Roof Shape Classification from LiDAR and Satellite Image Data Fusion Using Supervised Learning

Geographic information systems (GIS) provide accurate maps of terrain, roads, waterways, and building footprints and heights. Aircraft, particularly small unmanned aircraft systems (UAS), can exploit this and additional information such as <i>building roof structure</i> to improve naviga...

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Main Authors: Jeremy Castagno, Ella Atkins
Format: Article
Language:English
Published: MDPI AG 2018-11-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/18/11/3960
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spelling doaj-2b061d3d64f143858fad77603d87d0572020-11-25T00:35:07ZengMDPI AGSensors1424-82202018-11-011811396010.3390/s18113960s18113960Roof Shape Classification from LiDAR and Satellite Image Data Fusion Using Supervised LearningJeremy Castagno0Ella Atkins1Robotics Program, University of Michigan, Ann Arbor, MI 48109, USARobotics Program, University of Michigan, Ann Arbor, MI 48109, USAGeographic information systems (GIS) provide accurate maps of terrain, roads, waterways, and building footprints and heights. Aircraft, particularly small unmanned aircraft systems (UAS), can exploit this and additional information such as <i>building roof structure</i> to improve navigation accuracy and safely perform contingency landings particularly in urban regions. However, building roof structure is not fully provided in maps. This paper proposes a method to automatically label building roof shape from publicly available GIS data. Satellite imagery and airborne LiDAR data are processed and manually labeled to create a diverse annotated roof image dataset for small to large urban cities. Multiple convolutional neural network (CNN) architectures are trained and tested, with the best performing networks providing a condensed feature set for support vector machine and decision tree classifiers. Satellite image and LiDAR data fusion is shown to provide greater classification accuracy than using either data type alone. Model confidence thresholds are adjusted leading to significant increases in models precision. Networks trained from roof data in Witten, Germany and Manhattan (New York City) are evaluated on independent data from these cities and Ann Arbor, Michigan.https://www.mdpi.com/1424-8220/18/11/3960geographical information system (GIS)LiDARmachine visionmachine learningunmanned aircraft systems (UAS)dronesmapssafety
collection DOAJ
language English
format Article
sources DOAJ
author Jeremy Castagno
Ella Atkins
spellingShingle Jeremy Castagno
Ella Atkins
Roof Shape Classification from LiDAR and Satellite Image Data Fusion Using Supervised Learning
Sensors
geographical information system (GIS)
LiDAR
machine vision
machine learning
unmanned aircraft systems (UAS)
drones
maps
safety
author_facet Jeremy Castagno
Ella Atkins
author_sort Jeremy Castagno
title Roof Shape Classification from LiDAR and Satellite Image Data Fusion Using Supervised Learning
title_short Roof Shape Classification from LiDAR and Satellite Image Data Fusion Using Supervised Learning
title_full Roof Shape Classification from LiDAR and Satellite Image Data Fusion Using Supervised Learning
title_fullStr Roof Shape Classification from LiDAR and Satellite Image Data Fusion Using Supervised Learning
title_full_unstemmed Roof Shape Classification from LiDAR and Satellite Image Data Fusion Using Supervised Learning
title_sort roof shape classification from lidar and satellite image data fusion using supervised learning
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2018-11-01
description Geographic information systems (GIS) provide accurate maps of terrain, roads, waterways, and building footprints and heights. Aircraft, particularly small unmanned aircraft systems (UAS), can exploit this and additional information such as <i>building roof structure</i> to improve navigation accuracy and safely perform contingency landings particularly in urban regions. However, building roof structure is not fully provided in maps. This paper proposes a method to automatically label building roof shape from publicly available GIS data. Satellite imagery and airborne LiDAR data are processed and manually labeled to create a diverse annotated roof image dataset for small to large urban cities. Multiple convolutional neural network (CNN) architectures are trained and tested, with the best performing networks providing a condensed feature set for support vector machine and decision tree classifiers. Satellite image and LiDAR data fusion is shown to provide greater classification accuracy than using either data type alone. Model confidence thresholds are adjusted leading to significant increases in models precision. Networks trained from roof data in Witten, Germany and Manhattan (New York City) are evaluated on independent data from these cities and Ann Arbor, Michigan.
topic geographical information system (GIS)
LiDAR
machine vision
machine learning
unmanned aircraft systems (UAS)
drones
maps
safety
url https://www.mdpi.com/1424-8220/18/11/3960
work_keys_str_mv AT jeremycastagno roofshapeclassificationfromlidarandsatelliteimagedatafusionusingsupervisedlearning
AT ellaatkins roofshapeclassificationfromlidarandsatelliteimagedatafusionusingsupervisedlearning
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