Creating a static visualization for a time-dependent scalar field is a non-trivial task, yet very insightful as it shows the dynamics in one picture. Existing approaches are based on a linearization of the domain or on feature tracking. Domain linearizations use space-filling curves to place all sample points into a 1D domain, thereby breaking up individual features. Feature tracking methods explicitly respect feature continuity in space and time, but generally neglect the data context in which those features live. We present a feature-based linearization of the spatial domain that keeps features together and preserves their context by involving all data samples. We use augmented merge trees to linearize the domain and show that our lineari...
Large-scale simulations are increasingly being used to study complex scientific and engineering phen...
In this work we define a novel metric structure to work with functions defined on merge trees. The m...
Understanding how data evolves in space and time is an essential task in many application domains. D...
Creating a static visualization for a time-dependent scalar field is a non-trivial task, yet very in...
We introduce a new method that identifies and tracks features in arbitrary dimensions using the merg...
We consider temporally evolving trees with changing topology and data: tree nodes may persist for a ...
Scalar fields occur quite commonly in several application areas in both static and time-dependent fo...
Topology driven methods for analysis of scalar fields often begin with an exploration of an abstract...
When it comes to tools and techniques designed to help understanding complex abstract data, visualiz...
This thesis considers the problem of modeling and analysis of continuous, locally-linear, multi-dime...
We propose a novel approach to reconstructing curvilinear tree structures evolving over time, such a...
Abstract: In this paper we introduce a technique for visualizing the dynamics of quantitative data i...
We review a range of temporal data visualization techniques through a new lens, by describing them a...
We review a range of temporal data visualization techniques through a new lens, by describing them a...
It is often necessary to analyze spatio-Temporal data such as traffic flow, air pollution, and vehic...
Large-scale simulations are increasingly being used to study complex scientific and engineering phen...
In this work we define a novel metric structure to work with functions defined on merge trees. The m...
Understanding how data evolves in space and time is an essential task in many application domains. D...
Creating a static visualization for a time-dependent scalar field is a non-trivial task, yet very in...
We introduce a new method that identifies and tracks features in arbitrary dimensions using the merg...
We consider temporally evolving trees with changing topology and data: tree nodes may persist for a ...
Scalar fields occur quite commonly in several application areas in both static and time-dependent fo...
Topology driven methods for analysis of scalar fields often begin with an exploration of an abstract...
When it comes to tools and techniques designed to help understanding complex abstract data, visualiz...
This thesis considers the problem of modeling and analysis of continuous, locally-linear, multi-dime...
We propose a novel approach to reconstructing curvilinear tree structures evolving over time, such a...
Abstract: In this paper we introduce a technique for visualizing the dynamics of quantitative data i...
We review a range of temporal data visualization techniques through a new lens, by describing them a...
We review a range of temporal data visualization techniques through a new lens, by describing them a...
It is often necessary to analyze spatio-Temporal data such as traffic flow, air pollution, and vehic...
Large-scale simulations are increasingly being used to study complex scientific and engineering phen...
In this work we define a novel metric structure to work with functions defined on merge trees. The m...
Understanding how data evolves in space and time is an essential task in many application domains. D...