PointProNets: Consolidation of Point Clouds with Convolutional Neural Networks

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Date
2018
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Publisher
The Eurographics Association and John Wiley & Sons Ltd.
Abstract
With the widespread use of 3D acquisition devices, there is an increasing need of consolidating captured noisy and sparse point cloud data for accurate representation of the underlying structures. There are numerous algorithms that rely on a variety of assumptions such as local smoothness to tackle this ill-posed problem. However, such priors lead to loss of important features and geometric detail. Instead, we propose a novel data-driven approach for point cloud consolidation via a convolutional neural network based technique. Our method takes a sparse and noisy point cloud as input, and produces a dense point cloud accurately representing the underlying surface by resolving ambiguities in geometry. The resulting point set can then be used to reconstruct accurate manifold surfaces and estimate surface properties. To achieve this, we propose a generative neural network architecture that can input and output point clouds, unlocking a powerful set of tools from the deep learning literature. We use this architecture to apply convolutional neural networks to local patches of geometry for high quality and efficient point cloud consolidation. This results in significantly more accurate surfaces, as we illustrate with a diversity of examples and comparisons to the state-of-the-art.
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@article{
10.1111:cgf.13344
, journal = {Computer Graphics Forum}, title = {{
PointProNets: Consolidation of Point Clouds with Convolutional Neural Networks
}}, author = {
Roveri, Riccardo
 and
Öztireli, A. Cengiz
 and
Pandele, Ioana
 and
Gross, Markus
}, year = {
2018
}, publisher = {
The Eurographics Association and John Wiley & Sons Ltd.
}, ISSN = {
1467-8659
}, DOI = {
10.1111/cgf.13344
} }
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