2021
Conference article  Open Access

Evaluating deep learning methods for low resolution point cloud registration in outdoor scenarios

Siddique A., Corsini M., Ganovelli F. And Cignoni P.

Point cloud registration  Point cloud alignment  3D reconstruction 

Point cloud registration is a fundamental task in 3D reconstruction and environment perception. We explore the performance of modern Deep Learning-based registration techniques, in particular Deep Global Registration (DGR) and Learning Multi-view Registration (LMVR), on an outdoor real world data consisting of thousands of range maps of a building acquired by a Velodyne LIDAR mounted on a drone. We used these pairwise registration methods in a sequential pipeline to obtain an initial rough registration. The output of this pipeline can be further globally refined. This simple registration pipeline allow us to assess if these modern methods are able to deal with this low quality data. Our experiments demonstrated that, despite some design choices adopted to take into account the peculiarities of the data, more work is required to improve the results of the registration.

Source: STAG 2021 - Eurographics Italian Chapter Conference, pp. 187–191, Online Conference, 28-29/10/2021

Publisher: The Eurographics Association, Goslar, DEU


Metrics



Back to previous page
BibTeX entry
@inproceedings{oai:it.cnr:prodotti:458815,
	title = {Evaluating deep learning methods for low resolution point cloud registration in outdoor scenarios},
	author = {Siddique A. and Corsini M. and Ganovelli F. And Cignoni P.},
	publisher = {The Eurographics Association, Goslar, DEU},
	doi = {10.2312/stag.20211489},
	booktitle = {STAG 2021 - Eurographics Italian Chapter Conference, pp. 187–191, Online Conference, 28-29/10/2021},
	year = {2021}
}

EVOCATION
Advanced Visual and Geometric Computing for 3D Capture, Display, and Fabrication

ENCORE
ENergy aware BIM Cloud Platform in a COst-effective Building REnovation Context


OpenAIRE