N-Cluster Loss and Hard Sample Generative Deep Metric Learning for PolSAR Image Classification

International audience Deep learning works normally in PolSAR image classification because the complex terrain scattering characteristic results in large intraclass differences and high interclass similarity. Deep metric learning (DML) aims to make the features keep a closer intraclass and a farther...

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Published in:IEEE Transactions on Geoscience and Remote Sensing
Main Authors: Yang, Chen, Hou, Biao, Chanussot, Jocelyn, Hu, Yue, Ren, Bo, Wang, Shuang, Jiao, Licheng
Other Authors: Xidian University, GIPSA - Signal Images Physique (GIPSA-SIGMAPHY), Observatoire des Sciences de l'Univers de Grenoble (OSUG )-GIPSA Pôle Sciences des Données (GIPSA-PSD), Grenoble Images Parole Signal Automatique (GIPSA-lab), Centre National de la Recherche Scientifique (CNRS)-Université Grenoble Alpes (UGA)-Institut polytechnique de Grenoble - Grenoble Institute of Technology (Grenoble INP ), Université Grenoble Alpes (UGA)-Centre National de la Recherche Scientifique (CNRS)-Université Grenoble Alpes (UGA)-Institut polytechnique de Grenoble - Grenoble Institute of Technology (Grenoble INP ), Université Grenoble Alpes (UGA)-Grenoble Images Parole Signal Automatique (GIPSA-lab), Université Grenoble Alpes (UGA)-Observatoire des Sciences de l'Univers de Grenoble (OSUG ), Institut polytechnique de Grenoble - Grenoble Institute of Technology (Grenoble INP )-Institut national des sciences de l'Univers (INSU - CNRS)-Institut national de recherche en sciences et technologies pour l'environnement et l'agriculture (IRSTEA)-Université Savoie Mont Blanc (USMB Université de Savoie Université de Chambéry )-Centre National de la Recherche Scientifique (CNRS)-Université Grenoble Alpes 2016-2019 (UGA 2016-2019 )-Institut polytechnique de Grenoble - Grenoble Institute of Technology (Grenoble INP )-Institut national des sciences de l'Univers (INSU - CNRS)-Institut national de recherche en sciences et technologies pour l'environnement et l'agriculture (IRSTEA)-Université Savoie Mont Blanc (USMB Université de Savoie Université de Chambéry )-Centre National de la Recherche Scientifique (CNRS)-Université Grenoble Alpes 2016-2019 (UGA 2016-2019 ), Apprentissage de modèles à partir de données massives (Thoth), Inria Grenoble - Rhône-Alpes, Institut National de Recherche en Informatique et en Automatique (Inria)-Institut National de Recherche en Informatique et en Automatique (Inria)-Laboratoire Jean Kuntzmann (LJK), Institut National de Recherche en Informatique et en Automatique (Inria)-Centre National de la Recherche Scientifique (CNRS)-Université Grenoble Alpes (UGA)-Institut polytechnique de Grenoble - Grenoble Institute of Technology (Grenoble INP ), Université Grenoble Alpes (UGA), ANR-19-P3IA-0003,MIAI,MIAI @ Grenoble Alpes(2019)
Format: Article in Journal/Newspaper
Language:English
Published: HAL CCSD 2022
Subjects:
DML
Online Access:https://hal.science/hal-03932552
https://doi.org/10.1109/TGRS.2021.3099840
id ftunivsavoie:oai:HAL:hal-03932552v1
record_format openpolar
institution Open Polar
collection Université Savoie Mont Blanc: HAL
op_collection_id ftunivsavoie
language English
topic Measurement
Task analysis
Feature extraction
Scattering
Training
Data mining
Convergence
[INFO.INFO-TS]Computer Science [cs]/Signal and Image Processing
spellingShingle Measurement
Task analysis
Feature extraction
Scattering
Training
Data mining
Convergence
[INFO.INFO-TS]Computer Science [cs]/Signal and Image Processing
Yang, Chen
Hou, Biao
Chanussot, Jocelyn
Hu, Yue
Ren, Bo
