LNSNet: Lightweight Navigable Space Segmentation for Autonomous Robots on Construction Sites

An autonomous robot that can monitor a construction site should be able to be can contextually detect its surrounding environment by recognizing objects and making decisions based on its observation. Pixel-wise semantic segmentation in real-time is vital to building an autonomous and mobile robot. H...

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Main Authors: Khashayar Asadi, Pengyu Chen, Kevin Han, Tianfu Wu, Edgar Lobaton
Format: Article
Language:English
Published: MDPI AG 2019-03-01
Series:Data
Subjects:
Online Access:http://www.mdpi.com/2306-5729/4/1/40
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spelling doaj-2fc41453312b4e149c668e95be49e9b22020-11-25T01:23:29ZengMDPI AGData2306-57292019-03-01414010.3390/data4010040data4010040LNSNet: Lightweight Navigable Space Segmentation for Autonomous Robots on Construction SitesKhashayar Asadi0Pengyu Chen1Kevin Han2Tianfu Wu3Edgar Lobaton4Department of Civil, Construction, and Environmental Engineering, North Carolina State University, 2501 Stinson Dr, Raleigh, NC 27606, USADepartment of Computer Science, Columbia University in the City of New York, Mudd Building, 500 W 120th St, New York, NY 10027, USADepartment of Civil, Construction, and Environmental Engineering, North Carolina State University, 2501 Stinson Dr, Raleigh, NC 27606, USADepartment of Electrical and Computer Engineering, North Carolina State University, 890 Oval Drive, Raleigh, NC 27606, USADepartment of Electrical and Computer Engineering, North Carolina State University, 890 Oval Drive, Raleigh, NC 27606, USAAn autonomous robot that can monitor a construction site should be able to be can contextually detect its surrounding environment by recognizing objects and making decisions based on its observation. Pixel-wise semantic segmentation in real-time is vital to building an autonomous and mobile robot. However, the learning models’ size and high memory usage associated with real-time segmentation are the main challenges for mobile robotics systems that have limited computing resources. To overcome these challenges, this paper presents an efficient semantic segmentation method named LNSNet (lightweight navigable space segmentation network) that can run on embedded platforms to determine navigable space in real-time. The core of model architecture is a new block based on separable convolution which compresses the parameters of present residual block meanwhile maintaining the accuracy and performance. LNSNet is faster, has fewer parameters and less model size, while provides similar accuracy compared to existing models. A new pixel-level annotated dataset for real-time and mobile navigable space segmentation in construction environments has been constructed for the proposed method. The results demonstrate the effectiveness and efficiency that are necessary for the future development of the autonomous robotics systems.http://www.mdpi.com/2306-5729/4/1/40efficient real-time segmentationembedded platformautonomous navigation in constructionautonomous data collection
collection DOAJ
language English
format Article
sources DOAJ
author Khashayar Asadi
Pengyu Chen
Kevin Han
Tianfu Wu
Edgar Lobaton
spellingShingle Khashayar Asadi
Pengyu Chen
Kevin Han
Tianfu Wu
Edgar Lobaton
LNSNet: Lightweight Navigable Space Segmentation for Autonomous Robots on Construction Sites
Data
efficient real-time segmentation
embedded platform
autonomous navigation in construction
autonomous data collection
author_facet Khashayar Asadi
Pengyu Chen
Kevin Han
Tianfu Wu
Edgar Lobaton
author_sort Khashayar Asadi
title LNSNet: Lightweight Navigable Space Segmentation for Autonomous Robots on Construction Sites
title_short LNSNet: Lightweight Navigable Space Segmentation for Autonomous Robots on Construction Sites
title_full LNSNet: Lightweight Navigable Space Segmentation for Autonomous Robots on Construction Sites
title_fullStr LNSNet: Lightweight Navigable Space Segmentation for Autonomous Robots on Construction Sites
title_full_unstemmed LNSNet: Lightweight Navigable Space Segmentation for Autonomous Robots on Construction Sites
title_sort lnsnet: lightweight navigable space segmentation for autonomous robots on construction sites
publisher MDPI AG
series Data
issn 2306-5729
publishDate 2019-03-01
description An autonomous robot that can monitor a construction site should be able to be can contextually detect its surrounding environment by recognizing objects and making decisions based on its observation. Pixel-wise semantic segmentation in real-time is vital to building an autonomous and mobile robot. However, the learning models’ size and high memory usage associated with real-time segmentation are the main challenges for mobile robotics systems that have limited computing resources. To overcome these challenges, this paper presents an efficient semantic segmentation method named LNSNet (lightweight navigable space segmentation network) that can run on embedded platforms to determine navigable space in real-time. The core of model architecture is a new block based on separable convolution which compresses the parameters of present residual block meanwhile maintaining the accuracy and performance. LNSNet is faster, has fewer parameters and less model size, while provides similar accuracy compared to existing models. A new pixel-level annotated dataset for real-time and mobile navigable space segmentation in construction environments has been constructed for the proposed method. The results demonstrate the effectiveness and efficiency that are necessary for the future development of the autonomous robotics systems.
topic efficient real-time segmentation
embedded platform
autonomous navigation in construction
autonomous data collection
url http://www.mdpi.com/2306-5729/4/1/40
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AT kevinhan lnsnetlightweightnavigablespacesegmentationforautonomousrobotsonconstructionsites
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AT edgarlobaton lnsnetlightweightnavigablespacesegmentationforautonomousrobotsonconstructionsites
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