Image Retrieval Based on Learning to Rank and Multiple Loss

Image retrieval applying deep convolutional features has achieved the most advanced performance in most standard benchmark tests. In image retrieval, deep metric learning (DML) plays a key role and aims to capture semantic similarity information carried by data points. However, two factors may imped...

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Published in:ISPRS International Journal of Geo-Information
Main Authors: Lili Fan, Hongwei Zhao, Haoyu Zhao, Pingping Liu, Huangshui Hu
Format: Text
Language:English
Published: Multidisciplinary Digital Publishing Institute 2019
Subjects:
DML
Online Access:https://doi.org/10.3390/ijgi8090393
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spelling ftmdpi:oai:mdpi.com:/2220-9964/8/9/393/ 2023-08-20T04:06:10+02:00 Image Retrieval Based on Learning to Rank and Multiple Loss Lili Fan Hongwei Zhao Haoyu Zhao Pingping Liu Huangshui Hu agris 2019-09-04 application/pdf https://doi.org/10.3390/ijgi8090393 EN eng Multidisciplinary Digital Publishing Institute https://dx.doi.org/10.3390/ijgi8090393 https://creativecommons.org/licenses/by/4.0/ ISPRS International Journal of Geo-Information; Volume 8; Issue 9; Pages: 393 multiple loss function computer vision deep image retrieval learning to rank deep learning Text 2019 ftmdpi https://doi.org/10.3390/ijgi8090393 2023-07-31T22:34:49Z Image retrieval applying deep convolutional features has achieved the most advanced performance in most standard benchmark tests. In image retrieval, deep metric learning (DML) plays a key role and aims to capture semantic similarity information carried by data points. However, two factors may impede the accuracy of image retrieval. First, when learning the similarity of negative examples, current methods separate negative pairs into equal distance in the embedding space. Thus, the intraclass data distribution might be missed. Second, given a query, either a fraction of data points, or all of them, are incorporated to build up the similarity structure, which makes it rather complex to calculate similarity or to choose example pairs. In this study, in order to achieve more accurate image retrieval, we proposed a method based on learning to rank and multiple loss (LRML). To address the first problem, through learning the ranking sequence, we separate the negative pairs from the query image into different distance. To tackle the second problem, we used a positive example in the gallery and negative sets from the bottom five ranked by similarity, thereby enhancing training efficiency. Our significant experimental results demonstrate that the proposed method achieves state-of-the-art performance on three widely used benchmarks. Text DML MDPI Open Access Publishing The Gallery ENVELOPE(-86.417,-86.417,72.535,72.535) ISPRS International Journal of Geo-Information 8 9 393
institution Open Polar
collection MDPI Open Access Publishing
op_collection_id ftmdpi
language English
topic multiple loss function
computer vision
deep image retrieval
learning to rank
deep learning
spellingShingle multiple loss function
computer vision
deep image retrieval
learning to rank
deep learning
Lili Fan
Hongwei Zhao
Haoyu Zhao
Pingping Liu
Huangshui Hu
Image Retrieval Based on Learning to Rank and Multiple Loss
topic_facet multiple loss function
computer vision
deep image retrieval
learning to rank
deep learning
description Image retrieval applying deep convolutional features has achieved the most advanced performance in most standard benchmark tests. In image retrieval, deep metric learning (DML) plays a key role and aims to capture semantic similarity information carried by data points. However, two factors may impede the accuracy of image retrieval. First, when learning the similarity of negative examples, current methods separate negative pairs into equal distance in the embedding space. Thus, the intraclass data distribution might be missed. Second, given a query, either a fraction of data points, or all of them, are incorporated to build up the similarity structure, which makes it rather complex to calculate similarity or to choose example pairs. In this study, in order to achieve more accurate image retrieval, we proposed a method based on learning to rank and multiple loss (LRML). To address the first problem, through learning the ranking sequence, we separate the negative pairs from the query image into different distance. To tackle the second problem, we used a positive example in the gallery and negative sets from the bottom five ranked by similarity, thereby enhancing training efficiency. Our significant experimental results demonstrate that the proposed method achieves state-of-the-art performance on three widely used benchmarks.
format Text
author Lili Fan
Hongwei Zhao
Haoyu Zhao
Pingping Liu
Huangshui Hu
author_facet Lili Fan
Hongwei Zhao
Haoyu Zhao
Pingping Liu
Huangshui Hu
author_sort Lili Fan
title Image Retrieval Based on Learning to Rank and Multiple Loss
title_short Image Retrieval Based on Learning to Rank and Multiple Loss
title_full Image Retrieval Based on Learning to Rank and Multiple Loss
title_fullStr Image Retrieval Based on Learning to Rank and Multiple Loss
title_full_unstemmed Image Retrieval Based on Learning to Rank and Multiple Loss
title_sort image retrieval based on learning to rank and multiple loss
publisher Multidisciplinary Digital Publishing Institute
publishDate 2019
url https://doi.org/10.3390/ijgi8090393
op_coverage agris
long_lat ENVELOPE(-86.417,-86.417,72.535,72.535)
geographic The Gallery
geographic_facet The Gallery
genre DML
genre_facet DML
op_source ISPRS International Journal of Geo-Information; Volume 8; Issue 9; Pages: 393
op_relation https://dx.doi.org/10.3390/ijgi8090393
op_rights https://creativecommons.org/licenses/by/4.0/
op_doi https://doi.org/10.3390/ijgi8090393
container_title ISPRS International Journal of Geo-Information
container_volume 8
container_issue 9
container_start_page 393
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