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Towards total coverage in autonomous exploration for UGV in 2.5D dense clutter environment
Authors
Denisov E.
Magid E.
+4 more
Sagitov A.
Su K.
Svinin M.
Yakovlev K.
Publication date
1 January 2019
Publisher
Abstract
Copyright © 2019 by SCITEPRESS – Science and Technology Publications, Lda. All rights reserved Recent developments in 3D reconstruction systems enable to capture an environment in great detail. Several studies have provided algorithms that deal with a path-planning problem of total coverage of observable space in time-efficient manner. However, not much work was done in the area of globally optimal solutions in dense clutter environments. This paper presents a novel solution for autonomous exploration of a cluttered 2.5D environment using an unmanned ground mobile vehicle, where robot locomotion is limited to a 2D plane, while obstacles have a 3D shape. Our exploration algorithm increases coverage of 3D environment mapping comparatively to other currently available algorithms. The algorithm was implemented and tested in randomly generated dense clutter environments in MATLAB
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National Open Repository Aggregator (NORA)
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oai:rour.neicon.ru:rour/198018
Last time updated on 04/04/2020
Kazan Federal University Digital Repository
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oai:dspace.kpfu.ru:net/156646
Last time updated on 21/02/2020