Canadian Journal of Remote Sensing (May 2021)

Deep Learning-Based Classification of Large-Scale Airborne LiDAR Point Cloud

  • Mathieu Turgeon-Pelchat,
  • Samuel Foucher,
  • Yacine Bouroubi

DOI
https://doi.org/10.1080/07038992.2021.1927687
Journal volume & issue
Vol. 47, no. 3
pp. 381 – 395

Abstract

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Airborne LiDAR data allow the precise modeling of topography and are used in multiple contexts. To facilitate further analysis, the point cloud classification process allows the assignment of a class, object or feature, to each point. This research uses ConvPoint, a deep learning method, to perform airborne point cloud classification at scale, in rural and urban contexts. Specifically, our experiments are located near Montreal (QC) and Saint-Jean (NB) and our approach is designed to classify five classes; we used “Building”, “Ground”, “Water”, “Low Vegetation” and “Mid-High Vegetation”. Experimenting with different configurations, we achieved excellent Intersection-over-Union results for the “Mid-High Vegetation” (93%) and “Building” (86%) classes on both datasets and provide insights to improve processing times as well as accuracy.