Wang, Shuang
Jiao, Licheng
N-Cluster Loss and Hard Sample Generative Deep Metric Learning for PolSAR Image Classification
topic_facet Measurement
Task analysis
Feature extraction
Scattering
Training
Data mining
Convergence
[INFO.INFO-TS]Computer Science [cs]/Signal and Image Processing
description International audience Deep learning works normally in PolSAR image classification because the complex terrain scattering characteristic results in large intraclass differences and high interclass similarity. Deep metric learning (DML) aims to make the features keep a closer intraclass and a farther interclass distance. Therefore, we introduce DML and then propose an N-cluster generative adversarial net (N-cluster GAN) framework for PolSAR image classification. However, existing DML losses mainly focus on the relationship between individual samples in feature space. Hence, we propose N-cluster loss that pays more attention to the overall structure of all samples. Meanwhile, traditional hard negative sample mining methods occupy lots of computational resources. In addition, the hard level of the negative samples will affect the model’s performance. Therefore, we explore a new method based on a GAN framework to replace the sample mining. Positive N-cluster loss is added to the discriminator ( D ), and a negative one is added to the generator ( G ). In this way, D will possess better classification ability, and G can produce hard negative samples for D . Then, the hard level of the generated negative samples will change with the discrimination of D , which is appropriate for the proposed model. N-cluster loss can be directly calculated through the extracted features rather than redundant data preparation. The proposed model is verified on four PolSAR datasets from two aspects of the loss function and negative samples mining. Then, it achieves competitive performance compared with state-of-the-art algorithms.
author2 Xidian University
GIPSA - Signal Images Physique (GIPSA-SIGMAPHY)
Observatoire des Sciences de l'Univers de Grenoble (OSUG )-GIPSA Pôle Sciences des Données (GIPSA-PSD)
Grenoble Images Parole Signal Automatique (GIPSA-lab)
Centre National de la Recherche Scientifique (CNRS)-Université Grenoble Alpes (UGA)-Institut polytechnique de Grenoble - Grenoble Institute of Technology (Grenoble INP )
Université Grenoble Alpes (UGA)-Centre National de la Recherche Scientifique (CNRS)-Université Grenoble Alpes (UGA)-Institut polytechnique de Grenoble - Grenoble Institute of Technology (Grenoble INP )
Université Grenoble Alpes (UGA)-Grenoble Images Parole Signal Automatique (GIPSA-lab)
Université Grenoble Alpes (UGA)-Observatoire des Sciences de l'Univers de Grenoble (OSUG )
Institut polytechnique de Grenoble - Grenoble Institute of Technology (Grenoble INP )-Institut national des sciences de l'Univers (INSU - CNRS)-Institut national de recherche en sciences et technologies pour l'environnement et l'agriculture (IRSTEA)-Université Savoie Mont Blanc (USMB Université de Savoie Université de Chambéry )-Centre National de la Recherche Scientifique (CNRS)-Université Grenoble Alpes 2016-2019 (UGA 2016-2019 )-Institut polytechnique de Grenoble - Grenoble Institute of Technology (Grenoble INP )-Institut national des sciences de l'Univers (INSU - CNRS)-Institut national de recherche en sciences et technologies pour l'environnement et l'agriculture (IRSTEA)-Université Savoie Mont Blanc (USMB Université de Savoie Université de Chambéry )-Centre National de la Recherche Scientifique (CNRS)-Université Grenoble Alpes 2016-2019 (UGA 2016-2019 )
Apprentissage de modèles à partir de données massives (Thoth)
