Study of symmetric or repeating patterns in scalar fields is important in scientific data analysis because it gives deep insights into the properties of the underlying phenomenon. Though geometric symmetry has been well studied within areas like shape processing, identifying symmetry in scalar fields has remained largely unexplored due to the high computational cost of the associated algorithms. We propose a computationally efficient algorithm for detecting symmetric patterns in a scalar field distribution by analysing the topology of level sets of the scalar field. Our algorithm computes the contour tree of a given scalar field and identifies subtrees that are similar. We define a robust similarity measure for comparing subtrees of the con...
We suggest a set of complex differential operators that can be used to produce and filter dense orie...
We propose a perceptually plausible mechanism for symmetry detection in natural images that consists...
"Symmetry is a complexity-reducing concept [...]; seek it every-where." - Alan J. Perlis Many natura...
Study of symmetric or repeating patterns in scalar fields is important in scientific data analysis b...
Scalar fields are used to represent physical quantities measured over a domain of interest. Study of...
Identifying symmetry in scalar fields is a recent area of research in scientific visualization and c...
The complexity in visualizing volumetric data often limits the scope of direct exploration of scalar...
Visualizing symmetric patterns in the data often helps the domain scientists make important observat...
In topological data analysis and visualization, topological descriptors such as persistence diagrams...
Scalar fields occur quite commonly in several application areas in both static and time-dependent fo...
Abstract. In this work we propose a learning-based approach to sym-metry detection in natural images...
Feature-based symmetry detection algorithms have become popular amongst researchers due to their dom...
International audienceIn this work we propose a learning-based approach to sym- metry detection in n...
The salience of symmetry for patterns in the human visual system has been noted by a number of obser...
Scientific phenomena are often studied through collections of related scalar fields such as data gen...
We suggest a set of complex differential operators that can be used to produce and filter dense orie...
We propose a perceptually plausible mechanism for symmetry detection in natural images that consists...
"Symmetry is a complexity-reducing concept [...]; seek it every-where." - Alan J. Perlis Many natura...
Study of symmetric or repeating patterns in scalar fields is important in scientific data analysis b...
Scalar fields are used to represent physical quantities measured over a domain of interest. Study of...
Identifying symmetry in scalar fields is a recent area of research in scientific visualization and c...
The complexity in visualizing volumetric data often limits the scope of direct exploration of scalar...
Visualizing symmetric patterns in the data often helps the domain scientists make important observat...
In topological data analysis and visualization, topological descriptors such as persistence diagrams...
Scalar fields occur quite commonly in several application areas in both static and time-dependent fo...
Abstract. In this work we propose a learning-based approach to sym-metry detection in natural images...
Feature-based symmetry detection algorithms have become popular amongst researchers due to their dom...
International audienceIn this work we propose a learning-based approach to sym- metry detection in n...
The salience of symmetry for patterns in the human visual system has been noted by a number of obser...
Scientific phenomena are often studied through collections of related scalar fields such as data gen...
We suggest a set of complex differential operators that can be used to produce and filter dense orie...
We propose a perceptually plausible mechanism for symmetry detection in natural images that consists...
"Symmetry is a complexity-reducing concept [...]; seek it every-where." - Alan J. Perlis Many natura...