Comparison of convolutional neural networks for cloudy optical images reconstruction from single or multitemporal joint sar and optical images

With the increasing availability of optical and synthetic aperture radar (SAR) images thanks to the Sentinel constellation, and the explosion of deep learning, new methods have emerged in recent years to tackle the reconstruction of optical images that are impacted by clouds. In this paper, we focus on the evaluation of convolutional neural networks that use jointly SAR and optical images to retrieve the missing contents in one single polluted optical image. We propose a simple framework that ease the creation of datasets for the training of deep nets targeting optical image reconstruction, and for the validation of machine learning based or deterministic approaches. These methods are quite different in terms of input images constraints, and comparing them is a problematic task not addressed in the literature. We show how space partitioning data structures help to query samples in terms of cloud coverage, relative acquisition date, pixel validity and relative proximity between SAR and optical images. We generate several datasets to compare the reconstructed images from networks that use a single pair of SAR and optical image, versus networks that use multiple pairs, and a traditional deterministic approach performing interpolation in temporal domain.

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Main Authors: Cresson, Romain, Narçon, N., Gaetano, Raffaele, Dupuis, A., Tanguy, Y., May, S., Commandré, B.
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Online Access:http://agritrop.cirad.fr/606411/
http://agritrop.cirad.fr/606411/1/ID606411.pdf
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spelling dig-cirad-fr-6064112024-01-19T13:45:52Z http://agritrop.cirad.fr/606411/ http://agritrop.cirad.fr/606411/ Comparison of convolutional neural networks for cloudy optical images reconstruction from single or multitemporal joint sar and optical images. Cresson Romain, Narçon N., Gaetano Raffaele, Dupuis A., Tanguy Y., May S., Commandré B.. 2022. In : XXIV ISPRS Congress “Imaging today, foreseeing tomorrow”. Jiang J. (ed.), Shaker A. (ed.), H. Zhang H. (ed.). Hanovre : ISPRS, 1317-1326. (ISPRS Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, XLIII-B3-2022) ISPRS Congress Commission III. 24, Nice, France, 6 Juin 2022/11 Juin 2022.https://doi.org/10.5194/isprs-archives-XLIII-B3-2022-1317-2022 <https://doi.org/10.5194/isprs-archives-XLIII-B3-2022-1317-2022> Comparison of convolutional neural networks for cloudy optical images reconstruction from single or multitemporal joint sar and optical images Cresson, Romain Narçon, N. Gaetano, Raffaele Dupuis, A. Tanguy, Y. May, S. Commandré, B. eng 2022 ISPRS XXIV ISPRS Congress “Imaging today, foreseeing tomorrow” With the increasing availability of optical and synthetic aperture radar (SAR) images thanks to the Sentinel constellation, and the explosion of deep learning, new methods have emerged in recent years to tackle the reconstruction of optical images that are impacted by clouds. In this paper, we focus on the evaluation of convolutional neural networks that use jointly SAR and optical images to retrieve the missing contents in one single polluted optical image. We propose a simple framework that ease the creation of datasets for the training of deep nets targeting optical image reconstruction, and for the validation of machine learning based or deterministic approaches. These methods are quite different in terms of input images constraints, and comparing them is a problematic task not addressed in the literature. We show how space partitioning data structures help to query samples in terms of cloud coverage, relative acquisition date, pixel validity and relative proximity between SAR and optical images. We generate several datasets to compare the reconstructed images from networks that use a single pair of SAR and optical image, versus networks that use multiple pairs, and a traditional deterministic approach performing interpolation in temporal domain. conference_item info:eu-repo/semantics/conferenceObject Conference info:eu-repo/semantics/publishedVersion http://agritrop.cirad.fr/606411/1/ID606411.pdf text cc_by info:eu-repo/semantics/openAccess https://creativecommons.org/licenses/by/4.0/ https://doi.org/10.5194/isprs-archives-XLIII-B3-2022-1317-2022 10.5194/isprs-archives-XLIII-B3-2022-1317-2022 info:eu-repo/semantics/altIdentifier/doi/10.5194/isprs-archives-XLIII-B3-2022-1317-2022 info:eu-repo/semantics/altIdentifier/purl/https://doi.org/10.5194/isprs-archives-XLIII-B3-2022-1317-2022
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country Francia
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language eng
description With the increasing availability of optical and synthetic aperture radar (SAR) images thanks to the Sentinel constellation, and the explosion of deep learning, new methods have emerged in recent years to tackle the reconstruction of optical images that are impacted by clouds. In this paper, we focus on the evaluation of convolutional neural networks that use jointly SAR and optical images to retrieve the missing contents in one single polluted optical image. We propose a simple framework that ease the creation of datasets for the training of deep nets targeting optical image reconstruction, and for the validation of machine learning based or deterministic approaches. These methods are quite different in terms of input images constraints, and comparing them is a problematic task not addressed in the literature. We show how space partitioning data structures help to query samples in terms of cloud coverage, relative acquisition date, pixel validity and relative proximity between SAR and optical images. We generate several datasets to compare the reconstructed images from networks that use a single pair of SAR and optical image, versus networks that use multiple pairs, and a traditional deterministic approach performing interpolation in temporal domain.
format conference_item
author Cresson, Romain
Narçon, N.
Gaetano, Raffaele
Dupuis, A.
Tanguy, Y.
May, S.
Commandré, B.
spellingShingle Cresson, Romain
Narçon, N.
Gaetano, Raffaele
Dupuis, A.
Tanguy, Y.
May, S.
Commandré, B.
Comparison of convolutional neural networks for cloudy optical images reconstruction from single or multitemporal joint sar and optical images
author_facet Cresson, Romain
Narçon, N.
Gaetano, Raffaele
Dupuis, A.
Tanguy, Y.
May, S.
Commandré, B.
author_sort Cresson, Romain
title Comparison of convolutional neural networks for cloudy optical images reconstruction from single or multitemporal joint sar and optical images
title_short Comparison of convolutional neural networks for cloudy optical images reconstruction from single or multitemporal joint sar and optical images
title_full Comparison of convolutional neural networks for cloudy optical images reconstruction from single or multitemporal joint sar and optical images
title_fullStr Comparison of convolutional neural networks for cloudy optical images reconstruction from single or multitemporal joint sar and optical images
title_full_unstemmed Comparison of convolutional neural networks for cloudy optical images reconstruction from single or multitemporal joint sar and optical images
title_sort comparison of convolutional neural networks for cloudy optical images reconstruction from single or multitemporal joint sar and optical images
publisher ISPRS
url http://agritrop.cirad.fr/606411/
http://agritrop.cirad.fr/606411/1/ID606411.pdf
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