Analysis Of Feature Reduction Algorithms To Estimate Human Stress Conditions

Stress is a normal reaction of the human organism which triggered in situations that require a certain level of activation. This reaction has both positive and negative effects on everyone’s life. Thermal-based imaging has shown promising results in detecting stress in a non-contact and non-invasive...

पूर्ण विवरण

ग्रंथसूची विवरण
मुख्य लेखक: Arasu, Darshan Babu
स्वरूप: थीसिस
भाषा:अंग्रेज़ी
प्रकाशित: 2022
विषय:
ऑनलाइन पहुंच:http://eprints.usm.my/59685/
Abstract Abstract here
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author Arasu, Darshan Babu
author_facet Arasu, Darshan Babu
author_sort Arasu, Darshan Babu
description Stress is a normal reaction of the human organism which triggered in situations that require a certain level of activation. This reaction has both positive and negative effects on everyone’s life. Thermal-based imaging has shown promising results in detecting stress in a non-contact and non-invasive manner. Therefore, this study aimed to present analyse of the performance of feature classify when combining with feature selection algorithm to estimate human stress based on the facial feature of thermal imaging. Three hybrid classifiers, Support Vector Machine (SVM), Decision Tree (DT) and Logistic Regression (LR) combined with feature reduction analysis, Principal Component Analyse (PCA) and Analysis of Variance (ANOVA) was evaluated with 10-fold validation to compute classification accuracy. Four statistical features was extracted; mean, maximum, minimum and standard deviation of the gray scale value from six area regions of interest. Results showing that hybrid classifier DT-ANOVA achieves higher accuracy of 62% compared to others 90 combination classifiers. The findings demonstrated that DT-ANOVA performs well with a small dataset, while SVM and LR can improve the accuracy when fused with ANOVA for a big dataset. The findings also suggested that ANOVA can provides comparable performance as PCA.
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spelling usm-596852023-12-15T02:25:28Z http://eprints.usm.my/59685/ Analysis Of Feature Reduction Algorithms To Estimate Human Stress Conditions Arasu, Darshan Babu QA75.5-76.95 Electronic computers. Computer science Stress is a normal reaction of the human organism which triggered in situations that require a certain level of activation. This reaction has both positive and negative effects on everyone’s life. Thermal-based imaging has shown promising results in detecting stress in a non-contact and non-invasive manner. Therefore, this study aimed to present analyse of the performance of feature classify when combining with feature selection algorithm to estimate human stress based on the facial feature of thermal imaging. Three hybrid classifiers, Support Vector Machine (SVM), Decision Tree (DT) and Logistic Regression (LR) combined with feature reduction analysis, Principal Component Analyse (PCA) and Analysis of Variance (ANOVA) was evaluated with 10-fold validation to compute classification accuracy. Four statistical features was extracted; mean, maximum, minimum and standard deviation of the gray scale value from six area regions of interest. Results showing that hybrid classifier DT-ANOVA achieves higher accuracy of 62% compared to others 90 combination classifiers. The findings demonstrated that DT-ANOVA performs well with a small dataset, while SVM and LR can improve the accuracy when fused with ANOVA for a big dataset. The findings also suggested that ANOVA can provides comparable performance as PCA. 2022-09 Thesis NonPeerReviewed application/pdf en http://eprints.usm.my/59685/1/24%20Pages%20from%20DARSHAN%20BABU%20AL%20L%20ARASU%20-%20TESIS.pdf Arasu, Darshan Babu (2022) Analysis Of Feature Reduction Algorithms To Estimate Human Stress Conditions. Masters thesis, Perpustakaan Hamzah Sendut.
spellingShingle QA75.5-76.95 Electronic computers. Computer science
Arasu, Darshan Babu
Analysis Of Feature Reduction Algorithms To Estimate Human Stress Conditions
thesis_level Master
title Analysis Of Feature Reduction Algorithms To Estimate Human Stress Conditions
title_full Analysis Of Feature Reduction Algorithms To Estimate Human Stress Conditions
title_fullStr Analysis Of Feature Reduction Algorithms To Estimate Human Stress Conditions
title_full_unstemmed Analysis Of Feature Reduction Algorithms To Estimate Human Stress Conditions
title_short Analysis Of Feature Reduction Algorithms To Estimate Human Stress Conditions
title_sort analysis of feature reduction algorithms to estimate human stress conditions
topic QA75.5-76.95 Electronic computers. Computer science
url http://eprints.usm.my/59685/
work_keys_str_mv AT arasudarshanbabu analysisoffeaturereductionalgorithmstoestimatehumanstressconditions