MwdpNet: towards improving the recognition accuracy of tiny targets in high-resolution remote sensing image

Abstract This study aims to develop a deep learning model to improve the accuracy of identifying tiny targets on high resolution remote sensing (HRS) images. We propose a novel multi-level weighted depth perception network, which we refer to as MwdpNet, to better capture feature information of tiny...

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Main Authors: Dongling Ma, Baoze Liu, Qingji Huang, Qian Zhang
Format: Article
Language:English
Published: Nature Portfolio 2023-08-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-023-41021-8
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author Dongling Ma
Baoze Liu
Qingji Huang
Qian Zhang
author_facet Dongling Ma
Baoze Liu
Qingji Huang
Qian Zhang
author_sort Dongling Ma
collection DOAJ
description Abstract This study aims to develop a deep learning model to improve the accuracy of identifying tiny targets on high resolution remote sensing (HRS) images. We propose a novel multi-level weighted depth perception network, which we refer to as MwdpNet, to better capture feature information of tiny targets in HRS images. In our method, we introduce a new group residual structure, S-Darknet53, as the backbone network of our proposed MwdpNet, and propose a multi-level feature weighted fusion strategy that fully utilizes shallow feature information to improve detection performance, particularly for tiny targets. To fully describe the high-level semantic information of the image, achieving better classification performance, we design a depth perception module (DPModule). Following this step, the channel attention guidance module (CAGM) is proposed to obtain attention feature maps for each scale, enhancing the recall rate of tiny targets and generating candidate regions more efficiently. Finally, we create four datasets of tiny targets and conduct comparative experiments on them. The results demonstrate that the mean Average Precision (mAP) of our proposed MwdpNet on the four datasets achieve 87.0%, 89.2%, 78.3%, and 76.0%, respectively, outperforming nine mainstream object detection algorithms. Our proposed approach provides an effective means and strategy for detecting tiny targets on HRS images.
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spelling doaj.art-ae69b3a8d34548208315847f25f4512a2023-11-19T12:59:32ZengNature PortfolioScientific Reports2045-23222023-08-0113111210.1038/s41598-023-41021-8MwdpNet: towards improving the recognition accuracy of tiny targets in high-resolution remote sensing imageDongling Ma0Baoze Liu1Qingji Huang2Qian Zhang3School of Surveying and Geo-Informatics, Shandong Jianzhu UniversitySchool of Surveying and Geo-Informatics, Shandong Jianzhu UniversitySchool of Surveying and Geo-Informatics, Shandong Jianzhu UniversitySchool of Surveying and Geo-Informatics, Shandong Jianzhu UniversityAbstract This study aims to develop a deep learning model to improve the accuracy of identifying tiny targets on high resolution remote sensing (HRS) images. We propose a novel multi-level weighted depth perception network, which we refer to as MwdpNet, to better capture feature information of tiny targets in HRS images. In our method, we introduce a new group residual structure, S-Darknet53, as the backbone network of our proposed MwdpNet, and propose a multi-level feature weighted fusion strategy that fully utilizes shallow feature information to improve detection performance, particularly for tiny targets. To fully describe the high-level semantic information of the image, achieving better classification performance, we design a depth perception module (DPModule). Following this step, the channel attention guidance module (CAGM) is proposed to obtain attention feature maps for each scale, enhancing the recall rate of tiny targets and generating candidate regions more efficiently. Finally, we create four datasets of tiny targets and conduct comparative experiments on them. The results demonstrate that the mean Average Precision (mAP) of our proposed MwdpNet on the four datasets achieve 87.0%, 89.2%, 78.3%, and 76.0%, respectively, outperforming nine mainstream object detection algorithms. Our proposed approach provides an effective means and strategy for detecting tiny targets on HRS images.https://doi.org/10.1038/s41598-023-41021-8
spellingShingle Dongling Ma
Baoze Liu
Qingji Huang
Qian Zhang
MwdpNet: towards improving the recognition accuracy of tiny targets in high-resolution remote sensing image
Scientific Reports
title MwdpNet: towards improving the recognition accuracy of tiny targets in high-resolution remote sensing image
title_full MwdpNet: towards improving the recognition accuracy of tiny targets in high-resolution remote sensing image
title_fullStr MwdpNet: towards improving the recognition accuracy of tiny targets in high-resolution remote sensing image
title_full_unstemmed MwdpNet: towards improving the recognition accuracy of tiny targets in high-resolution remote sensing image
title_short MwdpNet: towards improving the recognition accuracy of tiny targets in high-resolution remote sensing image
title_sort mwdpnet towards improving the recognition accuracy of tiny targets in high resolution remote sensing image
url https://doi.org/10.1038/s41598-023-41021-8
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