Discriminative Orthogonal Neighborhood-Preserving Projections for Classification
Data(s) |
01/02/2010
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Resumo |
Orthogonal neighborhood-preserving projection (ONPP) is a recently developed orthogonal linear algorithm for overcoming the out-of-sample problem existing in the well-known manifold learning algorithm, i.e., locally linear embedding. It has been shown that ONPP is a strong analyzer of high-dimensional data. However, when applied to classification problems in a supervised setting, ONPP only focuses on the intraclass geometrical information while ignores the interaction of samples from different classes. To enhance the performance of ONPP in classification, a new algorithm termed discriminative ONPP (DONPP) is proposed in this paper. DONPP 1) takes into account both intraclass and interclass geometries; 2) considers the neighborhood information of interclass relationships; and 3) follows the orthogonality property of ONPP. Furthermore, DONPP is extended to the semisupervised case, i.e., semisupervised DONPP (SDONPP). This uses unlabeled samples to improve the classification accuracy of the original DONPP. Empirical studies demonstrate the effectiveness of both DONPP and SDONPP. |
Identificador | |
Idioma(s) |
英语 |
Palavras-Chave | #电子、电信技术::信号与模式识别 #电子、电信技术::计算机应用其他学科(含图像处理) #Classification #dimensionality reduction #discriminative orthogonal neighborhood-preserving projection (DONPP) #patch alignment |
Tipo |
期刊论文 |