Applied Sciences (Oct 2024)

VFLD: Voxelized Fractal Local Descriptor

  • Francisco Gomez-Donoso,
  • Felix Escalona,
  • Florian Dargère,
  • Miguel Cazorla

DOI
https://doi.org/10.3390/app14209414
Journal volume & issue
Vol. 14, no. 20
p. 9414

Abstract

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A variety of methods for 3D object recognition and registration based on a deep learning pipeline have recently emerged. Nonetheless, these methods require large amounts of data that are not easy to obtain, sometimes rendering them virtually useless in real-life scenarios due to a lack of generalization capabilities. To counter this, we propose a novel local descriptor that takes advantage of the fractal dimension. For each 3D point, we create a descriptor by computing the fractal dimension of the neighbors at different radii. Our redmethod has many benefits, such as being agnostic to the sensor of choice and noise, up to a level, and having few parameters to tinker with. Furthermore, it requires no training and does not rely on semantic information. We test our descriptor using well-known datasets and it largely outperforms Fast Point Feature Histogram, which is the state-of-the-art descriptor for 3D data. We also apply our descriptor to a registration pipeline and achieve accurate three-dimensional representations of the scenes, which are captured with a commercial sensor.

Keywords