Real‐time moving object detection and removal from 3D pointcloud data for humanoid navigation in dense GPS‐denied environments

Abstract Robot perception in dynamic confined unstructured environments is a challenging task due to unanticipated changes that take place in the surroundings. Although 3D perception sensors are able to capture terrain topology with high precision, the interim variations between collected sensor dat...

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Main Authors: Prabin Kumar Rath, Alejandro Ramirez‐Serrano, Dilip Kumar Pratihar
Format: Article
Language:English
Published: Wiley 2020-12-01
Series:Engineering Reports
Subjects:
Online Access:https://doi.org/10.1002/eng2.12275
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spelling doaj-527f34392dae4cedaa72748d88f51b942021-02-05T06:55:41ZengWileyEngineering Reports2577-81962020-12-01212n/an/a10.1002/eng2.12275Real‐time moving object detection and removal from 3D pointcloud data for humanoid navigation in dense GPS‐denied environmentsPrabin Kumar Rath0Alejandro Ramirez‐Serrano1Dilip Kumar Pratihar2Department of Computer Science and Engineering National Institute of Technology Rourkela IndiaDepartment of Mechanical and Manufacturing Engineering University of Calgary Calgary Alberta CanadaDepartment of Mechanical Engineering Indian Institute of Technology ‐ Kharagpur West Bengal IndiaAbstract Robot perception in dynamic confined unstructured environments is a challenging task due to unanticipated changes that take place in the surroundings. Although 3D perception sensors are able to capture terrain topology with high precision, the interim variations between collected sensor data that are caused due to the motion of moving entities with respect to the robot lead to noisy mappings of the environment. In this article, a real‐time 3D perception filter is presented that is capable of detecting and eliminating moving point clusters from the input pointcloud data collected in an indoor environment. Using LiDAR and IMU sensors the proposed mechanism can help in precise 3D pointcloud map generation in dynamic and unstructured GPS‐denied environments. In this article, a novel approach has been proposed based on the concepts of data clustering, relative motion, pointcloud change detection and confidence tracking. The novelty of this approach lies in its ability to detect within cluster movements and the proposal of a generic tracking method for handling inconsistent motion of objects typically found in indoor environments. For the detection of moving objects, the proposed mechanism does not require any prior knowledge about the target entity. For pointcloud preprocessing, a ground plane removal approach has been proposed based on voxel grid covariance along the axis normal to the ground. The approach was experimented on a humanoid robot in indoor office environments using Velodyne VLP‐16 LiDAR and Intel T265 IMU. The results show that the proposed approach is efficient in detecting indoor moving objects in real time.https://doi.org/10.1002/eng2.12275confidence trackingDATMOeuclidean clusteringpose transformationrelative motionSLAM
collection DOAJ
language English
format Article
sources DOAJ
author Prabin Kumar Rath
Alejandro Ramirez‐Serrano
Dilip Kumar Pratihar
spellingShingle Prabin Kumar Rath
Alejandro Ramirez‐Serrano
Dilip Kumar Pratihar
Real‐time moving object detection and removal from 3D pointcloud data for humanoid navigation in dense GPS‐denied environments
Engineering Reports
confidence tracking
DATMO
euclidean clustering
pose transformation
relative motion
SLAM
author_facet Prabin Kumar Rath
Alejandro Ramirez‐Serrano
Dilip Kumar Pratihar
author_sort Prabin Kumar Rath
title Real‐time moving object detection and removal from 3D pointcloud data for humanoid navigation in dense GPS‐denied environments
title_short Real‐time moving object detection and removal from 3D pointcloud data for humanoid navigation in dense GPS‐denied environments
title_full Real‐time moving object detection and removal from 3D pointcloud data for humanoid navigation in dense GPS‐denied environments
title_fullStr Real‐time moving object detection and removal from 3D pointcloud data for humanoid navigation in dense GPS‐denied environments
title_full_unstemmed Real‐time moving object detection and removal from 3D pointcloud data for humanoid navigation in dense GPS‐denied environments
title_sort real‐time moving object detection and removal from 3d pointcloud data for humanoid navigation in dense gps‐denied environments
publisher Wiley
series Engineering Reports
issn 2577-8196
publishDate 2020-12-01
description Abstract Robot perception in dynamic confined unstructured environments is a challenging task due to unanticipated changes that take place in the surroundings. Although 3D perception sensors are able to capture terrain topology with high precision, the interim variations between collected sensor data that are caused due to the motion of moving entities with respect to the robot lead to noisy mappings of the environment. In this article, a real‐time 3D perception filter is presented that is capable of detecting and eliminating moving point clusters from the input pointcloud data collected in an indoor environment. Using LiDAR and IMU sensors the proposed mechanism can help in precise 3D pointcloud map generation in dynamic and unstructured GPS‐denied environments. In this article, a novel approach has been proposed based on the concepts of data clustering, relative motion, pointcloud change detection and confidence tracking. The novelty of this approach lies in its ability to detect within cluster movements and the proposal of a generic tracking method for handling inconsistent motion of objects typically found in indoor environments. For the detection of moving objects, the proposed mechanism does not require any prior knowledge about the target entity. For pointcloud preprocessing, a ground plane removal approach has been proposed based on voxel grid covariance along the axis normal to the ground. The approach was experimented on a humanoid robot in indoor office environments using Velodyne VLP‐16 LiDAR and Intel T265 IMU. The results show that the proposed approach is efficient in detecting indoor moving objects in real time.
topic confidence tracking
DATMO
euclidean clustering
pose transformation
relative motion
SLAM
url https://doi.org/10.1002/eng2.12275
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