The notions of maximum and minimum are the key to the powerful tools of greyscale morphology. Unfortunately these notions do not carry over directly to tensor-valued data. Based upon the Loewner ordering for symmetric matrices this paper extends the maximum and minimum operation to the tensor-valued setting. This provides the ground to establish matrix-valued analogues of the basic morphological operations ranging from erosion/dilation to top hats. In contrast to former attempts to develop a morphological machinery for matrices, the novel definitions of maximal/minimal matrices depend continuously on the input data, a property crucial for the construction of morphological derivatives such as the Beucher gradient or a morphological Laplacian...
Mathematical morphology has been an area of intensive research over the last few years. Although man...
In continuous morphology two nonlinear partial differential equations (PDEs) together with specializ...
We develop a concept for the median filtering of tensor data. The main part of this concept is the d...
The notions of maximum and minimum are the key to the powerful tools of greyscale morphology. Unfort...
Positive semidefinite matrix fields are becoming increasingly important in digital imaging. One reas...
Matrix fields are becoming increasingly important in digital imaging. In order to perform shape anal...
Tensor fields are important in digital imaging and computer vision. Hence there is a demand for morp...
Mathematical morphology is a nonlinear image processing methodology based on computing min/max opera...
International audienceMathematical morphology is a nonlinear image processing methodology based on c...
International audienceMathematical morphology is a nonlinear image processing methodology based on c...
International audienceA formal denition of morphological operators in (max, min)-algebra is introduc...
Rotation invariance is an important property for operators on tensor fields, but up to now, most met...
Rotation invariance is an important property for operators on tensor fields, but up to now, most met...
International audienceWe introduce morphological methods to analyse images of positive semi-definite...
This paper proposes a new Tensorial Representation of HSI color images, where each pixel is a 2 x 2 ...
Mathematical morphology has been an area of intensive research over the last few years. Although man...
In continuous morphology two nonlinear partial differential equations (PDEs) together with specializ...
We develop a concept for the median filtering of tensor data. The main part of this concept is the d...
The notions of maximum and minimum are the key to the powerful tools of greyscale morphology. Unfort...
Positive semidefinite matrix fields are becoming increasingly important in digital imaging. One reas...
Matrix fields are becoming increasingly important in digital imaging. In order to perform shape anal...
Tensor fields are important in digital imaging and computer vision. Hence there is a demand for morp...
Mathematical morphology is a nonlinear image processing methodology based on computing min/max opera...
International audienceMathematical morphology is a nonlinear image processing methodology based on c...
International audienceMathematical morphology is a nonlinear image processing methodology based on c...
International audienceA formal denition of morphological operators in (max, min)-algebra is introduc...
Rotation invariance is an important property for operators on tensor fields, but up to now, most met...
Rotation invariance is an important property for operators on tensor fields, but up to now, most met...
International audienceWe introduce morphological methods to analyse images of positive semi-definite...
This paper proposes a new Tensorial Representation of HSI color images, where each pixel is a 2 x 2 ...
Mathematical morphology has been an area of intensive research over the last few years. Although man...
In continuous morphology two nonlinear partial differential equations (PDEs) together with specializ...
We develop a concept for the median filtering of tensor data. The main part of this concept is the d...