Descriptions of physical properties of visible surfaces, such as their distance and the presence of edges, must be recovered from the primary image data. Computational vision aims to understand how such descriptions can be obtained from inherently ambiguous and noisy data. A recent development in this field sees early vision as a set of ill-posed problems, which can be solved by the use of regularization methods. These lead to algorithms and parallel analog circuits that can solve ‘ill-posed problems’ and which are suggestive of neural equivalents in the brain
We survey aspects of approximation and complexity theory and their application to the numerous compu...
One of the best definitions of early vision is that it is inverse optics --- a set of computationa...
The computational approach to the study of vision inquires directly into the sort of information p...
Descriptions of physical properties of visible surfaces, such as their distance and the presence of ...
We outline a theoretical framework that leads from the computational nature of early vision to algor...
The first processing stage in computational vision, also called early vision, consists in decoding...
Regularization is becoming a popular framework for describing and solving many ill-posed problems of...
A large gap exists at present between computational theories of vision and their possible implemen...
Computer vision requires the solution of many ill-posed problems such as optical flow, structure fro...
We formulate several problems in early vision as inverse problems. Among the solution methods we r...
Standard regularization methods can be used to solve satisfactorily several problems in early vision...
Marr's philosophy has played a significant role in studies of the brain, notably in the vision studi...
We study the problem of the reconstruction of achromatic surface properties, namely brightness. We s...
This thesis presents algorithms for visual surface reconstruction from scattered data, explicitly de...
Many problems of early vision are ill-posed; to recover unique stable solutions regularization tec...
We survey aspects of approximation and complexity theory and their application to the numerous compu...
One of the best definitions of early vision is that it is inverse optics --- a set of computationa...
The computational approach to the study of vision inquires directly into the sort of information p...
Descriptions of physical properties of visible surfaces, such as their distance and the presence of ...
We outline a theoretical framework that leads from the computational nature of early vision to algor...
The first processing stage in computational vision, also called early vision, consists in decoding...
Regularization is becoming a popular framework for describing and solving many ill-posed problems of...
A large gap exists at present between computational theories of vision and their possible implemen...
Computer vision requires the solution of many ill-posed problems such as optical flow, structure fro...
We formulate several problems in early vision as inverse problems. Among the solution methods we r...
Standard regularization methods can be used to solve satisfactorily several problems in early vision...
Marr's philosophy has played a significant role in studies of the brain, notably in the vision studi...
We study the problem of the reconstruction of achromatic surface properties, namely brightness. We s...
This thesis presents algorithms for visual surface reconstruction from scattered data, explicitly de...
Many problems of early vision are ill-posed; to recover unique stable solutions regularization tec...
We survey aspects of approximation and complexity theory and their application to the numerous compu...
One of the best definitions of early vision is that it is inverse optics --- a set of computationa...
The computational approach to the study of vision inquires directly into the sort of information p...