Correspondence-Free Point Cloud Registration with SO(3)-Equivariant
Implicit Shape Representations
- URL: http://arxiv.org/abs/2107.10296v1
- Date: Wed, 21 Jul 2021 18:18:21 GMT
- Title: Correspondence-Free Point Cloud Registration with SO(3)-Equivariant
Implicit Shape Representations
- Authors: Minghan Zhu, Maani Ghaffari, Huei Peng
- Abstract summary: The proposed shape registration method achieves three major advantages through combining equivariant feature learning with implicit shape models.
Results show superior performance compared with existing correspondence-free deep registration methods.
- Score: 12.343333815270402
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper proposes a correspondence-free method for point cloud rotational
registration. We learn an embedding for each point cloud in a feature space
that preserves the SO(3)-equivariance property, enabled by recent developments
in equivariant neural networks. The proposed shape registration method achieves
three major advantages through combining equivariant feature learning with
implicit shape models. First, the necessity of data association is removed
because of the permutation-invariant property in network architectures similar
to PointNet. Second, the registration in feature space can be solved in
closed-form using Horn's method due to the SO(3)-equivariance property. Third,
the registration is robust to noise in the point cloud because of implicit
shape learning. The experimental results show superior performance compared
with existing correspondence-free deep registration methods.
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