4.7 Article

Extracting Building Boundaries from High Resolution Optical Images and LiDAR Data by Integrating the Convolutional Neural Network and the Active Contour Model

Journal

REMOTE SENSING
Volume 10, Issue 9, Pages -

Publisher

MDPI
DOI: 10.3390/rs10091459

Keywords

building boundary extraction; convolutional neural network; active contour model; high resolution optical images; LiDAR

Funding

  1. National Natural Science Foundation of China [41801351 41431178, 41875122]
  2. Natural Science Foundation of Guangdong Province, China [2016A030311016]
  3. National Administration of Surveying, Mapping and Geoinformation of China [GZIT2016-A5-147]
  4. Key Projects for Young Teachers at Sun Yat-sen University [17lgzd02]

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Identifying and extracting building boundaries from remote sensing data has been one of the hot topics in photogrammetry for decades. The active contour model (ACM) is a robust segmentation method that has been widely used in building boundary extraction, but which often results in biased building boundary extraction due to tree and background mixtures. Although the classification methods can improve this efficiently by separating buildings from other objects, there are often ineluctable salt and pepper artifacts. In this paper, we combine the robust classification convolutional neural networks (CNN) and ACM to overcome the current limitations in algorithms for building boundary extraction. We conduct two types of experiments: the first integrates ACM into the CNN construction progress, whereas the second starts building footprint detection with a CNN and then uses ACM for post processing. Three level assessments conducted demonstrate that the proposed methods could efficiently extract building boundaries in five test scenes from two datasets. The achieved mean accuracies in terms of the F1 score for the first type (and the second type) of the experiment are 96.43 3.34% (95.68 3.22%), 88.60 3.99% (89.06 3.96%), and 91.62 +1.61% (91.47 2.58%) at the scene, object, and pixel levels, respectively. The combined CNN and ACM solutions were shown to be effective at extracting building boundaries from high-resolution optical images and LiDAR data.

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