Result: Analysis of Scalar Fields over Point Cloud Data

Title:
Analysis of Scalar Fields over Point Cloud Data
Contributors:
Geometric computing (GEOMETRICA), Centre Inria d'Université Côte d'Azur, Institut National de Recherche en Informatique et en Automatique (Inria)-Institut National de Recherche en Informatique et en Automatique (Inria)-Centre Inria de Saclay, Institut National de Recherche en Informatique et en Automatique (Inria), Geometric Computation Group [Stanford], Computer Science Department [Stanford], Stanford University-Stanford University, INRIA, Associate Team "TGDA: Topological and Geometric Data Analysis"
Source:
[Research Report] RR-6576, INRIA. 2008
Publisher Information:
CCSD, 2008.
Publication Year:
2008
Collection:
collection:INRIA
collection:INRIA-SOPHIA
collection:INRIA-RRRT
collection:INRIA-SACLAY
collection:INRIASO
collection:INRIA_TEST
collection:TESTALAIN1
collection:INRIA2
collection:LARA
collection:UNIV-COTEDAZUR
collection:INRIA-ETATSUNIS
Original Identifier:
HAL:
Document Type:
Report report<br />Reports
Language:
English
Rights:
info:eu-repo/semantics/OpenAccess
Accession Number:
edshal.inria.00294591v3
Database:
HAL

Further Information

Given a real-valued function f defined over some metric space X, is it possible to recover some structural information about f from the sole information of its values at a finite set L of sample points, whose pairwise distances in X are given? We provide a positive answer to this question. More precisely, taking advantage of recent advances on the front of stability for persistence diagrams, we introduce a novel algebraic construction, based on a pair of nested families of simplicial complexes built on top of the point cloud L, from which the persistence diagram of f can be faithfully approximated. We derive from this construction a series of algorithms for the analysis of scalar fields from point cloud data. These algorithms are simple and easy to implement, they have reasonable complexities, and they come with theoretical guarantees. To illustrate the genericity and practicality of the approach, we also present some experimental results obtained in various applications, ranging from clustering to sensor networks.