This paper studies a method for learning a discriminative visual codebook for various computer vision tasks such as image categorization and object recognition. The performance of various computer vision tasks depends on the construction of the codebook which is a table of visual-words (i.e. codewords). This paper proposed a learning criterion for constructing a discriminative codebook, and it is solved by the homonym scheme which splits codeword regions by labels. A codebook is learned based on the proposed homonym scheme such that its histogram can be used to discriminate objects of different labels. The traditional codebook based on the k-means is compared against the learned codebook on two well-known datasets (Caltech 101, ETH-80) and ...
This paper presents a novel approach to learning a codebook for visual categorization, that resolves...
This paper augments the Bag-of-Word scheme in several respects: we incorporate a category label into...
Visual Category Recognition aims at fast classification of objects, as well as scenery, action, and ...
International audienceThe idea of representing images using a bag of visual words is currently popul...
The bag of visual words model has seen immense success in addressing the problem of image classifica...
Codebook-based representations are widely em-ployed in the classification of complex objects such as...
This paper proposes an efficient technique for learning a discriminative codebook for scene categori...
In this thesis we develop unsupervised and on-line learning algorithmsfor codebook based visual reco...
We present a novel method for constructing a visual vocabulary that takes into account the class lab...
This paper introduces a method for scene categorization by modeling ambiguity in the popular codeboo...
This thesis presents novel techniques for image recognition systems for better understanding image c...
The well known framework in the object recognition literature uses local information extracted at se...
This paper proposes the Bag of Visual Graphs (BoVG), a new approach to encode the spatial relationsh...
The codebook model-based approach, while ignoring any structural aspect in vision, nonetheless provi...
Recent works in object recognition often use visual words, i.e. vector quantized local descriptors e...
This paper presents a novel approach to learning a codebook for visual categorization, that resolves...
This paper augments the Bag-of-Word scheme in several respects: we incorporate a category label into...
Visual Category Recognition aims at fast classification of objects, as well as scenery, action, and ...
International audienceThe idea of representing images using a bag of visual words is currently popul...
The bag of visual words model has seen immense success in addressing the problem of image classifica...
Codebook-based representations are widely em-ployed in the classification of complex objects such as...
This paper proposes an efficient technique for learning a discriminative codebook for scene categori...
In this thesis we develop unsupervised and on-line learning algorithmsfor codebook based visual reco...
We present a novel method for constructing a visual vocabulary that takes into account the class lab...
This paper introduces a method for scene categorization by modeling ambiguity in the popular codeboo...
This thesis presents novel techniques for image recognition systems for better understanding image c...
The well known framework in the object recognition literature uses local information extracted at se...
This paper proposes the Bag of Visual Graphs (BoVG), a new approach to encode the spatial relationsh...
The codebook model-based approach, while ignoring any structural aspect in vision, nonetheless provi...
Recent works in object recognition often use visual words, i.e. vector quantized local descriptors e...
This paper presents a novel approach to learning a codebook for visual categorization, that resolves...
This paper augments the Bag-of-Word scheme in several respects: we incorporate a category label into...
Visual Category Recognition aims at fast classification of objects, as well as scenery, action, and ...