Inria Grenoble - Rhône-Alpes
Institut National de Recherche en Informatique et en Automatique (Inria)-Institut National de Recherche en Informatique et en Automatique (Inria)-Laboratoire Jean Kuntzmann (LJK)
Institut National de Recherche en Informatique et en Automatique (Inria)-Centre National de la Recherche Scientifique (CNRS)-Université Grenoble Alpes (UGA)-Institut polytechnique de Grenoble - Grenoble Institute of Technology (Grenoble INP )
Université Grenoble Alpes (UGA)
ANR-19-P3IA-0003,MIAI,MIAI @ Grenoble Alpes(2019)
format Article in Journal/Newspaper
author Yang, Chen
Hou, Biao
Chanussot, Jocelyn
Hu, Yue
Ren, Bo
Wang, Shuang
Jiao, Licheng
author_facet Yang, Chen
Hou, Biao
Chanussot, Jocelyn
Hu, Yue
Ren, Bo
Wang, Shuang
Jiao, Licheng
author_sort Yang, Chen
title N-Cluster Loss and Hard Sample Generative Deep Metric Learning for PolSAR Image Classification
title_short N-Cluster Loss and Hard Sample Generative Deep Metric Learning for PolSAR Image Classification
title_full N-Cluster Loss and Hard Sample Generative Deep Metric Learning for PolSAR Image Classification
title_fullStr N-Cluster Loss and Hard Sample Generative Deep Metric Learning for PolSAR Image Classification
title_full_unstemmed N-Cluster Loss and Hard Sample Generative Deep Metric Learning for PolSAR Image Classification
title_sort n-cluster loss and hard sample generative deep metric learning for polsar image classification
publisher HAL CCSD
publishDate 2022
url https://hal.science/hal-03932552
https://doi.org/10.1109/TGRS.2021.3099840
genre DML
genre_facet DML
op_source ISSN: 0196-2892
IEEE Transactions on Geoscience and Remote Sensing
https://hal.science/hal-03932552
IEEE Transactions on Geoscience and Remote Sensing, 2022, 60, pp.5210516. ⟨10.1109/TGRS.2021.3099840⟩
https://ieeexplore.ieee.org/document/9503113
op_relation info:eu-repo/semantics/altIdentifier/doi/10.1109/TGRS.2021.3099840
hal-03932552
https://hal.science/hal-03932552
doi:10.1109/TGRS.2021.3099840
op_doi https://doi.org/10.1109/TGRS.2021.3099840
container_title IEEE Transactions on Geoscience and Remote Sensing
container_volume 60
container_start_page 1
op_container_end_page 16
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spelling ftunivsavoie:oai:HAL:hal-03932552v1 2024-09-09T19:38:09+00:00 N-Cluster Loss and Hard Sample Generative Deep Metric Learning for PolSAR Image Classification Yang, Chen Hou, Biao Chanussot, Jocelyn Hu, Yue Ren, Bo Wang, Shuang Jiao, Licheng Xidian University GIPSA - Signal Images Physique (GIPSA-SIGMAPHY) Observatoire des Sciences de l'Univers de Grenoble (OSUG )-GIPSA Pôle Sciences des Données (GIPSA-PSD) Grenoble Images Parole Signal Automatique (GIPSA-lab) Centre National de la Recherche Scientifique (CNRS)-Université Grenoble Alpes (UGA)-Institut polytechnique de Grenoble - Grenoble Institute of Technology (Grenoble INP ) Université Grenoble Alpes (UGA)-Centre National de la Recherche Scientifique (CNRS)-Université Grenoble Alpes (UGA)-Institut polytechnique de Grenoble - Grenoble Institute of Technology (Grenoble INP ) Université Grenoble Alpes (UGA)-Grenoble Images Parole Signal Automatique (GIPSA-lab) Université Grenoble Alpes (UGA)-Observatoire des Sciences de l'Univers de Grenoble (OSUG ) Institut polytechnique de Grenoble - Grenoble Institute of Technology (Grenoble INP )-Institut national des sciences de l'Univers (INSU - CNRS)-Institut national de recherche en sciences et technologies pour l'environnement et l'agriculture (IRSTEA)-Université Savoie Mont Blanc (USMB Université de Savoie Université de Chambéry )-Centre National de la Recherche Scientifique (CNRS)-Université Grenoble