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Extracting Rectified Building Footprints from Traditional Orthophotos: A New Workflow. | LitMetric

Extracting Rectified Building Footprints from Traditional Orthophotos: A New Workflow.

Sensors (Basel)

School of Remote Sensing and Information Engineering, Wuhan University, Wuhan 430072, China.

Published: December 2021

AI Article Synopsis

  • Deep learning methods like convolutional neural networks have significantly enhanced building segmentation from remote sensing images, but traditional orthophotos often create misalignments between roof outlines and actual building footprints, complicating extraction, especially for high-rise structures.
  • To address this, a new workflow is introduced that uses semantic segmentation with facade and roof labels to train a network, utilizing EfficientNet to accurately identify building segments.
  • The approach culminates in clustering these segments to generate rectified building footprints, using an energy function to align roof outlines with building footprints, showing improved accuracy in experiments conducted on aerial images of Shanghai's residential areas.

Article Abstract

Deep learning techniques such as convolutional neural networks have largely improved the performance of building segmentation from remote sensing images. However, the images for building segmentation are often in the form of traditional orthophotos, where the relief displacement would cause non-negligible misalignment between the roof outline and the footprint of a building; such misalignment poses considerable challenges for extracting accurate building footprints, especially for high-rise buildings. Aiming at alleviating this problem, a new workflow is proposed for generating rectified building footprints from traditional orthophotos. We first use the facade labels, which are prepared efficiently at low cost, along with the roof labels to train a semantic segmentation network. Then, the well-trained network, which employs the state-of-the-art version of EfficientNet as backbone, extracts the roof segments and the facade segments of buildings from the input image. Finally, after clustering the classified pixels into instance-level building objects and tracing out the roof outlines, an energy function is proposed to drive the roof outline to maximally align with the building footprint; thus, the rectified footprints can be generated. The experiments on the aerial orthophotos covering a high-density residential area in Shanghai demonstrate that the proposed workflow can generate obviously more accurate building footprints than the baseline methods, especially for high-rise buildings.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8749658PMC
http://dx.doi.org/10.3390/s22010207DOI Listing

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