Title :
A model-based discriminative framework for sets of positive vectors classification: Application to object categorization
Author_Institution :
Fac. of Eng. & Comput. Sci., Concordia Univ., Montreal, QC, Canada
Abstract :
Classic support vector machines (SVM) kernels (e.g. polynomial, Gaussian) are unable to take advantage of existing problem-specific knowledge. This is especially true when the problem at hand is the classification of sets (or bags) of vectors that may represent textual or visual (e.g. images, videos) data. This article tackles the problem of the classification of sets of positive vectors via SVM. It describes approaches to generate SVM kernels, appropriate for this problem, from generalized inverted Dirichlet (GID) mixtures. We develop several kernels using the fact that the GID belongs to the exponential family of distributions. The promise of such an approach and its advantages are demonstrated via a challenging application that concerns object categorization.
Keywords :
exponential distribution; pattern classification; support vector machines; GID mixtures; SVM kernels; exponential distributions; generalized inverted Dirichlet mixtures; model-based discriminative framework; object categorization; positive vectors classification; problem-specific knowledge; support vector machine kernels; Computational modeling; Databases; Feature extraction; Kernel; Support vector machines; Vectors; Visualization; Mixture models; SVM; discriminative learning; generalized inverted Dirichlet; generative learning; kernels; object categorization;
Conference_Titel :
Advanced Technologies for Signal and Image Processing (ATSIP), 2014 1st International Conference on
Conference_Location :
Sousse
DOI :
10.1109/ATSIP.2014.6834621