Alpes 2016-2019 (UGA 2016-2019 )-Institut polytechnique de Grenoble - Grenoble Institute of Technology (Grenoble INP )-Institut national des sciences de l'Univers (INSU - CNRS)-Institut national de recherche en sciences et technologies pour l'environnement et l'agriculture (IRSTEA)-Université Savoie Mont Blanc (USMB Université de Savoie Université de Chambéry )-Centre National de la Recherche Scientifique (CNRS)-Université Grenoble Alpes 2016-2019 (UGA 2016-2019 ) Apprentissage de modèles à partir de données massives (Thoth) Inria Grenoble - Rhône-Alpes Institut National de Recherche en Informatique et en Automatique (Inria)-Institut National de Recherche en Informatique et en Automatique (Inria)-Laboratoire Jean Kuntzmann (LJK) Institut National de Recherche en Informatique et en Automatique (Inria)-Centre National de la Recherche Scientifique (CNRS)-Université Grenoble Alpes (UGA)-Institut polytechnique de Grenoble - Grenoble Institute of Technology (Grenoble INP ) Université Grenoble Alpes (UGA) ANR-19-P3IA-0003,MIAI,MIAI @ Grenoble Alpes(2019) 2022 https://hal.science/hal-03932552 https://doi.org/10.1109/TGRS.2021.3099840 en eng HAL CCSD Institute of Electrical and Electronics Engineers info:eu-repo/semantics/altIdentifier/doi/10.1109/TGRS.2021.3099840 hal-03932552 https://hal.science/hal-03932552 doi:10.1109/TGRS.2021.3099840 ISSN: 0196-2892 IEEE Transactions on Geoscience and Remote Sensing https://hal.science/hal-03932552 IEEE Transactions on Geoscience and Remote Sensing, 2022, 60, pp.5210516. ⟨10.1109/TGRS.2021.3099840⟩ https://ieeexplore.ieee.org/document/9503113 Measurement Task analysis Feature extraction Scattering Training Data mining Convergence [INFO.INFO-TS]Computer Science [cs]/Signal and Image Processing info:eu-repo/semantics/article Journal articles 2022 ftunivsavoie https://doi.org/10.1109/TGRS.2021.3099840 2024-08-19T23:42:44Z International audience Deep learning works normally in PolSAR image classification because the complex terrain scattering characteristic results in large intraclass differences and high interclass similarity. Deep metric learning (DML) aims to make the features keep a closer intraclass and a farther interclass distance. Therefore, we introduce DML and then propose an N-cluster generative adversarial net (N-cluster GAN) framework for PolSAR image classification. However, existing DML losses mainly focus on the relationship between individual samples in feature space. Hence, we propose N-cluster loss that pays more attention to the overall structure of all samples. Meanwhile, traditional hard negative sample mining methods occupy lots of computational resources. In addition, the hard level of the negative samples will affect the model’s performance. Therefore, we explore a new method based on a GAN framework to replace the sample mining. Positive N-cluster loss is added to the discriminator ( D ), and a negative one is added to the generator ( G ). In this way, D will possess better classification ability, and G can produce hard negative samples for D . Then, the hard level of the generated negative samples will change with the discrimination of D , which is appropriate for the proposed model. N-cluster loss can be directly calculated through the extracted features rather than redundant data preparation. The proposed model is verified on four PolSAR datasets from two aspects of the loss function and negative samples mining. Then, it achieves competitive performance compared with state-of-the-art algorithms. Article in Journal/Newspaper DML Université Savoie Mont Blanc: HAL IEEE Transactions on Geoscience and Remote Sensing 60 1 16