Point cloud completion on structured feature map with feedback network
- URL: http://arxiv.org/abs/2202.08583v1
- Date: Thu, 17 Feb 2022 10:59:40 GMT
- Title: Point cloud completion on structured feature map with feedback network
- Authors: Zejia Su, Haibin Huang, Chongyang Ma, Hui Huang, Ruizhen Hu
- Abstract summary: We propose FSNet, a feature structuring module that can adaptively aggregate point-wise features into a 2D structured feature map.
A 2D convolutional neural network is adopted to decode feature maps from FSNet into a coarse and complete point cloud.
A point cloud upsampling network is used to generate dense point cloud from the partial input and the coarse intermediate output.
- Score: 28.710494879042002
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this paper, we tackle the challenging problem of point cloud completion
from the perspective of feature learning. Our key observation is that to
recover the underlying structures as well as surface details given a partial
input, a fundamental component is a good feature representation that can
capture both global structure and local geometric details. Towards this end, we
first propose FSNet, a feature structuring module that can adaptively aggregate
point-wise features into a 2D structured feature map by learning multiple
latent patterns from local regions. We then integrate FSNet into a
coarse-to-fine pipeline for point cloud completion. Specifically, a 2D
convolutional neural network is adopted to decode feature maps from FSNet into
a coarse and complete point cloud. Next, a point cloud upsampling network is
used to generate dense point cloud from the partial input and the coarse
intermediate output. To efficiently exploit the local structures and enhance
the point distribution uniformity, we propose IFNet, a point upsampling module
with self-correction mechanism that can progressively refine details of the
generated dense point cloud. We conduct both qualitative and quantitative
experiments on ShapeNet, MVP, and KITTI datasets, which demonstrate that our
method outperforms state-of-the-art point cloud completion approaches.
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