Many real life problems can be represented by an ordered sequence of digital images. At a given pixel a specific time course is observed which is morphologically related to the time courses at neighbor pixels. Useful infor-mation can be usually extracted from a set of such observations if we are able to classify pixels in groups, according to some features of interest for the final user. In a continuous setting we can formalize the problem by assuming to observe a noisy version of a positive real function defined on a bounded set T ×Ω ⊂ IR × IR2, parameterized by a vector of unknown functions defined on IR 2 with discontinuities along regular curves in Ω which separate regions with different features. Suitable regularity conditions on the p...
We introduce a functional for image segmentation which takes into account the transparencies (or sha...
In this paper, a new method for the segmentation of natural images is proposed. Original images g(x,...
In this note we will discuss how image segmentation can be handled by using Bayesian learning and in...
The image sequences elaboration, which represent our main topic, concerns the identification of cont...
This talk deals with free discontinuity problems related to image segmentation, focussing on the mat...
The text covers the theory of the Mumford and Shah model for digital image segmentation. The strong ...
In this thesis, we study modern variational and partial differential equation (PDE)-based methods fo...
This paper addresses the problem of segmenting a signal or an image into homogeneous regions across ...
We analyze a variational approach to image segmentation that is based on a strictly convex non-quadr...
Variational models for image segmentation aim to recover a piecewise smooth approximation of a given...
Image segmentation is a central topic in image processing and computer vision and a key issue in man...
We introduce a functional for image segmentation which takes into account the transparencies (or sha...
Diagnosis by medical images implies the expert ability of recognizing patterns of interest in terms ...
The main goal of this thesis is to develop robust computational methods to address some of the open ...
We introduce a functional for image segmentation which takes into account the transparencies (or sha...
In this paper, a new method for the segmentation of natural images is proposed. Original images g(x,...
In this note we will discuss how image segmentation can be handled by using Bayesian learning and in...
The image sequences elaboration, which represent our main topic, concerns the identification of cont...
This talk deals with free discontinuity problems related to image segmentation, focussing on the mat...
The text covers the theory of the Mumford and Shah model for digital image segmentation. The strong ...
In this thesis, we study modern variational and partial differential equation (PDE)-based methods fo...
This paper addresses the problem of segmenting a signal or an image into homogeneous regions across ...
We analyze a variational approach to image segmentation that is based on a strictly convex non-quadr...
Variational models for image segmentation aim to recover a piecewise smooth approximation of a given...
Image segmentation is a central topic in image processing and computer vision and a key issue in man...
We introduce a functional for image segmentation which takes into account the transparencies (or sha...
Diagnosis by medical images implies the expert ability of recognizing patterns of interest in terms ...
The main goal of this thesis is to develop robust computational methods to address some of the open ...
We introduce a functional for image segmentation which takes into account the transparencies (or sha...
In this paper, a new method for the segmentation of natural images is proposed. Original images g(x,...
In this note we will discuss how image segmentation can be handled by using Bayesian learning and in...