Title :
Nonlinear Common Vectors for pattern classification
Author :
Cevikalp, Hakan ; Neamtu, Marian
Author_Institution :
Dept. of Electr. Eng. & Comput. Sci., Vanderbilt Univ., Nashville, TN, USA
Abstract :
The Common Vector (CV) method is a linear method, which allows to discriminate between classes of data sets, such as those arising in image and word recognition. In this paper a variation of this method is introduced for finding the projection vectors of each class as elements of the intersection of the null space of that class´ covariance matrix and the range space of the covariance matrix of the pooled data. Then, a novel approach is proposed to apply the method in a nonlinearly mapped higher-dimensional feature space. In this approach, all samples are mapped to a higher-dimensional feature space using a kernel mapping, and then the modified CV method is applied in the transformed space. As a result, each class gives rise to a unique common vector. This approach guarantees a 100% recognition rate for the samples of the training set. Moreover, experiments with several test cases also show that the generalization ability of the proposed method is superior to the kernel-based nonlinear subspace method.
Keywords :
covariance matrices; feature extraction; pattern classification; vectors; covariance matrix; data sets classes; image recognition; kernel mapping; kernel-based nonlinear subspace method; linear method; modified CV method; nonlinear common vectors; nonlinearly mapped higher-dimensional feature space; pattern classification; projection vectors; recognition rate; word recognition; Covariance matrices; Null space; Pattern recognition; Support vector machine classification; Training; Vectors;
Conference_Titel :
Signal Processing Conference, 2005 13th European
Conference_Location :
Antalya
Print_ISBN :
978-160-4238-21-1