%0 Conference Proceedings
%T Set-membership state estimation by solving data association
%+ Lab-STICC_ENSTAB_CID_PRASYS
%+ DGA Techniques Navales
%A Rohou, Simon
%A Desrochers, Benoît
%A Jaulin, Luc
%< avec comité de lecture
%( IEEE International Conference on Robotics and Automation (ICRA)
%B IEEE International Conference on Robotics and Automation (ICRA)
%C Paris, France
%8 2020-05-31
%D 2020
%Z Computer Science [cs]/Robotics [cs.RO]
%Z Mathematics [math]/Dynamical Systems [math.DS]
%Z Mathematics [math]/Numerical Analysis [math.NA]
%Z Engineering Sciences [physics]/Automatic
%Z Computer Science [cs]/Artificial Intelligence [cs.AI]Conference papers
%X This paper deals with the localization problem of a robot in an environment made of indistinguishable landmarks, and assuming the initial position of the vehicle is unknown. This scenario is typically encountered in underwater applications for which landmarks such as rocks all look alike. Furthermore, the position of the robot may be lost during a diving phase, which obliges us to consider unknown initial position. We propose a deterministic approach to solve simultaneously the problems of data association and state estimation, without combinatorial explosion. The efficiency of the method is shown on an actual experiment involving an underwater robot and sonar data.
%G English
%2 https://hal.science/hal-02904517/document
%2 https://hal.science/hal-02904517/file/datasso_paper.pdf
%L hal-02904517
%U https://hal.science/hal-02904517
%~ UNIV-BREST
%~ INSTITUT-TELECOM
%~ ENSTA-BRETAGNE
%~ CNRS
%~ UNIV-UBS
%~ ENSTA-BRETAGNE-STIC
%~ INSMI
%~ ENIB
%~ LAB-STICC
%~ TDS-MACS
%~ INSTITUTS-TELECOM
%~ ANR