Author_Institution :
Dept. of Comput. Sci., Toronto Univ., Ont., Canada
Abstract :
Independent components analysis (ICA) maximizes the statistical independence of the representational components of a training image ensemble, but it cannot distinguish between the different factors, or modes, inherent to image formation, including scene structure, illumination, and imaging. We introduce a nonlinear, multifactor model that generalizes ICA. Our multilinear ICA (MICA) model of image ensembles learns the statistically independent components of multiple factors. Whereas ICA employs linear (matrix) algebra, MICA exploits multilinear (tensor) algebra. We furthermore introduce a multilinear projection algorithm which projects an unlabeled test image into the N constituent mode spaces to simultaneously infer its mode labels. In the context of facial image ensembles, where the mode labels are person, viewpoint, illumination, expression, etc., we demonstrate that the statistical regularities learned by MICA capture information that, in conjunction with our multilinear projection algorithm, improves automatic face recognition.
Keywords :
image processing; independent component analysis; tensors; automatic face recognition; image ensemble training; image formation; linear matrix algebra; multilinear independent component analysis; multilinear projection; multilinear tensor algebra; nonlinear multifactor model; scene structure; Algebra; Face recognition; Higher order statistics; Independent component analysis; Layout; Lighting; Matrices; Principal component analysis; Projection algorithms; Testing;