Object recognition systems need effective image descriptors to obtain good performance levels. Currently, the most widely used image descriptor is the SIFT descriptor that computes histograms of orientation gradients around points in an image. A possible problem of this approach is that the number of features becomes very large when a dense grid is used where the histograms are computed and combined for many different points. The current dominating solution to this problem is to use a clustering method to create a visual codebook that is exploited by an appearance based descriptor to create a histogram of visual keywords present in an image. In this paper we introduce several novel bag of visual keywords methods and compare them with the cu...
In the last years the use of the so-called bag-of-features approach, often referred to also as the c...
The SIFT keypoint descriptor is a powerful approach to encoding local image description using edge o...
This paper presents a novel approach to learning a codebook for visual categorization, that resolves...
Object recognition systems need effective image descriptors to obtain good performance levels. Curre...
Abstract—Object recognition systems need effective image descriptors to obtain good performance leve...
This paper augments the Bag-of-Word scheme in several respects: we incorporate a category label into...
International audienceVisual codebook based quantization of robust appearance descriptors extracted ...
Visual Category Recognition aims at fast classification of objects, as well as scenery, action, and ...
AbstractIn the last few years, several ensemble approaches have been proposed for building high perf...
This paper proposes the Bag of Visual Graphs (BoVG), a new approach to encode the spatial relationsh...
International audienceSome of the most effective recent methods for content-based image classificati...
In the last few years, several ensemble approaches have been proposed for building high performance ...
In the past decade, Bags-of-Words (BOW) models have become popular for the task of object recognitio...
This paper presents a new approach for the object categorization problem. Our model is based on the ...
International audienceMost of the bag of visual words models are used to resorting to clustering tec...
In the last years the use of the so-called bag-of-features approach, often referred to also as the c...
The SIFT keypoint descriptor is a powerful approach to encoding local image description using edge o...
This paper presents a novel approach to learning a codebook for visual categorization, that resolves...
Object recognition systems need effective image descriptors to obtain good performance levels. Curre...
Abstract—Object recognition systems need effective image descriptors to obtain good performance leve...
This paper augments the Bag-of-Word scheme in several respects: we incorporate a category label into...
International audienceVisual codebook based quantization of robust appearance descriptors extracted ...
Visual Category Recognition aims at fast classification of objects, as well as scenery, action, and ...
AbstractIn the last few years, several ensemble approaches have been proposed for building high perf...
This paper proposes the Bag of Visual Graphs (BoVG), a new approach to encode the spatial relationsh...
International audienceSome of the most effective recent methods for content-based image classificati...
In the last few years, several ensemble approaches have been proposed for building high performance ...
In the past decade, Bags-of-Words (BOW) models have become popular for the task of object recognitio...
This paper presents a new approach for the object categorization problem. Our model is based on the ...
International audienceMost of the bag of visual words models are used to resorting to clustering tec...
In the last years the use of the so-called bag-of-features approach, often referred to also as the c...
The SIFT keypoint descriptor is a powerful approach to encoding local image description using edge o...
This paper presents a novel approach to learning a codebook for visual categorization, that resolves...