Learning pairwise dissimilarity profiles for appearance recognition in visual surveillance

TitleLearning pairwise dissimilarity profiles for appearance recognition in visual surveillance
Publication TypeJournal Articles
Year of Publication2008
AuthorsLin Z, Davis LS
JournalAdvances in Visual Computing
Pagination23 - 34
Date Published2008///
Abstract

Training discriminative classifiers for a large number of classes is a challenging problem due to increased ambiguities between classes. In order to better handle the ambiguities and to improve the scalability of classifiers to larger number of categories, we learn pairwise dissimilarity profiles (functions of spatial location) between categories and adapt them into nearest neighbor classification. We introduce a dissimilarity distance measure and linearly or nonlinearly combine it with direct distances. We illustrate and demonstrate the approach mainly in the context of appearance-based person recognition.