IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing (Jan 2024)

MSBR-GNet: A High-Resolution Imagery Generative Optimization Model for Building Rooftop Boundary Guided by Interpretable Statistical Model in Spatial and Spectral Domain

  • Jianhua Liu,
  • Xiaohe Ning,
  • Mengchen Wang,
  • Xinyu Wang,
  • Yuan Liu,
  • Xiaoyou Chen,
  • Shiyi Zeng

DOI
https://doi.org/10.1109/JSTARS.2024.3382636
Journal volume & issue
Vol. 17
pp. 8164 – 8188

Abstract

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Automated extraction of building rooftop information is of great significance in remote sensing of land resources and other related applications. In this article, a building roof boundary generating optimization model called multiscale boundary regulation generative net (MSBR-GNet), guided by interpretability statistical model in the spatial and spectral domains, is proposed to solve the problem of inaccurate boundary segmentation caused by mixed pixel transition region of remote sensing images. Incorporate the boundary loss function guided by statistical models in the spatial and spectral domains into the generator loss calculation of MSBR-GNet, precisely constrain the regularized generation of building rooftop contours by interpretable mechanism. The experiments show that MSBR-GNet can extract more regular building rooftop contours, and the precision values in the INRIA, WHU, and Massachusetts public datasets reached 0.9275, 0.9228, and 0.8779, respectively, which can ensure the accuracy of building extraction while achieving optimal results in the boundary morphology evaluation index.

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