A non-parametric Bayesian model is proposed for processing multiple images. The analysis employs image features and, when present, the words associated with accompanying annotations. The model clusters the images into classes, and each image is segmented into a set of objects, also allowing the opportunity to assign a word to each object (localized labeling). Each object is assumed to be represented as a heterogeneous mix of components, with this realized via mixture models linking image features to object types. The number of image classes, num-ber of object types, and the characteristics of the object-feature mixture models are inferred nonparametrically. To constitute spatially contiguous objects, a new logistic stick-breaking process is...
<p>In this thesis, temporal and spatial dependence are considered within nonparametric priors to hel...
Previous research on automatic image annotation has shown that accurate estimates of the class condi...
International audienceOne of the central issues in statistics and machine learning is how to select...
We consider the problem of multiband image clustering and segmentation. We propose a new methodology...
International audienceJointly segmenting a collection of images with shared classes is expected to y...
Abstract—A new Bayesian model is proposed for image seg-mentation based upon Gaussian mixture models...
Perceptual grouping is the process bywhich the visual system organizes the image into distinct objec...
We attack the problem of general object recognition by learning probabilistic, nonlinear object clas...
In this paper, we present a Bayesian framework for image segmentation based upon spatial nonparametr...
A nonparametric Bayesian model for attribute-based object recognition and image-based class attribu...
Perceptual grouping is the process by which a set of image elements is divided into distinct “object...
We approach the object recognition problem as the process of attaching meaningful labels to specific...
Image segmentation algorithms partition the set of pixels of an image into a specific number of diff...
International audienceA combination of the hierarchical Dirichlet process (HDP) and the Potts model ...
The automated segmentation of images into semantically meaningful parts requires shape information s...
<p>In this thesis, temporal and spatial dependence are considered within nonparametric priors to hel...
Previous research on automatic image annotation has shown that accurate estimates of the class condi...
International audienceOne of the central issues in statistics and machine learning is how to select...
We consider the problem of multiband image clustering and segmentation. We propose a new methodology...
International audienceJointly segmenting a collection of images with shared classes is expected to y...
Abstract—A new Bayesian model is proposed for image seg-mentation based upon Gaussian mixture models...
Perceptual grouping is the process bywhich the visual system organizes the image into distinct objec...
We attack the problem of general object recognition by learning probabilistic, nonlinear object clas...
In this paper, we present a Bayesian framework for image segmentation based upon spatial nonparametr...
A nonparametric Bayesian model for attribute-based object recognition and image-based class attribu...
Perceptual grouping is the process by which a set of image elements is divided into distinct “object...
We approach the object recognition problem as the process of attaching meaningful labels to specific...
Image segmentation algorithms partition the set of pixels of an image into a specific number of diff...
International audienceA combination of the hierarchical Dirichlet process (HDP) and the Potts model ...
The automated segmentation of images into semantically meaningful parts requires shape information s...
<p>In this thesis, temporal and spatial dependence are considered within nonparametric priors to hel...
Previous research on automatic image annotation has shown that accurate estimates of the class condi...
International audienceOne of the central issues in statistics and machine learning is how to select...