based Emotional Stress State Detection Approach by using Electroencephalography Signals. JOURNAL OF INFORMATION SYSTEMS AND TELECOMMUNICATION (JIST), 11(1 (41)), 24-30. SID. https://sid.ir/paper/1039890/en

    Vancouver: Copy

    Uddin Jia. An Autoencoder based Emotional Stress State Detection Approach by using Electroencephalography Signals. JOURNAL OF INFORMATION SYSTEMS AND TELECOMMUNICATION (JIST)[Internet]. 2023;11(1 (41)):24-30. Available from: https://sid.ir/paper/1039890/en

    IEEE: Copy

    Jia Uddin, “An Autoencoder based Emotional Stress State Detection Approach by using Electroencephalography Signals,” JOURNAL OF INFORMATION SYSTEMS AND TELECOMMUNICATION (JIST), vol. 11, no. 1 (41), pp. 24–30, 2023, [Online]. Available: https://sid.ir/paper/1039890/en

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