We investigate algorithms for reconstructing a convex body K in Rn from noisy measurements of its support function or its brightness function in k directions u1, . . . , uk. The key idea of these algorithms is to construct a convex polytope Pk whose support function (or brightness function) best approximates the given measurements in the directions u1, . . . , uk (in the least squares sense). The measurement errors are assumed to be stochastically independent and Gaussian. It is shown that this procedure is (strongly) consistent, meaning that, almost surely, Pk tends to K in the Hausdorff metric as k -\u3e ∞. Here some mild assumptions on the sequence (ui) of directions are needed. Using results from the theory of empirical processes, estim...
State of the art statistical estimators for high-dimensional problems take the form of regularized, ...
Distances to compact sets are widely used in the field of Topological Data Analysis for inferring ge...
The connection between the conditioning of a problem instance -- the sensitivity of a problem instan...
We consider the task of reconstructing polytopes with fixed facet directions from finitely many supp...
summary:To reconstruct an even Borel measure on the unit sphere from finitely many values of its sin...
International audienceWe study the problem of reconstructing a convex body using only a finite numbe...
Also issued as: CICS-P-16. Caption title.Bibliography: p. 32-33.Supported, in part, by a grant from ...
We consider the problem of reconstructing a planar convex set from noisy observations of its moments...
In this paper, we consider adaptive estimation of an unknown planar compact, convex set from noisy m...
Thesis (Ph.D.)--University of Washington, 2018We consider a few aspects of the interplay between con...
In this paper we present several algorithms for reconstructing 2D convex sets given support line mea...
We develop a framework for analyzing non-gaussian densities in terms of the curvature of the density...
International audienceIn this paper we introduce a new estimator for the support of a multivariatede...
The geometric problem of estimating an unknown compact convex set from evaluations of its support fu...
Abstract. We propose strongly consistent algorithms for reconstructing the characteristic function 1...
State of the art statistical estimators for high-dimensional problems take the form of regularized, ...
Distances to compact sets are widely used in the field of Topological Data Analysis for inferring ge...
The connection between the conditioning of a problem instance -- the sensitivity of a problem instan...
We consider the task of reconstructing polytopes with fixed facet directions from finitely many supp...
summary:To reconstruct an even Borel measure on the unit sphere from finitely many values of its sin...
International audienceWe study the problem of reconstructing a convex body using only a finite numbe...
Also issued as: CICS-P-16. Caption title.Bibliography: p. 32-33.Supported, in part, by a grant from ...
We consider the problem of reconstructing a planar convex set from noisy observations of its moments...
In this paper, we consider adaptive estimation of an unknown planar compact, convex set from noisy m...
Thesis (Ph.D.)--University of Washington, 2018We consider a few aspects of the interplay between con...
In this paper we present several algorithms for reconstructing 2D convex sets given support line mea...
We develop a framework for analyzing non-gaussian densities in terms of the curvature of the density...
International audienceIn this paper we introduce a new estimator for the support of a multivariatede...
The geometric problem of estimating an unknown compact convex set from evaluations of its support fu...
Abstract. We propose strongly consistent algorithms for reconstructing the characteristic function 1...
State of the art statistical estimators for high-dimensional problems take the form of regularized, ...
Distances to compact sets are widely used in the field of Topological Data Analysis for inferring ge...
The connection between the conditioning of a problem instance -- the sensitivity of a problem instan...