Improved simulations and sensors are producing datasets whose increasing complexity exhausts our ability to visualize and comprehend them directly. To cope with this problem, we can detect and extract significant features in the data and use them as the basis for subsequent analysis. Topological methods are valuable in this context because they provide robust and general feature definitions. As the growth of serial computational power has stalled, data analysis is becoming increasingly dependent on massively parallel machines. To satisfy the computational demand created by complex datasets, algorithms need to effectively utilize these computer architectures. The main strength of topological methods, their emphasis on global information, tur...
Abstract—Topology-based techniques are useful for multi-scale exploration of the feature space of sc...
Vector fields occur in many of the problems in science and engineering. In combustion processes, for...
In this work we define a novel metric structure to work with functions defined on merge trees. The m...
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...
Parallel implementation of topological algorithms is highly desirable, but the challenges, from reco...
Topology driven methods for analysis of scalar fields often begin with an exploration of an abstract...
Topological Data Analysis requires efficient algorithms to deal with the continuously increasing siz...
International audienceTopological methods for data analysis have proven to be useful in multiple con...
As data sets increase in size beyond the petabyte, it is increasingly important to have automated me...
Component trees are region-based representations that encode the inclusion relationship of the thres...
As data sets grow to exascale, automated data analysis and visualization are increasingly important,...
L'analyse de données topologique nécessite des algorithmes de plus en plus efficaces pour être capab...
This system paper presents the Topology ToolKit (TTK), a software platform designed for the topologi...
Image processing is a fundamental operation in many real time applications, where lots of parallelis...
Abstract—Topology-based techniques are useful for multi-scale exploration of the feature space of sc...
Vector fields occur in many of the problems in science and engineering. In combustion processes, for...
In this work we define a novel metric structure to work with functions defined on merge trees. The m...
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...
Parallel implementation of topological algorithms is highly desirable, but the challenges, from reco...
Topology driven methods for analysis of scalar fields often begin with an exploration of an abstract...
Topological Data Analysis requires efficient algorithms to deal with the continuously increasing siz...
International audienceTopological methods for data analysis have proven to be useful in multiple con...
As data sets increase in size beyond the petabyte, it is increasingly important to have automated me...
Component trees are region-based representations that encode the inclusion relationship of the thres...
As data sets grow to exascale, automated data analysis and visualization are increasingly important,...
L'analyse de données topologique nécessite des algorithmes de plus en plus efficaces pour être capab...
This system paper presents the Topology ToolKit (TTK), a software platform designed for the topologi...
Image processing is a fundamental operation in many real time applications, where lots of parallelis...
Abstract—Topology-based techniques are useful for multi-scale exploration of the feature space of sc...
Vector fields occur in many of the problems in science and engineering. In combustion processes, for...
In this work we define a novel metric structure to work with functions defined on merge trees. The m...