Spatial change detection using normal distributions transform

Abstract Spatial change detection is a fundamental technique for finding the differences between two or more pieces of geometrical information. This technique is critical in some robotic applications, such as search and rescue, security, and surveillance. In these applications, it is desirable to fi...

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Main Authors: Ukyo Katsura, Kohei Matsumoto, Akihiro Kawamura, Tomohide Ishigami, Tsukasa Okada, Ryo Kurazume
Format: Article
Language:English
Published: SpringerOpen 2019-12-01
Series:ROBOMECH Journal
Subjects:
Online Access:https://doi.org/10.1186/s40648-019-0148-8
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spelling doaj-abdc692600fa4eb18536899930e2be792020-12-20T12:41:46ZengSpringerOpenROBOMECH Journal2197-42252019-12-016111310.1186/s40648-019-0148-8Spatial change detection using normal distributions transformUkyo Katsura0Kohei Matsumoto1Akihiro Kawamura2Tomohide Ishigami3Tsukasa Okada4Ryo Kurazume5Kyushu UniversityKyushu UniversityKyushu UniversityPanasonic Inc.Panasonic Inc.Kyushu UniversityAbstract Spatial change detection is a fundamental technique for finding the differences between two or more pieces of geometrical information. This technique is critical in some robotic applications, such as search and rescue, security, and surveillance. In these applications, it is desirable to find the differences quickly and robustly. The present paper proposes a fast and robust spatial change detection technique for a mobile robot using an on-board range sensors and a highly precise 3D map created by a 3D laser scanner. This technique first converts point clouds in a map and measured data to grid data (ND voxels) using normal distributions transform. The voxels in the map and the measured data are then compared according to the features of the ND voxels. Three techniques are introduced to make the proposed system robust for noise, that is, classification of point distribution, overlapping of voxels, and voting using consecutive sensing. The present paper shows the results of indoor and outdoor experiments using an RGB-D camera and an omni-directional laser scanner mounted on a mobile robot to confirm the performance of the proposed technique.https://doi.org/10.1186/s40648-019-0148-8Change detectionLaser scannerRGB-D cameraNormal distributions transform
collection DOAJ
language English
format Article
sources DOAJ
author Ukyo Katsura
Kohei Matsumoto
Akihiro Kawamura
Tomohide Ishigami
Tsukasa Okada
Ryo Kurazume
spellingShingle Ukyo Katsura
Kohei Matsumoto
Akihiro Kawamura
Tomohide Ishigami
Tsukasa Okada
Ryo Kurazume
Spatial change detection using normal distributions transform
ROBOMECH Journal
Change detection
Laser scanner
RGB-D camera
Normal distributions transform
author_facet Ukyo Katsura
Kohei Matsumoto
Akihiro Kawamura
Tomohide Ishigami
Tsukasa Okada
Ryo Kurazume
author_sort Ukyo Katsura
title Spatial change detection using normal distributions transform
title_short Spatial change detection using normal distributions transform
title_full Spatial change detection using normal distributions transform
title_fullStr Spatial change detection using normal distributions transform
title_full_unstemmed Spatial change detection using normal distributions transform
title_sort spatial change detection using normal distributions transform
publisher SpringerOpen
series ROBOMECH Journal
issn 2197-4225
publishDate 2019-12-01
description Abstract Spatial change detection is a fundamental technique for finding the differences between two or more pieces of geometrical information. This technique is critical in some robotic applications, such as search and rescue, security, and surveillance. In these applications, it is desirable to find the differences quickly and robustly. The present paper proposes a fast and robust spatial change detection technique for a mobile robot using an on-board range sensors and a highly precise 3D map created by a 3D laser scanner. This technique first converts point clouds in a map and measured data to grid data (ND voxels) using normal distributions transform. The voxels in the map and the measured data are then compared according to the features of the ND voxels. Three techniques are introduced to make the proposed system robust for noise, that is, classification of point distribution, overlapping of voxels, and voting using consecutive sensing. The present paper shows the results of indoor and outdoor experiments using an RGB-D camera and an omni-directional laser scanner mounted on a mobile robot to confirm the performance of the proposed technique.
topic Change detection
Laser scanner
RGB-D camera
Normal distributions transform
url https://doi.org/10.1186/s40648-019-0148-8
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