Land-cover classification with remote sensing images based on low-rank fusion of multimodal features

Multimodal remote-sensing land classification aims to achieve more accurate and comprehensive extraction of land features in remote sensing images by integrating feature information from multiple remote sensing data sources. This article proposes a unified multimodal remote sensing feature classific...

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Main Author: LIU Wenjie, WU Xiaoning, DONG Fuan, ZHANG Jinwen, LI Yiyang, CHEN Yong
Format: Article
Language:zho
Published: Editorial Office of Command Control and Simulation 2025-08-01
Series:Zhihui kongzhi yu fangzhen
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Online Access:https://www.zhkzyfz.cn/fileup/1673-3819/PDF/1754290658883-1264277313.pdf
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author LIU Wenjie, WU Xiaoning, DONG Fuan, ZHANG Jinwen, LI Yiyang, CHEN Yong
author_facet LIU Wenjie, WU Xiaoning, DONG Fuan, ZHANG Jinwen, LI Yiyang, CHEN Yong
author_sort LIU Wenjie, WU Xiaoning, DONG Fuan, ZHANG Jinwen, LI Yiyang, CHEN Yong
collection DOAJ
description Multimodal remote-sensing land classification aims to achieve more accurate and comprehensive extraction of land features in remote sensing images by integrating feature information from multiple remote sensing data sources. This article proposes a unified multimodal remote sensing feature classification network, which includes: a weight sharing backbone network responsible for extracting preliminary feature representations from the input data of each modality; The multimodal feature low rank fusion module performs cross modal transmission on high-level semantic features to enhance semantic interaction between modalities; The upsampling operation is responsible for restoring the fused feature map to the same resolution as the input image. This algorithm achieved 91.23% OA and 83.28% mIoU in remote sensing land feature classification tasks, effectively alleviating the problems of insufficient accuracy and insufficient utilization of multimodal information faced by traditional single modal remote sensing classification methods through feature low rank fusion technology, thereby significantly improving the performance of land feature classification.
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institution DOAJ
issn 1673-3819
language zho
publishDate 2025-08-01
publisher Editorial Office of Command Control and Simulation
record_format Article
series Zhihui kongzhi yu fangzhen
spelling doaj-art-63daee0cbc014a91adc0ee017f2e0c1f2025-08-20T03:18:54ZzhoEditorial Office of Command Control and SimulationZhihui kongzhi yu fangzhen1673-38192025-08-01474657310.3969/j.issn.1673-3819.2025.04.010Land-cover classification with remote sensing images based on low-rank fusion of multimodal featuresLIU Wenjie, WU Xiaoning, DONG Fuan, ZHANG Jinwen, LI Yiyang, CHEN Yong0North Automatic Control Technology Research Institute, Taiyuan 030006, ChinaMultimodal remote-sensing land classification aims to achieve more accurate and comprehensive extraction of land features in remote sensing images by integrating feature information from multiple remote sensing data sources. This article proposes a unified multimodal remote sensing feature classification network, which includes: a weight sharing backbone network responsible for extracting preliminary feature representations from the input data of each modality; The multimodal feature low rank fusion module performs cross modal transmission on high-level semantic features to enhance semantic interaction between modalities; The upsampling operation is responsible for restoring the fused feature map to the same resolution as the input image. This algorithm achieved 91.23% OA and 83.28% mIoU in remote sensing land feature classification tasks, effectively alleviating the problems of insufficient accuracy and insufficient utilization of multimodal information faced by traditional single modal remote sensing classification methods through feature low rank fusion technology, thereby significantly improving the performance of land feature classification.https://www.zhkzyfz.cn/fileup/1673-3819/PDF/1754290658883-1264277313.pdfremote-sensing images|land-cover classification|multimodal learning|data fusion
spellingShingle LIU Wenjie, WU Xiaoning, DONG Fuan, ZHANG Jinwen, LI Yiyang, CHEN Yong
Land-cover classification with remote sensing images based on low-rank fusion of multimodal features
Zhihui kongzhi yu fangzhen
remote-sensing images|land-cover classification|multimodal learning|data fusion
title Land-cover classification with remote sensing images based on low-rank fusion of multimodal features
title_full Land-cover classification with remote sensing images based on low-rank fusion of multimodal features
title_fullStr Land-cover classification with remote sensing images based on low-rank fusion of multimodal features
title_full_unstemmed Land-cover classification with remote sensing images based on low-rank fusion of multimodal features
title_short Land-cover classification with remote sensing images based on low-rank fusion of multimodal features
title_sort land cover classification with remote sensing images based on low rank fusion of multimodal features
topic remote-sensing images|land-cover classification|multimodal learning|data fusion
url https://www.zhkzyfz.cn/fileup/1673-3819/PDF/1754290658883-1264277313.pdf
work_keys_str_mv AT liuwenjiewuxiaoningdongfuanzhangjinwenliyiyangchenyong landcoverclassificationwithremotesensingimagesbasedonlowrankfusionofmultimodalfeatures