Title :
A Conic Section Classifier and its Application to Image Datasets
Author :
Banerjee, Arunava ; Kodipaka, Santhosh ; Vemuri, Baba C.
Author_Institution :
University of Florida, Gainesville, FL
Abstract :
Many problems in computer vision involving recognition and/or classification can be posed in the general framework of supervised learning. There is however one aspect of image datasets, the high-dimensionality of the data points, that makes the direct application of off-the-shelf learning techniques problematic. In this paper, we present a novel concept class and a companion tractable algorithm for learning a suitable classifier from a given labeled dataset, that is particularly suited to high-dimensional sparse datasets. Each member class in the dataset is represented by a prototype conic section in the feature space, and new data points are classified based on a distance measure to each such representative conic section that is parameterized by its focus, directrix and eccentricity. Learning is achieved by altering the parameters of the conic section descriptor for each class, so as to better represent the data. We demonstrate the efficacy of the technique by comparing it to several well known classifiers on multiple public domain datasets.
Keywords :
Application software; Cancer; Computer vision; Epilepsy; Face recognition; Focusing; Information science; Protocols; Prototypes; Supervised learning;
Conference_Titel :
Computer Vision and Pattern Recognition, 2006 IEEE Computer Society Conference on
Print_ISBN :
0-7695-2597-0
DOI :
10.1109/CVPR.2006.20