Super-Resolution Integrated Building Semantic Segmentation for Multi-Source Remote Sensing Imagery

Multi-source remote sensing imagery has become widely accessible owing to the development of data acquisition systems. In this paper, we address the challenging task of the semantic segmentation of buildings via multi-source remote sensing imagery with different spatial resolutions. Unlike previous...

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Main Authors: Zhiling Guo, Guangming Wu, Xiaoya Song, Wei Yuan, Qi Chen, Haoran Zhang, Xiaodan Shi, Mingzhou Xu, Yongwei Xu, Ryosuke Shibasaki, Xiaowei Shao
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8761866/
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spelling doaj-d5ea306a27b14bf39a727cea81b9721c2021-04-05T17:25:15ZengIEEEIEEE Access2169-35362019-01-017993819939710.1109/ACCESS.2019.29286468761866Super-Resolution Integrated Building Semantic Segmentation for Multi-Source Remote Sensing ImageryZhiling Guo0https://orcid.org/0000-0002-2532-6117Guangming Wu1Xiaoya Song2Wei Yuan3Qi Chen4Haoran Zhang5https://orcid.org/0000-0002-4641-0641Xiaodan Shi6Mingzhou Xu7Yongwei Xu8Ryosuke Shibasaki9Xiaowei Shao10Center for Spatial Information Science, The University of Tokyo, Kashiwa, JapanCenter for Spatial Information Science, The University of Tokyo, Kashiwa, JapanCenter for Spatial Information Science, The University of Tokyo, Kashiwa, JapanCenter for Spatial Information Science, The University of Tokyo, Kashiwa, JapanSchool of Geography and Information Engineering, China University of Geosciences, Wuhan, ChinaCenter for Spatial Information Science, The University of Tokyo, Kashiwa, JapanCenter for Spatial Information Science, The University of Tokyo, Kashiwa, JapanCenter for Spatial Information Science, The University of Tokyo, Kashiwa, JapanCenter for Spatial Information Science, The University of Tokyo, Kashiwa, JapanCenter for Spatial Information Science, The University of Tokyo, Kashiwa, JapanCenter for Spatial Information Science, The University of Tokyo, Kashiwa, JapanMulti-source remote sensing imagery has become widely accessible owing to the development of data acquisition systems. In this paper, we address the challenging task of the semantic segmentation of buildings via multi-source remote sensing imagery with different spatial resolutions. Unlike previous works that mainly focused on optimizing the segmentation model, which did not enable the severe problems caused by the unaligned resolution between the training and testing data to be fundamentally solved, we propose to integrate SR techniques with the existing framework to enhance the segmentation performance. The feasibility of the proposed method was evaluated by utilizing representative multi-source study materials: high-resolution (HR) aerial and low-resolution (LR) panchromatic satellite imagery as the training and testing data, respectively. Instead of directly conducting building segmentation from the LR imagery by using the model trained using the HR imagery, the deep learning-based super-resolution (SR) model was first adopted to super-resolved LR imagery into SR space, which could mitigate the influence of the difference in resolution between the training and testing data. The experimental results obtained from the test area in Tokyo, Japan, demonstrate that the proposed SR-integrated method significantly outperforms that without SR, improving the Jaccard index and kappa by approximately 19.01% and 19.10%, respectively. The results confirmed that the proposed method is a viable tool for building semantic segmentation, especially when the resolution is unaligned.https://ieeexplore.ieee.org/document/8761866/Building segmentationdeep learningremote sensingsuper-resolution
collection DOAJ
language English
format Article
sources DOAJ
author Zhiling Guo
Guangming Wu
Xiaoya Song
Wei Yuan
Qi Chen
Haoran Zhang
Xiaodan Shi
Mingzhou Xu
Yongwei Xu
Ryosuke Shibasaki
Xiaowei Shao
spellingShingle Zhiling Guo
Guangming Wu
Xiaoya Song
Wei Yuan
Qi Chen
Haoran Zhang
Xiaodan Shi
Mingzhou Xu
Yongwei Xu
Ryosuke Shibasaki
Xiaowei Shao
Super-Resolution Integrated Building Semantic Segmentation for Multi-Source Remote Sensing Imagery
IEEE Access
Building segmentation
deep learning
remote sensing
super-resolution
author_facet Zhiling Guo
Guangming Wu
Xiaoya Song
Wei Yuan
Qi Chen
Haoran Zhang
Xiaodan Shi
Mingzhou Xu
Yongwei Xu
Ryosuke Shibasaki
Xiaowei Shao
author_sort Zhiling Guo
title Super-Resolution Integrated Building Semantic Segmentation for Multi-Source Remote Sensing Imagery
title_short Super-Resolution Integrated Building Semantic Segmentation for Multi-Source Remote Sensing Imagery
title_full Super-Resolution Integrated Building Semantic Segmentation for Multi-Source Remote Sensing Imagery
title_fullStr Super-Resolution Integrated Building Semantic Segmentation for Multi-Source Remote Sensing Imagery
title_full_unstemmed Super-Resolution Integrated Building Semantic Segmentation for Multi-Source Remote Sensing Imagery
title_sort super-resolution integrated building semantic segmentation for multi-source remote sensing imagery
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description Multi-source remote sensing imagery has become widely accessible owing to the development of data acquisition systems. In this paper, we address the challenging task of the semantic segmentation of buildings via multi-source remote sensing imagery with different spatial resolutions. Unlike previous works that mainly focused on optimizing the segmentation model, which did not enable the severe problems caused by the unaligned resolution between the training and testing data to be fundamentally solved, we propose to integrate SR techniques with the existing framework to enhance the segmentation performance. The feasibility of the proposed method was evaluated by utilizing representative multi-source study materials: high-resolution (HR) aerial and low-resolution (LR) panchromatic satellite imagery as the training and testing data, respectively. Instead of directly conducting building segmentation from the LR imagery by using the model trained using the HR imagery, the deep learning-based super-resolution (SR) model was first adopted to super-resolved LR imagery into SR space, which could mitigate the influence of the difference in resolution between the training and testing data. The experimental results obtained from the test area in Tokyo, Japan, demonstrate that the proposed SR-integrated method significantly outperforms that without SR, improving the Jaccard index and kappa by approximately 19.01% and 19.10%, respectively. The results confirmed that the proposed method is a viable tool for building semantic segmentation, especially when the resolution is unaligned.
topic Building segmentation
deep learning
remote sensing
super-resolution
url https://ieeexplore.ieee.org/document/8761866/
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