PU-DZMS:基于密集变焦编码器和多尺度互补回归的点云上采样。

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY
Shucong Li, Zhenyu Liu, Tianlei Wang, Zhiheng Zhou
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引用次数: 0

摘要

点云成像技术通常面临点云稀疏的问题,这导致缺乏重要的几何细节。有许多点云上采样网络被设计用来解决这个问题。然而,现有的方法在局部-全局关系的理解上存在局限性,导致轮廓失真和许多局部稀疏区域。为此,提出了由两部分组成的PU-DZMS。(1)稠密变焦编码器(Dense Zoom Encoder, DENZE)是利用具有密集连接的缩放块(Zoom Blocks)来捕获局部-全局特征。ZOOM模块的主要模块是ZOOM Encoder,它在上下采样过程中嵌入了一个Transformer机制,以增强局部全局的几何特征。点云的几何边缘在DENZE下会很清晰。(2)设计多尺度互补回归(Multi-Scale Complementary Regression, MSCR)模块,扩展特征并回归密集点云。MSCR获取特征在不同尺度上的几何分布差异,保证几何连续性,并采用跨尺度残差学习回归新点。MSCR模块对点云的局部稀疏区域进行了化简。在PU-GAN数据集和PU-Net数据集上的实验结果表明,该方法在点云上采样任务上表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PU-DZMS: Point Cloud Upsampling via Dense Zoom Encoder and Multi-Scale Complementary Regression.

Point cloud imaging technology usually faces the problem of point cloud sparsity, which leads to a lack of important geometric detail. There are many point cloud upsampling networks that have been designed to solve this problem. However, the existing methods have limitations in local-global relation understanding, leading to contour distortion and many local sparse regions. To this end, PU-DZMS is proposed with two components. (1) the Dense Zoom Encoder (DENZE) is designed to capture local-global features by using ZOOM Blocks with a dense connection. The main module in the ZOOM Block is the Zoom Encoder, which embeds a Transformer mechanism into the down-upsampling process to enhance local-global geometric features. The geometric edge of the point cloud would be clear under the DENZE. (2) The Multi-Scale Complementary Regression (MSCR) module is designed to expand the features and regress a dense point cloud. MSCR obtains the features' geometric distribution differences across scales to ensure geometric continuity, and it regresses new points by adopting cross-scale residual learning. The local sparse regions of the point cloud would be reduced by the MSCR module. The experimental results on the PU-GAN dataset and the PU-Net dataset show that the proposed method performs well on point cloud upsampling tasks.

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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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