PCUNet: A Context-Aware Deep Network for Coarse-to-Fine Point Cloud Completion
Zhao, Meihua1,2; Xiong, Gang3,4; Zhou, MengChu5; Shen, Zhen1,6; Liu, Sheng1; Han, Yunjun1; Wang, Fei-Yue1
发表期刊IEEE Sensors Journal
2022
卷号22期号:15页码:15098-15110
摘要

Point cloud completion aims at predicting a complete 3D shape from an incomplete input. It has important applications in the fields of intelligent manufacturing, augmented reality, virtual reality, self-driving cars, and intelligent robotics. Although deep learning-based point cloud completion
technology has developed rapidly in recent years, there are still unsolved problems. Previous approaches predict each point independently and ignore contextual information. And, they usually predict a complete 3D shape based on a global feature vector extracted from an incomplete input, which leads to missing of some fine-grained details. In this
paper, motivated by the transposed convolution and the "UNet" structure in neural networks for image processing, we propose a context-aware deep network termed as PCUNet for coarse-to-fine point cloud completion. It adopts an encoder-decoder structure, in which the encoder follows the design of the relation-shape convolutional neural network
(RS-CNN), and the decoder consists of fully-connected layers and two stacked decoder modules for predicting complete point clouds. The contributions are twofold. First, we design the decoder module as a coordinate-guided context-aware upsampling module, in which contextual information can be taken into full account by neighbor aggregation. Second, to preserve fine-grained details in the input, we propose attention-enhanced skip connections for effective information propagation from the encoder to the decoder. Experiments are conducted on the widely used PCN and KITTI datasets. The results show that our proposed approach achieves competitive performance compared to the existing state-of-the-art approaches in terms of the Chamfer distance and the computational complexity metrics.

收录类别SCI
语种英语
七大方向——子方向分类三维视觉
国重实验室规划方向分类多尺度信息处理
是否有论文关联数据集需要存交
文献类型期刊论文
条目标识符http://ir.ia.ac.cn/handle/173211/52188
专题多模态人工智能系统全国重点实验室_平行智能技术与系统团队
通讯作者Shen, Zhen
作者单位1.The State Key Laboratory for Management and Control of Complex Systems, Institute of Automation, Chinese Academy of Sciences
2.The School of Artificial Intelligence, University of Chinese Academy of Sciences
3.The Beijing Engineering Research Center of Intelligent Systems and Technology, Institute of Automation, Chinese Academy of Sciences
4.The Guangdong Engineering Research Center of 3D Printing and Intelligent Manufacturing, Cloud Computing Center, Chinese Academy of Sciences
5.The Helen and John C. Hartmann Department of Electrical and Computer Engineering, New Jersey Institute of Technology
6.The Intelligent Manufacturing Center, Qingdao Academy of Intelligent Industries
第一作者单位中国科学院自动化研究所
通讯作者单位中国科学院自动化研究所
推荐引用方式
GB/T 7714
Zhao, Meihua,Xiong, Gang,Zhou, MengChu,et al. PCUNet: A Context-Aware Deep Network for Coarse-to-Fine Point Cloud Completion[J]. IEEE Sensors Journal,2022,22(15):15098-15110.
APA Zhao, Meihua.,Xiong, Gang.,Zhou, MengChu.,Shen, Zhen.,Liu, Sheng.,...&Wang, Fei-Yue.(2022).PCUNet: A Context-Aware Deep Network for Coarse-to-Fine Point Cloud Completion.IEEE Sensors Journal,22(15),15098-15110.
MLA Zhao, Meihua,et al."PCUNet: A Context-Aware Deep Network for Coarse-to-Fine Point Cloud Completion".IEEE Sensors Journal 22.15(2022):15098-15110.
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