Face verification using large feature sets and one shot similarity
Title | Face verification using large feature sets and one shot similarity |
Publication Type | Conference Papers |
Year of Publication | 2011 |
Authors | Guo H, Robson Schwartz W, Davis LS |
Conference Name | Biometrics (IJCB), 2011 International Joint Conference on |
Date Published | 2011/10// |
Keywords | analysis;set, approximations;regression, descriptor;labeled, Face, feature, in, information;face, information;texture, least, LFW;PLS;PLS, recognition;least, regression;color, sets;one, shot, similarity;partial, squares, squares;shape, the, theory;, verification;facial, wild;large |
Abstract | We present a method for face verification that combines Partial Least Squares (PLS) and the One-Shot similarity model[28]. First, a large feature set combining shape, texture and color information is used to describe a face. Then PLS is applied to reduce the dimensionality of the feature set with multi-channel feature weighting. This provides a discriminative facial descriptor. PLS regression is used to compute the similarity score of an image pair by One-Shot learning. Given two feature vector representing face images, the One-Shot algorithm learns discriminative models exclusively for the vectors being compared. A small set of unlabeled images, not containing images belonging to the people being compared, is used as a reference (negative) set. The approach is evaluated on the Labeled Face in the Wild (LFW) benchmark and shows very comparable results to the state-of-the-art methods (achieving 86.12% classification accuracy) while maintaining simplicity and good generalization ability. |
DOI | 10.1109/IJCB.2011.6117498 |