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Nesti-Net: Normal Estimation for Unstructured 3D Point Clouds using Convolutional Neural Networks

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In this paper, we propose a normal estimation method for unstructured 3D point clouds. This method, called Nesti-Net, builds on a new local point cloud representation which consists of multi-scale point statistics (MuPS), estimated on a local coarse Gaussian grid. This representation is a suitable input to a CNN architecture. The normals are estimated using a mixture-of-experts (MoE) architecture, which relies on a data-driven approach for selecting the optimal scale around each point and encourages sub-network specialization. Interesting insights into the network's resource distribution are provided. The scale prediction significantly improves robustness to different noise levels, point density variations and different levels of detail. We achieve state-of-the-art results on a benchmark synthetic dataset and present qualitative results on real scanned scenes.

Yizhak Ben-Shabat, Michael Lindenbaum, Anath Fischer• 2018

Related benchmarks

TaskDatasetResultRank
Normal estimationPCPNet (test)
PGP580.57
63
Unoriented Normal EstimationPCPNet (test)
RMSE6.99
56
Normal estimationSceneNN (test)
RMSE (Clean)13.01
21
Unoriented normal vector estimationPCPNet
RMSE (None)6.99
17
Normal estimationPCPNet 1.0 (test)
RMSE (No Noise)7.06
13
Normal estimationPCPNet dataset (test)
Average Error12.41
13
Point cloud normal estimationPCPNet Synthetic (test)
Angular Error (No Noise)6.99
11
Normal estimationPCPNet dataset
Execution Time (100k points)1.35e+3
3
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