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Author :
Vivin A T, Thanabal M S, Vignesh P, Thamarai Selvan S, Siva Prasath GPublished Date :
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Page No: 1 - 16
Abstract : The study explores an approach to IT stress detection utilizing deep learning,
specifically convolutional neural networks (CNNs), as well as traditional machine learning
algorithms including decision trees (DT) and support vector machines (SVM). The research
focuses on image processing techniques to extract relevant features from facial expressions and
physiological signals indicative of stress. The proposed methodology involves data acquisition,
preprocessing, and feature extraction to prepare the input data for model training. CNNs are
employed to automatically learn discriminative features directly from the images, while DT and
SVM models are trained on extracted features to compare their performance against the deep
learning approach. Evaluation metrics such as accuracy, precision, recall, and F1 score are
utilized to assess the effectiveness of each algorithm in stress detection. Additionally, the study
explores the potential for ensemble methods to combine the strengths of multiple algorithms for
improved performance. The results demonstrate the efficacy of deep learning CNNs in accurately
identifying stress from image data, with insights into the comparative performance and potential
synergies with traditional machine learning techniques. This research contributes to advancing the
field of stress detection by leveraging state-of-the-art deep learning methodologies within the
context of image processing.
Keyword: Artificial Intelligence (AI), artificial neural networks (ANN), renewable
resources, time series data, MATLAB/Simulink platform
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