A Lightweight Building Extraction Approach for Contour Recovery in Complex Urban Environments

Jiaxin He, Yong Cheng, Wei Wang, Zhoupeng Ren*, Ce Zhang, Wenjie Zhang

*Corresponding author for this work

Research output: Contribution to journalArticle (Academic Journal)peer-review

3 Citations (Scopus)

Abstract

High-spatial-resolution urban buildings play a crucial role in urban planning, emergency response, and disaster management. However, challenges such as missing building contours due to occlusion problems (occlusion between buildings of different heights and buildings obscured by trees), uneven contour extraction due to mixing of building edges with other feature elements (roads, vehicles, trees), and slow training speed in high-resolution image data hinder efficient and accurate building extraction. To address these issues, we propose a semantic segmentation model composed of a lightweight backbone, coordinate attention module, and pooling fusion module, which achieves lightweight building extraction and adaptive recovery of spatial contours. Comparative experiments were conducted on datasets featuring typical urban building instances in China and the Mapchallenge dataset, comparing our method with several classical and mainstream semantic segmentation algorithms. The results demonstrate the effectiveness of our approach, achieving excellent mean intersection over union (mIoU) and frames per second (FPS) scores on both datasets (China dataset: 85.11% and 110.67FPS; Mapchallenge dataset: 90.27% and 117.68FPS). Quantitative evaluations indicate that our model not only significantly improves computational speed but also ensures high accuracy in the extraction of urban buildings from high-resolution imagery. Specifically, on the typical urban building dataset in China, our model shows an accuracy improvement of 0.64% and a speed increase of 70.03FPS compared to the baseline model. On the Mapchallenge dataset, our model achieves an accuracy improvement of 0.54% and a speed increase of 42.39FPS compared to the baseline model. Our research indicates that lightweight networks show significant potential in urban building extraction tasks. In the future, the segmentation accuracy and prediction speed can be further balanced on the basis of adjusting the deep learning model or introducing remote sensing indices, which can be applied to research scenarios such as greenfield extraction or multi-class target extraction.
Original languageEnglish
Article number740
Number of pages16
JournalRemote Sensing
Volume16
Issue number5
DOIs
Publication statusPublished - 20 Feb 2024

Bibliographical note

Publisher Copyright:
© 2024 by the authors.

Keywords

  • remote sensing images
  • lightweight
  • context information
  • adaptive recovery
  • building extraction

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