Title :
Convex support and Relevance Vector Machines for selective multimodal pattern recognition
Author :
Seredin, Oleg ; Mottl, Vadim ; Tatarchuk, Alexander ; Razin, N. ; Windridge, David
Author_Institution :
Tula State Univ., Tula, Russia
Abstract :
We address the problem of featureless pattern recognition under the assumption that pair-wise comparison of objects is arbitrarily scored by real numbers. Such a linear embedding is much more general than the traditional kernel-based approach, which demands positive semi-definiteness of the matrix of object comparisons. This demand is frequently prohibitive and is further complicated if there exist a large number of comparison functions, i.e., multiple modalities of object representation. In these cases, the experimenter typically also has the problem of eliminating redundant modalities and objects. In the context of the general pair-wise comparison space this problem becomes mathematically analogous to that of wrapper-based feature selection. The resulting convex SVM-like training criterion is analogous to Tipping´s Relevance Vector Machine, but essentially generalizes it via the presence of a structural parameter controlling the selectivity level.
Keywords :
feature extraction; image representation; object recognition; support vector machines; convex SVM training criterion; convex support vector machines; featureless pattern recognition; object pair-wise comparison; object representation; selective multimodal pattern recognition; tipping relevance vector machine; wrapper-based feature selection; Hilbert space; Kernel; Pattern recognition; Support vector machines; Training; Vectors;
Conference_Titel :
Pattern Recognition (ICPR), 2012 21st International Conference on
Conference_Location :
Tsukuba
Print_ISBN :
978-1-4673-2216-4