Graph-PBN: Graph-based parallel branch network for efficient point cloud learning

IF 2.5 4区 计算机科学 Q2 COMPUTER SCIENCE, SOFTWARE ENGINEERING Graphical Models Pub Date : 2022-01-01 DOI:10.1016/j.gmod.2021.101120
Cheng Zhang, Hao Chen, Haocheng Wan, Ping Yang, Zizhao Wu
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引用次数: 5

Abstract

In recent years, approaches based on graph convolutional networks (GCNs) have achieved state-of-the-art performance in point cloud learning. The typical pipeline of GCNs is modeled as a two-stage learning process: graph construction and feature learning. We argue that such process exhibits low efficiency because a high percentage of the total time is consumed during the graph construction process when a large amount of sparse data are required to be accessed rather than on actual feature learning. To alleviate this problem, we propose a graph-based parallel branch network (Graph-PBN) that introduces a parallel branch structure to point cloud learning in this study. In particular, Graph-PBN is composed of two branches: the PointNet branch and the GCN branch. PointNet exhibits advantages in memory access and computational cost, while GCN behaves better in local context modeling. The two branches are combined in our architecture to utilize the potential of PointNet and GCN fully, facilitating the achievement of efficient and accurate recognition results. To better aggregate the features of each node in GCN, we investigate a novel operator, called EAGConv, to augment their local context by fully utilizing geometric and semantic features in a local graph. We conduct experiments on several benchmark datasets, and experiment results validate the significant performance of our method compared with other state-of-the-art approaches. Our code will be made publicly available at https://github.com/zhangcheng828/Graph-PBN.

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图- pbn:高效点云学习的基于图的并行分支网络
近年来,基于图卷积网络(GCNs)的方法在点云学习中取得了最先进的性能。典型的GCNs管道被建模为一个两阶段的学习过程:图构建和特征学习。我们认为这样的过程效率很低,因为在需要访问大量稀疏数据的图构建过程中消耗的总时间比例很高,而不是实际的特征学习。为了缓解这一问题,我们提出了一种基于图的并行分支网络(Graph-PBN),将并行分支结构引入到点云学习中。特别是,Graph-PBN由两个分支组成:PointNet分支和GCN分支。PointNet在内存访问和计算成本方面具有优势,而GCN在局部上下文建模方面表现更好。这两个分支在我们的架构中结合起来,充分利用了PointNet和GCN的潜力,便于实现高效准确的识别结果。为了更好地聚合GCN中每个节点的特征,我们研究了一种新的算子,称为EAGConv,通过充分利用局部图中的几何和语义特征来增强它们的局部上下文。我们在几个基准数据集上进行了实验,实验结果验证了我们的方法与其他最先进的方法相比的显着性能。我们的代码将在https://github.com/zhangcheng828/Graph-PBN上公开提供。
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来源期刊
Graphical Models
Graphical Models 工程技术-计算机:软件工程
CiteScore
3.60
自引率
5.90%
发文量
15
审稿时长
47 days
期刊介绍: Graphical Models is recognized internationally as a highly rated, top tier journal and is focused on the creation, geometric processing, animation, and visualization of graphical models and on their applications in engineering, science, culture, and entertainment. GMOD provides its readers with thoroughly reviewed and carefully selected papers that disseminate exciting innovations, that teach rigorous theoretical foundations, that propose robust and efficient solutions, or that describe ambitious systems or applications in a variety of topics. We invite papers in five categories: research (contributions of novel theoretical or practical approaches or solutions), survey (opinionated views of the state-of-the-art and challenges in a specific topic), system (the architecture and implementation details of an innovative architecture for a complete system that supports model/animation design, acquisition, analysis, visualization?), application (description of a novel application of know techniques and evaluation of its impact), or lecture (an elegant and inspiring perspective on previously published results that clarifies them and teaches them in a new way). GMOD offers its authors an accelerated review, feedback from experts in the field, immediate online publication of accepted papers, no restriction on color and length (when justified by the content) in the online version, and a broad promotion of published papers. A prestigious group of editors selected from among the premier international researchers in their fields oversees the review process.
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