In this article we introduce nonlinear versions of the popular structure tensor, also known as second moment matrix. These nonlinear structure tensors replace the Gaussian smoothing of the classical structure tensor by discontinuity-preserving nonlinear diffusions. While nonlinear diffusion is a well-established tool for scalar and vector-valued data, it has not often been used for tensor images so far. Two types of nonlinear diffusion processes for tensor data are studied: an isotropic one with a scalar-valued diffusivity, and its anisotropic counterpart with a diffusion tensor. We prove that these schemes preserve the positive semidefiniteness of a matrix field and are therefore appropriate for smoothing structure tensor fields. The use o...
Diffusion tensor imaging (DTI) is a non-invasive quantitative method of characterizing tissue micro-...
Structure tensor images are obtained by a Gaussian smoothing of the dyadic product of gradient image...
Matrix-valued data sets arise in a number of applications including diffusion tensor magnetic resona...
In this article we introduce nonlinear versions of the popular structure tensor, also known as secon...
The structure tensor, also known as second moment matrix or Förstner interest operator, is a very po...
A low level image processing, for examples, image denoising and finding a local structure in an imag...
summary:This paper presents and summarize our results concerning the nonlinear tensor diffusion whic...
summary:This paper concerns with the finite volume scheme for nonlinear tensor diffusion in image pr...
This dissertation addresses the problem of adaptive image filtering. Although the topic has a long h...
Coherence-enhancing diffusion filtering is a striking application of the structure tensor concept in...
This work deals with image processing based upon non-linear diffusion PDEs (Partial Differential Equ...
Anisotropic Non-Linear Diffusion is a powerful image processing technique, which allows to simultane...
Methods based on partial differential equations (PDEs) belong to those image processing techniques t...
In spite of its lack of theoretical justification, nonlinear diffusion filtering has become a powerf...
In spite of its lack of theoretical justification, nonlinear diffusion filtering has become a powerf...
Diffusion tensor imaging (DTI) is a non-invasive quantitative method of characterizing tissue micro-...
Structure tensor images are obtained by a Gaussian smoothing of the dyadic product of gradient image...
Matrix-valued data sets arise in a number of applications including diffusion tensor magnetic resona...
In this article we introduce nonlinear versions of the popular structure tensor, also known as secon...
The structure tensor, also known as second moment matrix or Förstner interest operator, is a very po...
A low level image processing, for examples, image denoising and finding a local structure in an imag...
summary:This paper presents and summarize our results concerning the nonlinear tensor diffusion whic...
summary:This paper concerns with the finite volume scheme for nonlinear tensor diffusion in image pr...
This dissertation addresses the problem of adaptive image filtering. Although the topic has a long h...
Coherence-enhancing diffusion filtering is a striking application of the structure tensor concept in...
This work deals with image processing based upon non-linear diffusion PDEs (Partial Differential Equ...
Anisotropic Non-Linear Diffusion is a powerful image processing technique, which allows to simultane...
Methods based on partial differential equations (PDEs) belong to those image processing techniques t...
In spite of its lack of theoretical justification, nonlinear diffusion filtering has become a powerf...
In spite of its lack of theoretical justification, nonlinear diffusion filtering has become a powerf...
Diffusion tensor imaging (DTI) is a non-invasive quantitative method of characterizing tissue micro-...
Structure tensor images are obtained by a Gaussian smoothing of the dyadic product of gradient image...
Matrix-valued data sets arise in a number of applications including diffusion tensor magnetic resona...