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arxiv: 1812.06254 · v1 · pith:JF6SU6YTnew · submitted 2018-12-15 · 💻 cs.CG · cs.LG

3DTI-Net: Learn Inner Transform Invariant 3D Geometry Features using Dynamic GCN

classification 💻 cs.CG cs.LG
keywords learningpointclassificationcloudtransformachieveconvolutioncoordinate
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Deep learning on point clouds has made a lot of progress recently. Many point cloud dedicated deep learning frameworks, such as PointNet and PointNet++, have shown advantages in accuracy and speed comparing to those using traditional 3D convolution algorithms. However, nearly all of these methods face a challenge, since the coordinates of the point cloud are decided by the coordinate system, they cannot handle the problem of 3D transform invariance properly. In this paper, we propose a general framework for point cloud learning. We achieve transform invariance by learning inner 3D geometry feature based on local graph representation, and propose a feature extraction network based on graph convolution network. Through experiments on classification and segmentation tasks, our method achieves state-of-the-art performance in rotated 3D object classification, and achieve competitive performance with the state-of-the-art in classification and segmentation tasks with fixed coordinate value.

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