Enhancing land feature classification with the BTR Extractor: A novel software package for high-accuracy analysis of aerial laser scan data

The semi-automatic and automatic extraction of land features such as buildings, trees, and roads using aerial laser scan data is crucial in land use change studies and urban management. This research introduces the ''BTR'' extractor, a novel software package designed to enhance c...

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Main Authors: Jamshid Talebi, Zahra Azizi
Format: Article
Language:English
Published: Elsevier 2025-06-01
Series:MethodsX
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Online Access:http://www.sciencedirect.com/science/article/pii/S2215016124005417
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author Jamshid Talebi
Zahra Azizi
author_facet Jamshid Talebi
Zahra Azizi
author_sort Jamshid Talebi
collection DOAJ
description The semi-automatic and automatic extraction of land features such as buildings, trees, and roads using aerial laser scan data is crucial in land use change studies and urban management. This research introduces the ''BTR'' extractor, a novel software package designed to enhance classification accuracy of phenomena identified in the super points obtained from aerial laser scanners. Our method focuses on: – Comparing classification methods using airborne laser scanning data. – Implementing supervised algorithms for high-accuracy classification. – Evaluating the performance against existing software like TerraSolid.The user-friendly interface allows data entry, training data collection, and selection of classification methods. We employed five methods (Bayesian algorithms, support vector machine, K-nearest neighbor, C-Tree, and discriminant analysis) to classify land features. Comparative results show the BTR extractor outperforms TerraSolid, particularly in supervised classification, demonstrating high accuracy and reliable implementation in the studied area. Our findings advocate for the use of supervised algorithms in classifying cloud data for enhanced accuracy and efficiency in remote sensing applications.
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institution Kabale University
issn 2215-0161
language English
publishDate 2025-06-01
publisher Elsevier
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spelling doaj-art-0ccc7d74b35e477bbf6f10bc3557783b2024-12-15T06:15:34ZengElsevierMethodsX2215-01612025-06-0114103090Enhancing land feature classification with the BTR Extractor: A novel software package for high-accuracy analysis of aerial laser scan dataJamshid Talebi0Zahra Azizi1Department of Remote Sensing and GIS, Science and Research Branch, Islamic Azad University, Tehran, IranCorresponding author.; Department of Remote Sensing and GIS, Science and Research Branch, Islamic Azad University, Tehran, IranThe semi-automatic and automatic extraction of land features such as buildings, trees, and roads using aerial laser scan data is crucial in land use change studies and urban management. This research introduces the ''BTR'' extractor, a novel software package designed to enhance classification accuracy of phenomena identified in the super points obtained from aerial laser scanners. Our method focuses on: – Comparing classification methods using airborne laser scanning data. – Implementing supervised algorithms for high-accuracy classification. – Evaluating the performance against existing software like TerraSolid.The user-friendly interface allows data entry, training data collection, and selection of classification methods. We employed five methods (Bayesian algorithms, support vector machine, K-nearest neighbor, C-Tree, and discriminant analysis) to classify land features. Comparative results show the BTR extractor outperforms TerraSolid, particularly in supervised classification, demonstrating high accuracy and reliable implementation in the studied area. Our findings advocate for the use of supervised algorithms in classifying cloud data for enhanced accuracy and efficiency in remote sensing applications.http://www.sciencedirect.com/science/article/pii/S2215016124005417BTR Extractor
spellingShingle Jamshid Talebi
Zahra Azizi
Enhancing land feature classification with the BTR Extractor: A novel software package for high-accuracy analysis of aerial laser scan data
MethodsX
BTR Extractor
title Enhancing land feature classification with the BTR Extractor: A novel software package for high-accuracy analysis of aerial laser scan data
title_full Enhancing land feature classification with the BTR Extractor: A novel software package for high-accuracy analysis of aerial laser scan data
title_fullStr Enhancing land feature classification with the BTR Extractor: A novel software package for high-accuracy analysis of aerial laser scan data
title_full_unstemmed Enhancing land feature classification with the BTR Extractor: A novel software package for high-accuracy analysis of aerial laser scan data
title_short Enhancing land feature classification with the BTR Extractor: A novel software package for high-accuracy analysis of aerial laser scan data
title_sort enhancing land feature classification with the btr extractor a novel software package for high accuracy analysis of aerial laser scan data
topic BTR Extractor
url http://www.sciencedirect.com/science/article/pii/S2215016124005417
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