Natural images arise from complicated processes involving many factors of variation. They reflect the wealth of shapes and appearances of objects in our three-dimensional world, but they are also affected by factors such as distortions due to perspective, occlusions, and illumination, giving rise to structure with regularities at many different levels. Prior knowledge about these regularities and suitable representations that allow efficient reasoning about the properties of a visual scene are important for many image processing and computer vision tasks. This thesis focuses on models of image structure at intermediate levels of complexity as required, for instance, for image inpainting or segmentation. It aims at developing generative, pro...
Prior models of image or scene structure are useful for dealing with "noise" and ambiguity that occu...
Scene understanding, such as image classification and semantic image segmentation, has been a challe...
Developing statistical models and associated learning algorithms for the rich visual patterns in nat...
Natural images arise from complicated processes involving many factors of variation. They reflect t...
<p>Scene perception is a fundamental aspect of vision. Humans are capable of analyzing behaviorally-...
We evaluate the ability of the popular Field-of-Experts (FoE) to model structure in images. As a tes...
This thesis considers statistical modelling of natural image data. Obtaining advances in this field ...
Computer vision has grown tremendously in the past two decades. De-spite all efforts, existing attem...
We present a method of recognizing three-dimensional objects in intensity images of cluttered scene...
Visual object recognition is one of the key human capabilities that we would like machines to have. ...
This thesis is concerned with the problem of how to outline regions of interest in medical images, w...
We present a generative model of images that explicitly reasons over the set of objects they show. O...
We explore recently proposed Bayesian nonparametric models of image partitions, based on spatially d...
136 pagesVisual content is probably the most important medium by which we understand the world. In t...
Digital representations of 3D shapes are becoming increasingly useful in several emerging applicatio...
Prior models of image or scene structure are useful for dealing with "noise" and ambiguity that occu...
Scene understanding, such as image classification and semantic image segmentation, has been a challe...
Developing statistical models and associated learning algorithms for the rich visual patterns in nat...
Natural images arise from complicated processes involving many factors of variation. They reflect t...
<p>Scene perception is a fundamental aspect of vision. Humans are capable of analyzing behaviorally-...
We evaluate the ability of the popular Field-of-Experts (FoE) to model structure in images. As a tes...
This thesis considers statistical modelling of natural image data. Obtaining advances in this field ...
Computer vision has grown tremendously in the past two decades. De-spite all efforts, existing attem...
We present a method of recognizing three-dimensional objects in intensity images of cluttered scene...
Visual object recognition is one of the key human capabilities that we would like machines to have. ...
This thesis is concerned with the problem of how to outline regions of interest in medical images, w...
We present a generative model of images that explicitly reasons over the set of objects they show. O...
We explore recently proposed Bayesian nonparametric models of image partitions, based on spatially d...
136 pagesVisual content is probably the most important medium by which we understand the world. In t...
Digital representations of 3D shapes are becoming increasingly useful in several emerging applicatio...
Prior models of image or scene structure are useful for dealing with "noise" and ambiguity that occu...
Scene understanding, such as image classification and semantic image segmentation, has been a challe...
Developing statistical models and associated learning algorithms for the rich visual patterns in nat...