This chapter presents a principled way of formulating models for automatic local feature selection in object class recognition when there is little supervised data. Moreover, it discusses how one could formulate sensible spatial image context models using a conditional random field for integrating local features and segmentation cues (superpixels). By adopting sparse kernel methods and Bayesian model selection and data association, the proposed model identifies the most relevant sets of local features for recognizing object classes, achieves performance comparable to the fully supervised setting, and consistently outperforms existing methods for image classification
Abstract. In recent years there has been growing interest in recognition models using local image fe...
Object class recognition is an active topic in computer vision still presenting many challenges. In ...
Abstract. A number of cortex-like hierarchical models of object recog-nition have been proposed thes...
The date of receipt and acceptance will be inserted by the editor Abstract This paper shows (i) impr...
From the issue entitled "Special issue on Machine Learning for Vision, Guest Editors: William Freema...
We approach the object recognition problem as the process of attaching meaningful labels to specific...
In recent years there has been growing interest in recognition models using local image features for...
We consider object recognition as the process of attaching meaningful labels to specific regions of ...
Abstract. Traditionally, object recognition systems are trained with images that may contain a large...
2010 Fall.Includes bibliographical references.Research in the field of object recognition suffers fr...
The recent years have seen the increasing popularity of a wide range of applications in Computer Vis...
In this paper we consider the problem of classifying people spatial orientation with respect to the ...
We present an approach that combines bag-of-words and spatialmodels to perform semantic and syntacti...
Research Director). The team is specialized in computer vision, in particular visual recognition. To...
Fine-grained image classification is challenging due to the large intra-class variance and small int...
Abstract. In recent years there has been growing interest in recognition models using local image fe...
Object class recognition is an active topic in computer vision still presenting many challenges. In ...
Abstract. A number of cortex-like hierarchical models of object recog-nition have been proposed thes...
The date of receipt and acceptance will be inserted by the editor Abstract This paper shows (i) impr...
From the issue entitled "Special issue on Machine Learning for Vision, Guest Editors: William Freema...
We approach the object recognition problem as the process of attaching meaningful labels to specific...
In recent years there has been growing interest in recognition models using local image features for...
We consider object recognition as the process of attaching meaningful labels to specific regions of ...
Abstract. Traditionally, object recognition systems are trained with images that may contain a large...
2010 Fall.Includes bibliographical references.Research in the field of object recognition suffers fr...
The recent years have seen the increasing popularity of a wide range of applications in Computer Vis...
In this paper we consider the problem of classifying people spatial orientation with respect to the ...
We present an approach that combines bag-of-words and spatialmodels to perform semantic and syntacti...
Research Director). The team is specialized in computer vision, in particular visual recognition. To...
Fine-grained image classification is challenging due to the large intra-class variance and small int...
Abstract. In recent years there has been growing interest in recognition models using local image fe...
Object class recognition is an active topic in computer vision still presenting many challenges. In ...
Abstract. A number of cortex-like hierarchical models of object recog-nition have been proposed thes...