This paper addresses the problem of unsupervised object localization in an image. Unlike previous supervised and weakly supervised algorithms that require bounding box or image level annotations for training classifiers, we propose a simple yet effective technique for localization using iterative spectral clustering. This iterative spectral clustering approach along with appropriate cluster selection strategy in each iteration naturally helps in searching of object region in the image. In order to estimate the final localization window, we group the proposals obtained from the iterative spectral clustering step based on the perceptual similarity, and average the coordinates of the proposals from the top scoring groups. We benchmark our algo...
International audienceIn this paper we present a combined approach for object localization and class...
Supervised classification is commonly used to produce a thematic map from hyperspectral data. A clas...
We present an image set classification algorithm based on unsupervised clustering of labeled trainin...
This paper addresses the problem of unsupervised object localization in an image. Unlike previous su...
In this thesis we address three fundamental problems in computer vision using kernel methods. We fir...
Recognizing the presence of object classes in an image, or image classification, has become an incre...
International audienceThis paper addresses unsupervised discovery and localization of dominant objec...
Abstract. Recognizing the presence of object classes in an image, or image clas-sification, has beco...
Manual labeling of large image sets is expensive Unsupervised methods are important, because ground ...
Object localization algorithms aim at finding out what objects exist in an image and where each obje...
Unsupervised localization and segmentation are long-standing computer vision challenges that involve...
This paper addresses unsupervised discovery and local-ization of dominant objects from a noisy image...
The goal of this paper is to evaluate and compare models and methods for learning to recognize basic...
National audienceThis paper presents a probabilistic approach for object localization which combines...
Object classification and localization are important components of image understanding. For a comput...
International audienceIn this paper we present a combined approach for object localization and class...
Supervised classification is commonly used to produce a thematic map from hyperspectral data. A clas...
We present an image set classification algorithm based on unsupervised clustering of labeled trainin...
This paper addresses the problem of unsupervised object localization in an image. Unlike previous su...
In this thesis we address three fundamental problems in computer vision using kernel methods. We fir...
Recognizing the presence of object classes in an image, or image classification, has become an incre...
International audienceThis paper addresses unsupervised discovery and localization of dominant objec...
Abstract. Recognizing the presence of object classes in an image, or image clas-sification, has beco...
Manual labeling of large image sets is expensive Unsupervised methods are important, because ground ...
Object localization algorithms aim at finding out what objects exist in an image and where each obje...
Unsupervised localization and segmentation are long-standing computer vision challenges that involve...
This paper addresses unsupervised discovery and local-ization of dominant objects from a noisy image...
The goal of this paper is to evaluate and compare models and methods for learning to recognize basic...
National audienceThis paper presents a probabilistic approach for object localization which combines...
Object classification and localization are important components of image understanding. For a comput...
International audienceIn this paper we present a combined approach for object localization and class...
Supervised classification is commonly used to produce a thematic map from hyperspectral data. A clas...
We present an image set classification algorithm based on unsupervised clustering of labeled trainin...