We introduce the notion of Principal Component Analysis (PCA) of image gradient orientations. As image data is typically noisy, but noise is substantially different from Gaussian, traditional PCA of pixel intensities very often fails to estimate reliably the low-dimensional subspace of a given data population. We show that replacing intensities with gradient orientations and the _2 norm with a cosine-based distance measure offers, to some extend, a remedy to this problem. Our scheme requires the eigen-decomposition of a covariance matrix and is as computationally efficient as standard _2 intensitybased PCA. We demonstrate some of its favorable properties for the application of face recognition.
Jina De ZhangChen Rong HangJin XuHang Chen
José Francisco Martins PereiraGeorge D. C. CavalcantiTsang Ing Ren
George D. C. CavalcantiTsang Ing RenJosé Francisco Martins Pereira
Geeta RaniM SakthimohanManoharan Pon SureshMadhurapantula AbhiramKandregula Jai SuryaBalasaraswathi Yugandher Adiki Nithin Kumar