International audienceVisual codebook based quantization of robust appearance descriptors extracted from local image patches is an effective means of capturing image statistics for texture analysis and scene classification. Codebooks are usually constructed by using a method such as k-means to cluster the descriptor vectors of patches sampled either densely ('textons') or sparsely ('bags of features' based on key-points or salience measures) from a set of training images. This works well for texture analysis in homogeneous images, but the images that arise in natural object recognition tasks have far less uniform statistics. We show that for dense sampling, k-means over-adapts to this, clustering centres almost exclusively around the denses...
The well known framework in the object recognition literature uses local information extracted at se...
AbstractIn the last few years, several ensemble approaches have been proposed for building high perf...
International audienceRecently, methods based on local image features have shown promise for texture...
International audienceVisual codebook based quantization of robust appearance descriptors extracted ...
International audienceSome of the most effective recent methods for content-based image classificati...
Frequencies of occurrence of low-level image features is the representation of choice in the design ...
Object recognition systems need effective image descriptors to obtain good performance levels. Curre...
In the last years the use of the so-called bag-of-features approach, often referred to also as the c...
The state-of-the-art approach in visual object recognition is the use of local information extracted...
This paper augments the Bag-of-Word scheme in several respects: we incorporate a category label into...
The codebook model-based approach, while ignoring any structural aspect in vision, nonetheless provi...
Journal version of INRIA research report RR-5655, http://hal.inria.fr/inria-00070355/en/Internationa...
International audienceHistograms of local appearance descriptors are a popular representation for vi...
Some of the most effective recent methods for content-based image classification work by extracting ...
Visual codebook based quantization of robust appearance descriptors extracted from local image patch...
The well known framework in the object recognition literature uses local information extracted at se...
AbstractIn the last few years, several ensemble approaches have been proposed for building high perf...
International audienceRecently, methods based on local image features have shown promise for texture...
International audienceVisual codebook based quantization of robust appearance descriptors extracted ...
International audienceSome of the most effective recent methods for content-based image classificati...
Frequencies of occurrence of low-level image features is the representation of choice in the design ...
Object recognition systems need effective image descriptors to obtain good performance levels. Curre...
In the last years the use of the so-called bag-of-features approach, often referred to also as the c...
The state-of-the-art approach in visual object recognition is the use of local information extracted...
This paper augments the Bag-of-Word scheme in several respects: we incorporate a category label into...
The codebook model-based approach, while ignoring any structural aspect in vision, nonetheless provi...
Journal version of INRIA research report RR-5655, http://hal.inria.fr/inria-00070355/en/Internationa...
International audienceHistograms of local appearance descriptors are a popular representation for vi...
Some of the most effective recent methods for content-based image classification work by extracting ...
Visual codebook based quantization of robust appearance descriptors extracted from local image patch...
The well known framework in the object recognition literature uses local information extracted at se...
AbstractIn the last few years, several ensemble approaches have been proposed for building high perf...
International audienceRecently, methods based on local image features have shown promise for texture...