Low-Bandwidth and Compute-Bound RGB-D Planar Semantic SLAM

Visual simultaneous location and mapping (SLAM) using RGB-D cameras has been a necessary capability for intelligent mobile robots. However, when using point-cloud map representations as most RGB-D SLAM systems do, limitations in onboard compute resources, and especially communication bandwidth can s...

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Main Authors: Jincheng Zhang, Prashant Ganesh, Kyle Volle, Andrew Willis, Kevin Brink
Format: Article
Language:English
Published: MDPI AG 2021-08-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/21/16/5400
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spelling doaj-06dd52827d9241fdb446e477deaea5152021-08-26T14:18:55ZengMDPI AGSensors1424-82202021-08-01215400540010.3390/s21165400Low-Bandwidth and Compute-Bound RGB-D Planar Semantic SLAMJincheng Zhang0Prashant Ganesh1Kyle Volle2Andrew Willis3Kevin Brink4Department of Electrical Engineering, University of North Carolina, Charlotte, NC 28262, USADepartment of Mechanical and Aerospace Engineering, University of Florida, Gainesville, FL 32611, USADepartment of Mechanical and Aerospace Engineering, University of Florida, Gainesville, FL 32611, USADepartment of Electrical Engineering, University of North Carolina, Charlotte, NC 28262, USAAir Force Research Lab, Eglin Air Force Base, Eglin AFB, FL 32542, USAVisual simultaneous location and mapping (SLAM) using RGB-D cameras has been a necessary capability for intelligent mobile robots. However, when using point-cloud map representations as most RGB-D SLAM systems do, limitations in onboard compute resources, and especially communication bandwidth can significantly limit the quantity of data processed and shared. This article proposes techniques that help address these challenges by mapping point clouds to parametric models in order to reduce computation and bandwidth load on agents. This contribution is coupled with a convolutional neural network (CNN) that extracts semantic information. Semantics provide guidance in object modeling which can reduce the geometric complexity of the environment. Pairing a parametric model with a semantic label allows agents to share the knowledge of the world with much less complexity, opening a door for multi-agent systems to perform complex tasking, and human–robot cooperation. This article takes the first step towards a generalized parametric model by limiting the geometric primitives to a planar surface and providing semantic labels when appropriate. Two novel compression algorithms for depth data and a method to independently fit planes to RGB-D data are provided, so that plane data can be used for real-time odometry estimation and mapping. Additionally, we extend maps with semantic information predicted from sparse geometries (planes) by a CNN. In experiments, the advantages of our approach in terms of computational and bandwidth resources savings are demonstrated and compared with other state-of-the-art SLAM systems.https://www.mdpi.com/1424-8220/21/16/5400SLAM3D semantic mappingcompressionplanar SLAMshape grammarsemantic segmentation
collection DOAJ
language English
format Article
sources DOAJ
author Jincheng Zhang
Prashant Ganesh
Kyle Volle
Andrew Willis
Kevin Brink
spellingShingle Jincheng Zhang
Prashant Ganesh
Kyle Volle
Andrew Willis
Kevin Brink
Low-Bandwidth and Compute-Bound RGB-D Planar Semantic SLAM
Sensors
SLAM
3D semantic mapping
compression
planar SLAM
shape grammar
semantic segmentation
author_facet Jincheng Zhang
Prashant Ganesh
Kyle Volle
Andrew Willis
Kevin Brink
author_sort Jincheng Zhang
title Low-Bandwidth and Compute-Bound RGB-D Planar Semantic SLAM
title_short Low-Bandwidth and Compute-Bound RGB-D Planar Semantic SLAM
title_full Low-Bandwidth and Compute-Bound RGB-D Planar Semantic SLAM
title_fullStr Low-Bandwidth and Compute-Bound RGB-D Planar Semantic SLAM
title_full_unstemmed Low-Bandwidth and Compute-Bound RGB-D Planar Semantic SLAM
title_sort low-bandwidth and compute-bound rgb-d planar semantic slam
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2021-08-01
description Visual simultaneous location and mapping (SLAM) using RGB-D cameras has been a necessary capability for intelligent mobile robots. However, when using point-cloud map representations as most RGB-D SLAM systems do, limitations in onboard compute resources, and especially communication bandwidth can significantly limit the quantity of data processed and shared. This article proposes techniques that help address these challenges by mapping point clouds to parametric models in order to reduce computation and bandwidth load on agents. This contribution is coupled with a convolutional neural network (CNN) that extracts semantic information. Semantics provide guidance in object modeling which can reduce the geometric complexity of the environment. Pairing a parametric model with a semantic label allows agents to share the knowledge of the world with much less complexity, opening a door for multi-agent systems to perform complex tasking, and human–robot cooperation. This article takes the first step towards a generalized parametric model by limiting the geometric primitives to a planar surface and providing semantic labels when appropriate. Two novel compression algorithms for depth data and a method to independently fit planes to RGB-D data are provided, so that plane data can be used for real-time odometry estimation and mapping. Additionally, we extend maps with semantic information predicted from sparse geometries (planes) by a CNN. In experiments, the advantages of our approach in terms of computational and bandwidth resources savings are demonstrated and compared with other state-of-the-art SLAM systems.
topic SLAM
3D semantic mapping
compression
planar SLAM
shape grammar
semantic segmentation
url https://www.mdpi.com/1424-8220/21/16/5400
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