Similarity Retention Loss (SRL) Based on Deep Metric Learning for Remote Sensing Image Retrieval

Recently, with the rapid growth of the number of datasets with remote sensing images, it is urgent to propose an effective image retrieval method to manage and use such image data. In this paper, we propose a deep metric learning strategy based on Similarity Retention Loss (SRL) for content-based re...

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Bibliographic Details
Published in:ISPRS International Journal of Geo-Information
Main Authors: Hongwei Zhao, Lin Yuan, Haoyu Zhao
Format: Text
Language:English
Published: Multidisciplinary Digital Publishing Institute 2020
Subjects:
DML
Online Access:https://doi.org/10.3390/ijgi9020061
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spelling ftmdpi:oai:mdpi.com:/2220-9964/9/2/61/ 2023-08-20T04:06:10+02:00 Similarity Retention Loss (SRL) Based on Deep Metric Learning for Remote Sensing Image Retrieval Hongwei Zhao Lin Yuan Haoyu Zhao agris 2020-01-21 application/pdf https://doi.org/10.3390/ijgi9020061 EN eng Multidisciplinary Digital Publishing Institute https://dx.doi.org/10.3390/ijgi9020061 https://creativecommons.org/licenses/by/4.0/ ISPRS International Journal of Geo-Information; Volume 9; Issue 2; Pages: 61 content-based remote sensing image retrieval (CBRSIR) deep metric learning (DML) structural ranking consistency Text 2020 ftmdpi https://doi.org/10.3390/ijgi9020061 2023-07-31T23:01:31Z Recently, with the rapid growth of the number of datasets with remote sensing images, it is urgent to propose an effective image retrieval method to manage and use such image data. In this paper, we propose a deep metric learning strategy based on Similarity Retention Loss (SRL) for content-based remote sensing image retrieval. We have improved the current metric learning methods from the following aspects—sample mining, network model structure and metric loss function. On the basis of redefining the hard samples and easy samples, we mine the positive and negative samples according to the size and spatial distribution of the dataset classes. At the same time, Similarity Retention Loss is proposed and the ratio of easy samples to hard samples in the class is used to assign dynamic weights to the hard samples selected in the experiment to learn the sample structure characteristics within the class. For negative samples, different weights are set based on the spatial distribution of the surrounding samples to maintain the consistency of similar structures among classes. Finally, we conduct a large number of comprehensive experiments on two remote sensing datasets with the fine-tuning network. The experiment results show that the method used in this paper achieves the state-of-the-art performance. Text DML MDPI Open Access Publishing ISPRS International Journal of Geo-Information 9 2 61
institution Open Polar
collection MDPI Open Access Publishing
op_collection_id ftmdpi
language English
topic content-based remote sensing image retrieval (CBRSIR)
deep metric learning (DML)
structural ranking consistency
spellingShingle content-based remote sensing image retrieval (CBRSIR)
deep metric learning (DML)
structural ranking consistency
Hongwei Zhao
Lin Yuan
Haoyu Zhao
Similarity Retention Loss (SRL) Based on Deep Metric Learning for Remote Sensing Image Retrieval
topic_facet content-based remote sensing image retrieval (CBRSIR)
deep metric learning (DML)
structural ranking consistency
description Recently, with the rapid growth of the number of datasets with remote sensing images, it is urgent to propose an effective image retrieval method to manage and use such image data. In this paper, we propose a deep metric learning strategy based on Similarity Retention Loss (SRL) for content-based remote sensing image retrieval. We have improved the current metric learning methods from the following aspects—sample mining, network model structure and metric loss function. On the basis of redefining the hard samples and easy samples, we mine the positive and negative samples according to the size and spatial distribution of the dataset classes. At the same time, Similarity Retention Loss is proposed and the ratio of easy samples to hard samples in the class is used to assign dynamic weights to the hard samples selected in the experiment to learn the sample structure characteristics within the class. For negative samples, different weights are set based on the spatial distribution of the surrounding samples to maintain the consistency of similar structures among classes. Finally, we conduct a large number of comprehensive experiments on two remote sensing datasets with the fine-tuning network. The experiment results show that the method used in this paper achieves the state-of-the-art performance.
format Text
author Hongwei Zhao
Lin Yuan
Haoyu Zhao
author_facet Hongwei Zhao
Lin Yuan
Haoyu Zhao
author_sort Hongwei Zhao
title Similarity Retention Loss (SRL) Based on Deep Metric Learning for Remote Sensing Image Retrieval
title_short Similarity Retention Loss (SRL) Based on Deep Metric Learning for Remote Sensing Image Retrieval
title_full Similarity Retention Loss (SRL) Based on Deep Metric Learning for Remote Sensing Image Retrieval
title_fullStr Similarity Retention Loss (SRL) Based on Deep Metric Learning for Remote Sensing Image Retrieval
title_full_unstemmed Similarity Retention Loss (SRL) Based on Deep Metric Learning for Remote Sensing Image Retrieval
title_sort similarity retention loss (srl) based on deep metric learning for remote sensing image retrieval
publisher Multidisciplinary Digital Publishing Institute
publishDate 2020
url https://doi.org/10.3390/ijgi9020061
op_coverage agris
genre DML
genre_facet DML
op_source ISPRS International Journal of Geo-Information; Volume 9; Issue 2; Pages: 61
op_relation https://dx.doi.org/10.3390/ijgi9020061
op_rights https://creativecommons.org/licenses/by/4.0/
op_doi https://doi.org/10.3390/ijgi9020061
container_title ISPRS International Journal of Geo-Information
container_volume 9
container_issue 2
container_start_page 61
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