This paper describes our work on classification of outdoor scenes. First, images are partitioned into regions using one-class classification and patch-based clustering algorithms where one-class classifiers model the regions with relatively uniform color and texture properties, and clustering of patches aims to detect structures in the remaining regions. Next, the resulting regions are clustered to obtain a codebook of region types, and two models are constructed for scene representation: a "bag of individual regions" representation where each region is regarded separately, and a "bag of region pairs" representation where regions with particular spatial relationships are considered, together. Given these representations, scene classificatio...
This paper proposes a method to recognize scene categories using bags of visual words obtained by hi...
International audienceIn recent years considerable advances have been made in learning to recognize ...
International audienceIn recent years considerable advances have been made in learning to recognize ...
163 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.This dissertation addresses t...
163 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.This dissertation addresses t...
In this work we propose a method for object recognition based on a random selection of interest regi...
none2noIn this work we propose a method for object recognition based on a random selection of intere...
In this work we propose a method for object recognition based on a random selection of interest regi...
AbstractThis paper proposes a new bags-of-words (BoW)-based algorithm for scene/place recognition. C...
Along with the progress of the content-based image retrieval research and the development of the MPE...
Along with the progress of the content-based image retrieval research and the development of the MPE...
Visual Category Recognition aims at fast classification of objects, as well as scenery, action, and ...
AbstractThis paper proposes a new bags-of-words (BoW)-based algorithm for scene/place recognition. C...
In the past decade, Bags-of-Words (BOW) models have become popular for the task of object recognitio...
This paper proposes a method to recognize scene categories using bags of visual words obtained by hi...
This paper proposes a method to recognize scene categories using bags of visual words obtained by hi...
International audienceIn recent years considerable advances have been made in learning to recognize ...
International audienceIn recent years considerable advances have been made in learning to recognize ...
163 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.This dissertation addresses t...
163 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.This dissertation addresses t...
In this work we propose a method for object recognition based on a random selection of interest regi...
none2noIn this work we propose a method for object recognition based on a random selection of intere...
In this work we propose a method for object recognition based on a random selection of interest regi...
AbstractThis paper proposes a new bags-of-words (BoW)-based algorithm for scene/place recognition. C...
Along with the progress of the content-based image retrieval research and the development of the MPE...
Along with the progress of the content-based image retrieval research and the development of the MPE...
Visual Category Recognition aims at fast classification of objects, as well as scenery, action, and ...
AbstractThis paper proposes a new bags-of-words (BoW)-based algorithm for scene/place recognition. C...
In the past decade, Bags-of-Words (BOW) models have become popular for the task of object recognitio...
This paper proposes a method to recognize scene categories using bags of visual words obtained by hi...
This paper proposes a method to recognize scene categories using bags of visual words obtained by hi...
International audienceIn recent years considerable advances have been made in learning to recognize ...
International audienceIn recent years considerable advances have been made in learning to recognize ...