Investigating Semi-Automated Cadastral Boundaries Extraction from Airborne Laser Scanned Data

Many developing countries have witnessed the urgent need of accelerating cadastral surveying processes. Previous studies found that large portions of cadastral boundaries coincide with visible physical objects, namely roads, fences, and building walls. This research explores the application of airbo...

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Main Authors: Xianghuan Luo, Rohan Mark Bennett, Mila Koeva, Christiaan Lemmen
Format: Article
Language:English
Published: MDPI AG 2017-09-01
Series:Land
Subjects:
Online Access:https://www.mdpi.com/2073-445X/6/3/60
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spelling doaj-8e188bdd63454ea881118ca7a2cb4d7b2020-11-25T00:40:22ZengMDPI AGLand2073-445X2017-09-01636010.3390/land6030060land6030060Investigating Semi-Automated Cadastral Boundaries Extraction from Airborne Laser Scanned DataXianghuan Luo0Rohan Mark Bennett1Mila Koeva2Christiaan Lemmen3Department of Land Surveying and Geo-informatics, The Hong Kong Polytechnic University, HongKong, ChinaSwinburne Business School, Swinburne University of Technology, Hawthorn VIC 3122, AustraliaFaculty of Geo-Information Science and Earth Observation (ITC), University of Twente, Enschede 7500AE, The NetherlandsFaculty of Geo-Information Science and Earth Observation (ITC), University of Twente, Enschede 7500AE, The NetherlandsMany developing countries have witnessed the urgent need of accelerating cadastral surveying processes. Previous studies found that large portions of cadastral boundaries coincide with visible physical objects, namely roads, fences, and building walls. This research explores the application of airborne laser scanning (ALS) techniques on cadastral surveys. A semi-automated workflow is developed to extract cadastral boundaries from an ALS point clouds. Firstly, a two-phased workflow was developed that focused on extracting digital representations of physical objects. In the automated extraction phase, after classifying points into semantic components, the outline of planar objects such as building roofs and road surfaces were generated by an α-shape algorithm, whilst the centerlines delineatiation approach was fitted into the lineate object—a fence. Afterwards, the extracted vector lines were edited and refined during the post-refinement phase. Secondly, we quantitatively evaluated the workflow performance by comparing results against an exiting cadastral map as reference. It was found that the workflow achieved promising results: around 80% completeness and 60% correctness on average, although the spatial accuracy is still modest. It is argued that the semi-automated extraction workflow could effectively speed up cadastral surveying, with both human resources and equipment costs being reducedhttps://www.mdpi.com/2073-445X/6/3/60cadastral surveyboundary mappingfeature extractionsemi-automationpoint cloud
collection DOAJ
language English
format Article
sources DOAJ
author Xianghuan Luo
Rohan Mark Bennett
Mila Koeva
Christiaan Lemmen
spellingShingle Xianghuan Luo
Rohan Mark Bennett
Mila Koeva
Christiaan Lemmen
Investigating Semi-Automated Cadastral Boundaries Extraction from Airborne Laser Scanned Data
Land
cadastral survey
boundary mapping
feature extraction
semi-automation
point cloud
author_facet Xianghuan Luo
Rohan Mark Bennett
Mila Koeva
Christiaan Lemmen
author_sort Xianghuan Luo
title Investigating Semi-Automated Cadastral Boundaries Extraction from Airborne Laser Scanned Data
title_short Investigating Semi-Automated Cadastral Boundaries Extraction from Airborne Laser Scanned Data
title_full Investigating Semi-Automated Cadastral Boundaries Extraction from Airborne Laser Scanned Data
title_fullStr Investigating Semi-Automated Cadastral Boundaries Extraction from Airborne Laser Scanned Data
title_full_unstemmed Investigating Semi-Automated Cadastral Boundaries Extraction from Airborne Laser Scanned Data
title_sort investigating semi-automated cadastral boundaries extraction from airborne laser scanned data
publisher MDPI AG
series Land
issn 2073-445X
publishDate 2017-09-01
description Many developing countries have witnessed the urgent need of accelerating cadastral surveying processes. Previous studies found that large portions of cadastral boundaries coincide with visible physical objects, namely roads, fences, and building walls. This research explores the application of airborne laser scanning (ALS) techniques on cadastral surveys. A semi-automated workflow is developed to extract cadastral boundaries from an ALS point clouds. Firstly, a two-phased workflow was developed that focused on extracting digital representations of physical objects. In the automated extraction phase, after classifying points into semantic components, the outline of planar objects such as building roofs and road surfaces were generated by an α-shape algorithm, whilst the centerlines delineatiation approach was fitted into the lineate object—a fence. Afterwards, the extracted vector lines were edited and refined during the post-refinement phase. Secondly, we quantitatively evaluated the workflow performance by comparing results against an exiting cadastral map as reference. It was found that the workflow achieved promising results: around 80% completeness and 60% correctness on average, although the spatial accuracy is still modest. It is argued that the semi-automated extraction workflow could effectively speed up cadastral surveying, with both human resources and equipment costs being reduced
topic cadastral survey
boundary mapping
feature extraction
semi-automation
point cloud
url https://www.mdpi.com/2073-445X/6/3/60
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