A novel approach for content-based image retrieval and its specialization to face recognition are described. While most face recognition techniques aim at modeling faces, our goal is to model the transformation between face images of the same person. As a global face transformation may be too complex to be modeled directly, it is approximated by a collection of local transformations with a constraint that imposes consistency between neighboring transformations. Local transformations and neighborhood constraints are embedded within a probabilistic framework using two-dimensional hidden Markov models (2D HMMs). We further introduce a new efficient technique, called turbo-HMM (T-HMM) for approximating intractable 2D HMMs. Experimental results on a face identification task show that our novel approach compares favorably to the popular eigenfaces and fisherfaces algorithms.
A probabilistic model for face transformation with application to person identification
EURASIP Journal on applied Signal Processing, Volume 2004, N°4, Special issue on biometric signal processing, April 2004
© Hindawi. Personal use of this material is permitted. The definitive version of this paper was published in EURASIP Journal on applied Signal Processing, Volume 2004, N°4, Special issue on biometric signal processing, April 2004 and is available at : http://dx.doi.org/10.1155/S1110865704308012
PERMALINK : https://www.eurecom.fr/publication/1393