Abstract

The paper is devoted to the study of facial region temperature changes using a simple thermal imaging camera and to the comparison of their time evolution with the pectoral area motion recorded by the MS Kinect depth sensor. The goal of this research is to propose the use of video records as alternative diagnostics of breathing disorders allowing their analysis in the home environment as well. The methods proposed include (i) specific image processing algorithms for detecting facial parts with periodic temperature changes; (ii) computational intelligence tools for analysing the associated videosequences; and (iii) digital filters and spectral estimation tools for processing the depth matrices. Machine learning applied to thermal imaging camera calibration allowed the recognition of its digital information with an accuracy close to 100% for the classification of individual temperature values. The proposed detection of breathing features was used for monitoring of physical activities by the home exercise bike. The results include a decrease of breathing temperature and its frequency after a load, with mean values −0.16 °C/min and −0.72 bpm respectively, for the given set of experiments. The proposed methods verify that thermal and depth cameras can be used as additional tools for multimodal detection of breathing patterns.

Highlights

  • The use of different sensors is essential for the study of many physiological and mental activities, neurological diseases [1,2] and motion and gait disorders [3,4]

  • Special attention is paid to temperature changes of facial parts affected by emotions, mental activities, or neurological disorders

  • The detection of breathing features was verified during monitoring of physical activities by the home exercise bike

Read more

Summary

Introduction

The use of different sensors is essential for the study of many physiological and mental activities, neurological diseases [1,2] and motion and gait disorders [3,4]. Special attention is paid to temperature changes of facial parts affected by emotions, mental activities, or neurological disorders. The study of the temperature distribution over different parts of the face can be used in face and emotion detection [7,8,9,10,11,12], age recognition [13], motion [14], psychophysiology [15,16], neurology [17], and stress detection [18,19]

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call