ADVERSARIAL DISCRIMINATIVE DOMAIN ADAPTATION FOR DEFORESTATION DETECTION

Although very efficient in a number of application fields, deep learning based models are known to demand large amounts of labeled data for training. Particularly for remote sensing applications, responding to that demand is generally expensive and time consuming. Moreover, supervised training metho...

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Main Authors: J. Noa, P. J. Soto, G. A. O. P. Costa, D. Wittich, R. Q. Feitosa, F. Rottensteiner
Format: Article
Language:English
Published: Copernicus Publications 2021-06-01
Series:ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences
Online Access:https://www.isprs-ann-photogramm-remote-sens-spatial-inf-sci.net/V-3-2021/151/2021/isprs-annals-V-3-2021-151-2021.pdf
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spelling doaj-9d20dc62df944db6957b744dbe4cfbfd2021-06-17T21:14:11ZengCopernicus PublicationsISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences2194-90422194-90502021-06-01V-3-202115115810.5194/isprs-annals-V-3-2021-151-2021ADVERSARIAL DISCRIMINATIVE DOMAIN ADAPTATION FOR DEFORESTATION DETECTIONJ. Noa0P. J. Soto1G. A. O. P. Costa2D. Wittich3R. Q. Feitosa4F. Rottensteiner5Dept. of Electrical Engineering, Pontifical Catholic University of Rio de Janeiro (PUC-Rio), BrazilDept. of Electrical Engineering, Pontifical Catholic University of Rio de Janeiro (PUC-Rio), BrazilDept. of Informatics and Computer Science, Rio de Janeiro State University (UERJ), BrazilInstitute of Photogrammetry and GeoInformation, Leibniz Universität Hannover (LUH), GermanyDept. of Electrical Engineering, Pontifical Catholic University of Rio de Janeiro (PUC-Rio), BrazilInstitute of Photogrammetry and GeoInformation, Leibniz Universität Hannover (LUH), GermanyAlthough very efficient in a number of application fields, deep learning based models are known to demand large amounts of labeled data for training. Particularly for remote sensing applications, responding to that demand is generally expensive and time consuming. Moreover, supervised training methods tend to perform poorly when they are tested with a set of samples that does not match the general characteristics of the training set. Domain adaptation methods can be used to mitigate those problems, especially in applications where labeled data is only available for a particular region or epoch, i.e., for a source domain, but not for a target domain on which the model should be tested. In this work we introduce a domain adaptation approach based on representation matching for the deforestation detection task. The approach follows the Adversarial Discriminative Domain Adaptation (ADDA) framework, and we introduce a margin-based regularization constraint in the learning process that promotes a better convergence of the model parameters during training. The approach is evaluated using three different domains, which represent sites in different forest biomes. The experimental results show that the approach is successful in the adaptation of most of the domain combination scenarios, usually with considerable gains in relation to the baselines.https://www.isprs-ann-photogramm-remote-sens-spatial-inf-sci.net/V-3-2021/151/2021/isprs-annals-V-3-2021-151-2021.pdf
collection DOAJ
language English
format Article
sources DOAJ
author J. Noa
P. J. Soto
G. A. O. P. Costa
D. Wittich
R. Q. Feitosa
F. Rottensteiner
spellingShingle J. Noa
P. J. Soto
G. A. O. P. Costa
D. Wittich
R. Q. Feitosa
F. Rottensteiner
ADVERSARIAL DISCRIMINATIVE DOMAIN ADAPTATION FOR DEFORESTATION DETECTION
ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences
author_facet J. Noa
P. J. Soto
G. A. O. P. Costa
D. Wittich
R. Q. Feitosa
F. Rottensteiner
author_sort J. Noa
title ADVERSARIAL DISCRIMINATIVE DOMAIN ADAPTATION FOR DEFORESTATION DETECTION
title_short ADVERSARIAL DISCRIMINATIVE DOMAIN ADAPTATION FOR DEFORESTATION DETECTION
title_full ADVERSARIAL DISCRIMINATIVE DOMAIN ADAPTATION FOR DEFORESTATION DETECTION
title_fullStr ADVERSARIAL DISCRIMINATIVE DOMAIN ADAPTATION FOR DEFORESTATION DETECTION
title_full_unstemmed ADVERSARIAL DISCRIMINATIVE DOMAIN ADAPTATION FOR DEFORESTATION DETECTION
title_sort adversarial discriminative domain adaptation for deforestation detection
publisher Copernicus Publications
series ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences
issn 2194-9042
2194-9050
publishDate 2021-06-01
description Although very efficient in a number of application fields, deep learning based models are known to demand large amounts of labeled data for training. Particularly for remote sensing applications, responding to that demand is generally expensive and time consuming. Moreover, supervised training methods tend to perform poorly when they are tested with a set of samples that does not match the general characteristics of the training set. Domain adaptation methods can be used to mitigate those problems, especially in applications where labeled data is only available for a particular region or epoch, i.e., for a source domain, but not for a target domain on which the model should be tested. In this work we introduce a domain adaptation approach based on representation matching for the deforestation detection task. The approach follows the Adversarial Discriminative Domain Adaptation (ADDA) framework, and we introduce a margin-based regularization constraint in the learning process that promotes a better convergence of the model parameters during training. The approach is evaluated using three different domains, which represent sites in different forest biomes. The experimental results show that the approach is successful in the adaptation of most of the domain combination scenarios, usually with considerable gains in relation to the baselines.
url https://www.isprs-ann-photogramm-remote-sens-spatial-inf-sci.net/V-3-2021/151/2021/isprs-annals-V-3-2021-151-2021.pdf
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AT dwittich adversarialdiscriminativedomainadaptationfordeforestationdetection
AT rqfeitosa adversarialdiscriminativedomainadaptationfordeforestationdetection
AT frottensteiner adversarialdiscriminativedomainadaptationfordeforestationdetection
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