Litcius/Paper detail

Face Alignment in Thermal Infrared Images Using Cascaded Shape Regression

Kent Nagumo, Tomohiro Kobayashi, Kosuke Oiwa, Akio Nozawa

2021International Journal of Environmental Research and Public Health22 citationsDOIOpen Access PDF

Abstract

The evaluation of physiological and psychological states using thermal infrared images is based on the skin temperature of specific regions of interest, such as the nose, mouth, and cheeks. To extract the skin temperature of the region of interest, face alignment in thermal infrared images is necessary. To date, the Active Appearance Model (AAM) has been used for face alignment in thermal infrared images. However, computation using this method is costly, and it has a low real-time performance. Conversely, face alignment of visible images using Cascaded Shape Regression (CSR) has been reported to have high real-time performance. However, no studies have been reported on face alignment in thermal infrared images using CSR. Therefore, the objective of this study was to verify the speed and robustness of face alignment in thermal infrared images using CSR. The results suggest that face alignment using CSR is more robust and computationally faster than AAM.

Topics & Concepts

InfraredArtificial intelligenceRobustness (evolution)Face (sociological concept)Thermal infraredComputer visionComputer scienceComputationThermalPattern recognition (psychology)OpticsAlgorithmPhysicsBiologyGeneSocial scienceBiochemistryMeteorologySociologyFace recognition and analysisInfrared Thermography in MedicineFace Recognition and Perception