International audienceObject models based on bag-of-words representations can achieve state-of-the-art performance for image classification and object localization tasks. However, as they consider objects as loose collections of local patches they fail to accurately locate object boundaries and are not able to produce accurate object segmentation. On the other hand, Markov random field models used for image segmentation focus on object boundaries but can hardly use the global constraints necessary to deal with object categories whose appearance may vary significantly. In this paper we combine the advantages of both approaches. First, a mechanism based on local regions allows object detection using visual word occurrences and produces a roug...
Multi-scale window scanning has been popular in object detection but it generalizes poorly to comple...
Abstract. Several formulations based on Random Fields (RFs) have been proposed for joint categorizat...
This paper presents a novel method for detecting and localizing objects of a visual category in clut...
International audienceObject models based on bag-of-words representations can achieve state-of-the-a...
This paper presents an approach to segment unseen objects of known categories. At the heart of the a...
International audienceThis paper addresses the problem of accurately segmenting instances of object ...
International audienceIn this article, we consider the task of category level object segmentation. O...
Abstract This paper addresses the problem of accurately segmenting instances of object classes in im...
Recently, there has been increasing interests in applying aspect models (e.g., PLSA and LDA) in imag...
This thesis deals with the interpretation of static images, with a focus on recognising object categ...
As humans, we have a remarkable ability of telling objects apart from cluttered backgroundand tracin...
International audienceIn recent years considerable advances have been made in learning to recognize ...
We present a probabilistic method for segmenting instances of a particular object category within an...
Object segmentation, a fundamental problem in computer vision, remains a challenging task after deca...
92 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.This dissertation explores the...
Multi-scale window scanning has been popular in object detection but it generalizes poorly to comple...
Abstract. Several formulations based on Random Fields (RFs) have been proposed for joint categorizat...
This paper presents a novel method for detecting and localizing objects of a visual category in clut...
International audienceObject models based on bag-of-words representations can achieve state-of-the-a...
This paper presents an approach to segment unseen objects of known categories. At the heart of the a...
International audienceThis paper addresses the problem of accurately segmenting instances of object ...
International audienceIn this article, we consider the task of category level object segmentation. O...
Abstract This paper addresses the problem of accurately segmenting instances of object classes in im...
Recently, there has been increasing interests in applying aspect models (e.g., PLSA and LDA) in imag...
This thesis deals with the interpretation of static images, with a focus on recognising object categ...
As humans, we have a remarkable ability of telling objects apart from cluttered backgroundand tracin...
International audienceIn recent years considerable advances have been made in learning to recognize ...
We present a probabilistic method for segmenting instances of a particular object category within an...
Object segmentation, a fundamental problem in computer vision, remains a challenging task after deca...
92 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.This dissertation explores the...
Multi-scale window scanning has been popular in object detection but it generalizes poorly to comple...
Abstract. Several formulations based on Random Fields (RFs) have been proposed for joint categorizat...
This paper presents a novel method for detecting and localizing objects of a visual category in clut...