Abstract
Stress is a serious concern facing our world today, motivating the development of a better objective understanding through the use of non-intrusive means for stress recognition by reducing restrictions to natural human behavior. As an initial step in computer vision-based stress detection, this paper proposes a temporal thermal spectrum (TS) and visible spectrum (VS) video database ANUStressDB - a major contribution to stress research. The database contains videos of 35 subjects watching stressed and not-stressed film clips validated by the subjects. We present the experiment and the process conducted to acquire videos of subjects' faces while they watched the films for the ANUStressDB. Further, a baseline model based on computing local binary patterns on three orthogonal planes (LBP-TOP) descriptor on VS and TS videos for stress detection is presented. A LBP-TOP-inspired descriptor was used to capture dynamic thermal patterns in histograms (HDTP) which exploited spatio-temporal characteristics in TS videos. Support vector machines were used for our stress detection model. A genetic algorithm was used to select salient facial block divisions for stress classification and to determine whether certain regions of the face of subjects showed better stress patterns. Results showed that a fusion of facial patterns from VS and TS videos produced statistically significantly better stress recognition rates than patterns from VS or TS videos used in isolation. Moreover, the genetic algorithm selection method led to statistically significantly better stress detection rates than classifiers that used all the facial block divisions. In addition, the best stress recognition rate was obtained from HDTP features fused with LBP-TOP features for TS and VS videos using a hybrid of a genetic algorithm and a support vector machine stress detection model. The model produced an accuracy of 86%.
Highlights
Stress is a part of everyday life, and it has been widely accepted that stress, which leads to less favorable states, is a growing concern to a person's health and well-being, functioning, social interaction, and financial aspects
The best recognition measures for the support vector machine (SVM) were obtained when VSLBP-TOP + TSHDTP was provided as input
It produced a recognition rate that was at least 0.10 greater than the recognition rate for inputs without TSHDTP where the range for recognition rates was 0.13. This provides evidence that TSHDTP had a significant contribution towards the better classification performance and suggests that TSHDTP captured more patterns associated with stress than VSLBP-TOP and TSLBP-TOP
Summary
Stress is a part of everyday life, and it has been widely accepted that stress, which leads to less favorable states (such as anxiety, fear, or anger), is a growing concern to a person's health and well-being, functioning, social interaction, and financial aspects. The paper compares the quality of the stress classifications produced from using LBP-TOP and HDTP (our thermal spatio-temporal descriptor) features from TS and VS data with and without using facial block selection. The facial regions are of an experiment participant watching the different types of film clips.
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