CSDN: Cross-modal Shape-transfer Dual-refinement Network for Point Cloud
Completion
- URL: http://arxiv.org/abs/2208.00751v1
- Date: Mon, 1 Aug 2022 11:20:56 GMT
- Title: CSDN: Cross-modal Shape-transfer Dual-refinement Network for Point Cloud
Completion
- Authors: Zhe Zhu, Liangliang Nan, Haoran Xie, Honghua Chen, Mingqiang Wei, Jun
Wang, Jing Qin
- Abstract summary: We propose a cross-modal shape-transfer dual-refinement network (termed CSDN) for point cloud completion.
The first module transfers the intrinsic shape characteristics from single images to guide the geometry generation of missing regions.
The second module refines the coarse output by adjusting the positions of the generated points.
- Score: 28.012936521291834
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: How will you repair a physical object with some missings? You may imagine its
original shape from previously captured images, recover its overall (global)
but coarse shape first, and then refine its local details. We are motivated to
imitate the physical repair procedure to address point cloud completion. To
this end, we propose a cross-modal shape-transfer dual-refinement network
(termed CSDN), a coarse-to-fine paradigm with images of full-cycle
participation, for quality point cloud completion. CSDN mainly consists of
"shape fusion" and "dual-refinement" modules to tackle the cross-modal
challenge. The first module transfers the intrinsic shape characteristics from
single images to guide the geometry generation of the missing regions of point
clouds, in which we propose IPAdaIN to embed the global features of both the
image and the partial point cloud into completion. The second module refines
the coarse output by adjusting the positions of the generated points, where the
local refinement unit exploits the geometric relation between the novel and the
input points by graph convolution, and the global constraint unit utilizes the
input image to fine-tune the generated offset. Different from most existing
approaches, CSDN not only explores the complementary information from images
but also effectively exploits cross-modal data in the whole coarse-to-fine
completion procedure. Experimental results indicate that CSDN performs
favorably against ten competitors on the cross-modal benchmark.
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