49343.pdf

Mobile robot platforms have a wide range of hardware configurations in order to accomplish challenging tasks and require an efficient and accurate localization system to navigate in the environment. The objective of this work is the evaluation of the developed Dynamic Robot Localization (DRL) system...

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Γλώσσα:English
Έκδοση: InTechOpen 2021
id oapen-20.500.12657-49133
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spelling oapen-20.500.12657-491332021-11-23T13:55:06Z Chapter Nanoparticle Formation by Laser Ablation and by Spark Discharges — Properties, Mechanisms, and Control Possibilities Itina, Tatiana Voloshko, A. Self-localization, point cloud registration, pose tracking, point cloud library, robot operating system bic Book Industry Communication::T Technology, engineering, agriculture::TJ Electronics & communications engineering::TJK Communications engineering / telecommunications Mobile robot platforms have a wide range of hardware configurations in order to accomplish challenging tasks and require an efficient and accurate localization system to navigate in the environment. The objective of this work is the evaluation of the developed Dynamic Robot Localization (DRL) system in three computing platforms, with CPUs ranging from low to high end (Intel Atom, Core i5, and i7), in order to analyze the configurations that can be used to adjust the trade-offs between pose estimation accuracy and the associated computing resources required. The DRL is capable of performing pose tracking and global pose estimation in both 3 and 6 Degrees of Freedom (DoF) using point cloud data retrieved from LIDARs and RGB-D cameras and achieved translation errors of less than 30 mm and rotation errors of less than 5° when evaluated in three environments. The sensor data retrieved from three testing platforms was processed and the detailed profiling results were analyzed. Besides pose estimation, the self-localization system is also able to perform mapping of the environment with probabilistic integration or removal of geometry and can use surface reconstruction to minimize the impact of sensor noise. These abilities will allow the fast deployment of mobile robots in dynamic environments. 2021-06-02T10:07:34Z 2021-06-02T10:07:34Z 2015 chapter ONIX_20210602_10.5772/61303_247 https://library.oapen.org/handle/20.500.12657/49133 eng application/pdf n/a 49343.pdf InTechOpen 10.5772/61303 10.5772/61303 09f6769d-48ed-467d-b150-4cf2680656a1 FP7-NMP-2011-LARGE-5 280765 open access
institution OAPEN
collection DSpace
language English
description Mobile robot platforms have a wide range of hardware configurations in order to accomplish challenging tasks and require an efficient and accurate localization system to navigate in the environment. The objective of this work is the evaluation of the developed Dynamic Robot Localization (DRL) system in three computing platforms, with CPUs ranging from low to high end (Intel Atom, Core i5, and i7), in order to analyze the configurations that can be used to adjust the trade-offs between pose estimation accuracy and the associated computing resources required. The DRL is capable of performing pose tracking and global pose estimation in both 3 and 6 Degrees of Freedom (DoF) using point cloud data retrieved from LIDARs and RGB-D cameras and achieved translation errors of less than 30 mm and rotation errors of less than 5° when evaluated in three environments. The sensor data retrieved from three testing platforms was processed and the detailed profiling results were analyzed. Besides pose estimation, the self-localization system is also able to perform mapping of the environment with probabilistic integration or removal of geometry and can use surface reconstruction to minimize the impact of sensor noise. These abilities will allow the fast deployment of mobile robots in dynamic environments.
title 49343.pdf
spellingShingle 49343.pdf
title_short 49343.pdf
title_full 49343.pdf
title_fullStr 49343.pdf
title_full_unstemmed 49343.pdf
title_sort 49343.pdf
publisher InTechOpen
publishDate 2021
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