Illumination Normalization Based on Weber's Law With Application to Face Recognition 论文

2011IEEE Signal Processing Letters引用 240
Face and Expression RecognitionVideo Surveillance and Tracking MethodsFace recognition and analysis

摘要

Weber's law suggests that for a stimulus, the ratio between the smallest perceptual change and the background is a constant, which implies stimuli are perceived not in absolute terms but in relative terms. Inspired from this, we exploit and analyze a novel illumination insensitive representation of face images under varying illuminations via a ratio image, called “Weber-face,” where a ratio between local intensity variation and the background is computed. Experimental results on both CMU-PIE and Yale B face databases show that Weber-face performs better than the existing representative approaches.