We introduce a new method that identifies and tracks features in arbitrary dimensions using the merge tree—a structure for identifying topological features based on thresholding in scalar fields. This method analyzes the evolution of features of the function by tracking changes in the merge tree and relates features by matching subtrees between consecutive time steps. Using the time-varying merge tree, we present a structural visualization of the changing function that illustrates both features and their temporal evolution. We demonstrate the utility of our approach by applying it to temporal cluster analysis of high-dimensional point clouds
This manuscript presents a topology-based analysis and visualization framework that enables the effe...
Improved simulations and sensors are producing datasets whose increasing complexity exhausts our abi...
thesisThe ever-increasing amounts of data generated by scientific simulations, coupled with system I...
Scalar fields occur quite commonly in several application areas in both static and time-dependent fo...
Creating a static visualization for a time-dependent scalar field is a non-trivial task, yet very in...
Topology driven methods for analysis of scalar fields often begin with an exploration of an abstract...
This thesis is about visualizing a kind of data that is trivial to process by computers but difficul...
We consider temporally evolving trees with changing topology and data: tree nodes may persist for a ...
In this work we define a novel metric structure to work with functions defined on merge trees. The m...
We present a method to find repeating topological structures in scalar data sets. More precisely, we...
Large-scale simulations are increasingly being used to study complex scientific and engineering phen...
We present a method to find repeating topological structures in scalar data sets. More precisely, we...
International audienceTopological methods for data analysis have proven to be useful in multiple con...
Merge trees are a type of graph-based topological summary that tracks the evolution of connected com...
This manuscript presents a topology-based analysis and visualization framework that enables the effe...
Improved simulations and sensors are producing datasets whose increasing complexity exhausts our abi...
thesisThe ever-increasing amounts of data generated by scientific simulations, coupled with system I...
Scalar fields occur quite commonly in several application areas in both static and time-dependent fo...
Creating a static visualization for a time-dependent scalar field is a non-trivial task, yet very in...
Topology driven methods for analysis of scalar fields often begin with an exploration of an abstract...
This thesis is about visualizing a kind of data that is trivial to process by computers but difficul...
We consider temporally evolving trees with changing topology and data: tree nodes may persist for a ...
In this work we define a novel metric structure to work with functions defined on merge trees. The m...
We present a method to find repeating topological structures in scalar data sets. More precisely, we...
Large-scale simulations are increasingly being used to study complex scientific and engineering phen...
We present a method to find repeating topological structures in scalar data sets. More precisely, we...
International audienceTopological methods for data analysis have proven to be useful in multiple con...
Merge trees are a type of graph-based topological summary that tracks the evolution of connected com...
This manuscript presents a topology-based analysis and visualization framework that enables the effe...
Improved simulations and sensors are producing datasets whose increasing complexity exhausts our abi...
thesisThe ever-increasing amounts of data generated by scientific simulations, coupled with system I...