Remote Sensing (Jul 2024)

Evaluation of Denoising and Voxelization Algorithms on 3D Point Clouds

  • Sara Gonizzi Barsanti,
  • Marco Raoul Marini,
  • Saverio Giulio Malatesta,
  • Adriana Rossi

DOI
https://doi.org/10.3390/rs16142632
Journal volume & issue
Vol. 16, no. 14
p. 2632

Abstract

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Proper documentation is fundamental to providing structural health monitoring, damage identification and failure assessment for Cultural Heritage (CH). Three-dimensional models from photogrammetric and laser scanning surveys usually provide 3D point clouds that can be converted into meshes. The point clouds usually contain noise data due to different causes: non-cooperative material or surfaces, bad lighting, complex geometry and low accuracy of the instruments utilized. Point cloud denoising has become one of the hot topics of 3D geometric data processing, removing these noise data to recover the ground-truth point cloud and adding smoothing to the ideal surface. These cleaned point clouds can be converted in volumes with different algorithms, suitable for different uses, mainly for structural analysis. This paper aimed to analyse the geometric accuracy of algorithms available for the conversion of 3D point clouds into volumetric models that can be used for structural analyses through the FEA process. The process is evaluated, highlighting problems and difficulties that lie in poor reconstruction results of volumes from denoised point clouds due to the geometric complexity of the objects.

Keywords