Here we introduce the Delaunay Density Estimator Method. Its purpose is rendering a fully volume-covering reconstruction of a density field from a set of discrete data points sampling this field. Reconstructing density or intensity fields from a set of irregularly sampled data is a recurring key issue in operations on astronomical data sets, both in an observational context as well as in the context of numerical simulations. Our technique is based upon the stochastic geometric concept of the Delaunay tessellation generated by the point set. We shortly describe the method, and illustrate its virtues by means of an application to an N-body simulation of cosmic structure formation. The presented technique is a fully adaptive method: automatica...
[Abridged] We present a novel technique, dubbed FiEstAS, to estimate the underlying density field fr...
Abstract: We describe two new, stochastic-geometrical, methods to obtain reliable velocity field sta...
International audienceWe present DisPerSE, a novel approach to the coherent multiscale identificatio...
Here we introduce the Delaunay Density Estimator Method. Its purpose is rendering a fully volume-cov...
The application of Voronoi and Delaunay tessellation based methods for reconstructing continuous fie...
Abstract: The application of Voronoi and Delaunay tessellation based methods for reconstructing cont...
Optimally resolved one-dimensional density and velocity profiles through cosmological N-body simulat...
We present the results of a study comparing density maps reconstructed by the Delaunay Tessellation...
Multiclass density estimation is a method that can both estimate the density of a field and classify...
We present the results of a study comparing density maps reconstructed by the Delaunay Tessellation ...
We present the results of a study comparing density maps reconstructed by the Delaunay Tessellation ...
This study is the first in a series in which we analyse the structure and topology of the Cosmic Web...
This study is the first in a series in which we analyse the structure and topology of the Cosmic Web...
We describe two new - stochastic-geometrical - methods to obtain reliable velocity field statistics ...
We describe two new - stochastic-geometrical - methods to obtain reliable velocity field statistics ...
[Abridged] We present a novel technique, dubbed FiEstAS, to estimate the underlying density field fr...
Abstract: We describe two new, stochastic-geometrical, methods to obtain reliable velocity field sta...
International audienceWe present DisPerSE, a novel approach to the coherent multiscale identificatio...
Here we introduce the Delaunay Density Estimator Method. Its purpose is rendering a fully volume-cov...
The application of Voronoi and Delaunay tessellation based methods for reconstructing continuous fie...
Abstract: The application of Voronoi and Delaunay tessellation based methods for reconstructing cont...
Optimally resolved one-dimensional density and velocity profiles through cosmological N-body simulat...
We present the results of a study comparing density maps reconstructed by the Delaunay Tessellation...
Multiclass density estimation is a method that can both estimate the density of a field and classify...
We present the results of a study comparing density maps reconstructed by the Delaunay Tessellation ...
We present the results of a study comparing density maps reconstructed by the Delaunay Tessellation ...
This study is the first in a series in which we analyse the structure and topology of the Cosmic Web...
This study is the first in a series in which we analyse the structure and topology of the Cosmic Web...
We describe two new - stochastic-geometrical - methods to obtain reliable velocity field statistics ...
We describe two new - stochastic-geometrical - methods to obtain reliable velocity field statistics ...
[Abridged] We present a novel technique, dubbed FiEstAS, to estimate the underlying density field fr...
Abstract: We describe two new, stochastic-geometrical, methods to obtain reliable velocity field sta...
International audienceWe present DisPerSE, a novel approach to the coherent multiscale identificatio...