Title :
Learning with constrained and unlabelled data
Author :
Lange, Tilman ; Law, Martin H C ; Jain, Anil K. ; Buhmann, Joachim M.
Author_Institution :
Inst. of Computational Sci., ETH Zurich, Switzerland
Abstract :
Classification problems abundantly arise in many computer vision tasks eing of supervised, semi-supervised or unsupervised nature. Even when class labels are not available, a user still might favor certain grouping solutions over others. This bias can be expressed either by providing a clustering criterion or cost function and, in addition to that, by specifying pairwise constraints on the assignment of objects to classes. In this work, we discuss a unifying formulation for labelled and unlabelled data that can incorporate constrained data for model fitting. Our approach models the constraint information by the maximum entropy principle. This modeling strategy allows us (i) to handle constraint violations and soft constraints, and, at the same time, (ii) to speed up the optimization process. Experimental results on face classification and image segmentation indicates that the proposed algorithm is computationally efficient and generates superior groupings when compared with alternative techniques.
Keywords :
constraint handling; image classification; learning (artificial intelligence); maximum entropy methods; optimisation; pattern clustering; clustering criterion; constrained data; constraint handling; constraint information; image classification; labelled data; learning; maximum entropy principle; model fitting; optimization; pairwise constraints; pattern clustering; unlabelled data; Computer science; Computer vision; Constraint optimization; Cost function; Entropy; Face detection; Fitting; Image segmentation; Labeling; Object recognition;
Conference_Titel :
Computer Vision and Pattern Recognition, 2005. CVPR 2005. IEEE Computer Society Conference on
Print_ISBN :
0-7695-2372-2
DOI :
10.1109/CVPR.2005.210