P2CADNet: An End-to-End Reconstruction Network for Parametric 3D CAD
Model from Point Clouds
- URL: http://arxiv.org/abs/2310.02638v1
- Date: Wed, 4 Oct 2023 08:00:05 GMT
- Title: P2CADNet: An End-to-End Reconstruction Network for Parametric 3D CAD
Model from Point Clouds
- Authors: Zhihao Zong, Fazhi He, Rubin Fan, Yuxin Liu
- Abstract summary: This paper proposes an end-to-end network to reconstruct featured CAD model from point cloud (P2CADNet)
We evaluate P2CADNet on the public dataset, and the experimental results show that P2CADNet has excellent reconstruction quality and accuracy.
- Score: 10.041481396324517
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Computer Aided Design (CAD), especially the feature-based parametric CAD,
plays an important role in modern industry and society. However, the
reconstruction of featured CAD model is more challenging than the
reconstruction of other CAD models. To this end, this paper proposes an
end-to-end network to reconstruct featured CAD model from point cloud
(P2CADNet). Initially, the proposed P2CADNet architecture combines a point
cloud feature extractor, a CAD sequence reconstructor and a parameter
optimizer. Subsequently, in order to reconstruct the featured CAD model in an
autoregressive way, the CAD sequence reconstructor applies two transformer
decoders, one with target mask and the other without mask. Finally, for
predicting parameters more precisely, we design a parameter optimizer with
cross-attention mechanism to further refine the CAD feature parameters. We
evaluate P2CADNet on the public dataset, and the experimental results show that
P2CADNet has excellent reconstruction quality and accuracy. To our best
knowledge, P2CADNet is the first end-to-end network to reconstruct featured CAD
model from point cloud, and can be regarded as baseline for future works.
Therefore, we open the source code at https://github.com/Blice0415/P2CADNet.
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