%0 Thesis %T Compact, Adaptive and Discriminative Spatial Pyramids for Improved Object and Scene Classification %A Noha Elfiky %E Jordi Gonzalez %E Xavier Roca %D 2012 %I Ediciones Graficas Rey %F Noha Elfiky2012 %O ISE %O exported from refbase (http://refbase.cvc.uab.es/show.php?record=2202), last updated on Fri, 17 Dec 2021 11:11:45 +0100 %X The release of challenging datasets with a vast number of images, requires the development of efficient image representations and algorithms which are able to manipulate these large-scale datasets efficiently. Nowadays the Bag-of-Words (BoW) is the most successful approach in the context of object and scene classification tasks. However, its main drawback is the absence of the important spatial information. Spatial pyramids (SP) have been successfully applied to incorporate spatial information into BoW-based image representation. Observing the remarkable performance of spatial pyramids, their growing number of applications to a broad range of vision problems, and finally its geometry inclusion, a question can be asked what are the limits of spatial pyramids. Within the SP framework, the optimal way for obtaining an image spatial representation, which is able to cope with it’s most foremost shortcomings, concretely, it’s high dimensionality and the rigidity of the resulting image representation, still remains an active research domain. In summary, the main concern of this thesis is to search for the limits of spatial pyramids and try to figure out solutions for them. %9 theses %9 Ph.D. thesis