VERY HIGH RESOLUTION LAND USE AND LAND COVER MAPPING USING PLEIADES-1 STEREO IMAGERY AND MACHINE LEARNING

Anthropocene is featured with increasing human population and global changes that strongly affect landscapes at an unprecedented pace. As a flagship, the coastal fringe is subject to an accelerated conversion of natural areas into agricultural ones, in turn, into urban ones, generating hazardous soi...

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Main Authors: D. James, A. Collin, A. Mury, S. Costa
Format: Article
Language:English
Published: Copernicus Publications 2020-08-01
Series:The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
Online Access:https://www.int-arch-photogramm-remote-sens-spatial-inf-sci.net/XLIII-B2-2020/675/2020/isprs-archives-XLIII-B2-2020-675-2020.pdf
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spelling doaj-98e951ce9a244d22bcb9345f1c9346b82020-11-25T02:58:56ZengCopernicus PublicationsThe International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences1682-17502194-90342020-08-01XLIII-B2-202067568210.5194/isprs-archives-XLIII-B2-2020-675-2020VERY HIGH RESOLUTION LAND USE AND LAND COVER MAPPING USING PLEIADES-1 STEREO IMAGERY AND MACHINE LEARNINGD. James0A. Collin1A. Collin2A. Mury3S. Costa4EPHE, PSL Université Paris, CNRS UMR 6554 LETG, 35800 Dinard, FranceEPHE, PSL Université Paris, CNRS UMR 6554 LETG, 35800 Dinard, FranceLabEx CORAIL, Moorea, French PolynesiaEPHE, PSL Université Paris, CNRS UMR 6554 LETG, 35800 Dinard, FranceNormandie Univ, UNICAEN, CNRS, LETG, F-14000 Caen, FranceAnthropocene is featured with increasing human population and global changes that strongly affect landscapes at an unprecedented pace. As a flagship, the coastal fringe is subject to an accelerated conversion of natural areas into agricultural ones, in turn, into urban ones, generating hazardous soil artificialization. Very high resolution (VHR) technologies such as airborne LiDAR or UAV imageries are good assets to model the topography and classify the land use/land cover (LULC), helping local management. Even if their spatial resolution suits with the management scale, their extent covers a few km<sup>2</sup>, making large-scale monitoring complex and time-consuming. VHR spaceborne imagery has a great potential to address this spatial challenge given its regional acquisition. This research proposes to evaluate the capabilities of a Pleiades-1 stereo-satellite multispectral imagery (blue, green, red, BGR, and near-infrared, NIR) to both model the surface topography and classify LULC. Horizontal and vertical accuracies of the photogrammetry-driven digital surface model (DSM) attain 0.53&thinsp;m and 0.65&thinsp;m, respectively. Nine LULC generic classes are studied using the maximum likelihood (ML) and support vector machine (SVM) algorithms. The classification accuracy of the basic BGR (reaching 84.64&thinsp;% and 76.13&thinsp;% with ML and SVM, respectively) is improved by the DSM contribution (5.49&thinsp;% and 2.91&thinsp;% for ML and SVM, respectively), and the NIR contribution (6.78&thinsp;% and 3.89&thinsp;% for ML and SVM, respectively). The gain of the DSM-NIR combination totals 8.91&thinsp;% and 8.40&thinsp;% for ML and SVM, respectively, making the ML-based full combination the best performance (93.55&thinsp;%).https://www.int-arch-photogramm-remote-sens-spatial-inf-sci.net/XLIII-B2-2020/675/2020/isprs-archives-XLIII-B2-2020-675-2020.pdf
collection DOAJ
language English
format Article
sources DOAJ
author D. James
A. Collin
A. Collin
A. Mury
S. Costa
spellingShingle D. James
A. Collin
A. Collin
A. Mury
S. Costa
VERY HIGH RESOLUTION LAND USE AND LAND COVER MAPPING USING PLEIADES-1 STEREO IMAGERY AND MACHINE LEARNING
The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
author_facet D. James
A. Collin
A. Collin
A. Mury
S. Costa
author_sort D. James
title VERY HIGH RESOLUTION LAND USE AND LAND COVER MAPPING USING PLEIADES-1 STEREO IMAGERY AND MACHINE LEARNING
title_short VERY HIGH RESOLUTION LAND USE AND LAND COVER MAPPING USING PLEIADES-1 STEREO IMAGERY AND MACHINE LEARNING
title_full VERY HIGH RESOLUTION LAND USE AND LAND COVER MAPPING USING PLEIADES-1 STEREO IMAGERY AND MACHINE LEARNING
title_fullStr VERY HIGH RESOLUTION LAND USE AND LAND COVER MAPPING USING PLEIADES-1 STEREO IMAGERY AND MACHINE LEARNING
title_full_unstemmed VERY HIGH RESOLUTION LAND USE AND LAND COVER MAPPING USING PLEIADES-1 STEREO IMAGERY AND MACHINE LEARNING
title_sort very high resolution land use and land cover mapping using pleiades-1 stereo imagery and machine learning
publisher Copernicus Publications
series The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
issn 1682-1750
2194-9034
publishDate 2020-08-01
description Anthropocene is featured with increasing human population and global changes that strongly affect landscapes at an unprecedented pace. As a flagship, the coastal fringe is subject to an accelerated conversion of natural areas into agricultural ones, in turn, into urban ones, generating hazardous soil artificialization. Very high resolution (VHR) technologies such as airborne LiDAR or UAV imageries are good assets to model the topography and classify the land use/land cover (LULC), helping local management. Even if their spatial resolution suits with the management scale, their extent covers a few km<sup>2</sup>, making large-scale monitoring complex and time-consuming. VHR spaceborne imagery has a great potential to address this spatial challenge given its regional acquisition. This research proposes to evaluate the capabilities of a Pleiades-1 stereo-satellite multispectral imagery (blue, green, red, BGR, and near-infrared, NIR) to both model the surface topography and classify LULC. Horizontal and vertical accuracies of the photogrammetry-driven digital surface model (DSM) attain 0.53&thinsp;m and 0.65&thinsp;m, respectively. Nine LULC generic classes are studied using the maximum likelihood (ML) and support vector machine (SVM) algorithms. The classification accuracy of the basic BGR (reaching 84.64&thinsp;% and 76.13&thinsp;% with ML and SVM, respectively) is improved by the DSM contribution (5.49&thinsp;% and 2.91&thinsp;% for ML and SVM, respectively), and the NIR contribution (6.78&thinsp;% and 3.89&thinsp;% for ML and SVM, respectively). The gain of the DSM-NIR combination totals 8.91&thinsp;% and 8.40&thinsp;% for ML and SVM, respectively, making the ML-based full combination the best performance (93.55&thinsp;%).
url https://www.int-arch-photogramm-remote-sens-spatial-inf-sci.net/XLIII-B2-2020/675/2020/isprs-archives-XLIII-B2-2020-675-2020.pdf
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