Point Cloud Upsampling via Cascaded Refinement Network

Hang Du, Xuejun Yan, Jingjing Wang, Di Xie, Shiliang Pu
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引用次数: 3

Abstract

Point cloud upsampling focuses on generating a dense, uniform and proximity-to-surface point set. Most previous approaches accomplish these objectives by carefully designing a single-stage network, which makes it still challenging to generate a high-fidelity point distribution. Instead, upsampling point cloud in a coarse-to-fine manner is a decent solution. However, existing coarse-to-fine upsampling methods require extra training strategies, which are complicated and time-consuming during the training. In this paper, we propose a simple yet effective cascaded refinement network, consisting of three generation stages that have the same network architecture but achieve different objectives. Specifically, the first two upsampling stages generate the dense but coarse points progressively, while the last refinement stage further adjust the coarse points to a better position. To mitigate the learning conflicts between multiple stages and decrease the difficulty of regressing new points, we encourage each stage to predict the point offsets with respect to the input shape. In this manner, the proposed cascaded refinement network can be easily optimized without extra learning strategies. Moreover, we design a transformer-based feature extraction module to learn the informative global and local shape context. In inference phase, we can dynamically adjust the model efficiency and effectiveness, depending on the available computational resources. Extensive experiments on both synthetic and real-scanned datasets demonstrate that the proposed approach outperforms the existing state-of-the-art methods.
通过级联细化网络的点云上采样
点云上采样的重点是生成密集、均匀和接近表面的点集。大多数先前的方法通过精心设计单级网络来实现这些目标,这使得生成高保真点分布仍然具有挑战性。相反,以一种从粗到细的方式对点云进行上采样是一种不错的解决方案。然而,现有的从粗到精的上采样方法需要额外的训练策略,训练过程复杂且耗时。在本文中,我们提出了一个简单而有效的级联优化网络,由具有相同网络架构但实现不同目标的三个代阶段组成。具体而言,前两个上采样阶段逐步生成密集但粗糙的点,最后一个细化阶段进一步将粗糙点调整到更好的位置。为了减轻多个阶段之间的学习冲突并降低回归新点的难度,我们鼓励每个阶段预测相对于输入形状的点偏移量。通过这种方式,所提出的级联优化网络可以很容易地进行优化,而无需额外的学习策略。此外,我们设计了一个基于变压器的特征提取模块来学习信息丰富的全局和局部形状上下文。在推理阶段,我们可以根据可用的计算资源动态调整模型的效率和有效性。在合成和真实扫描数据集上的大量实验表明,所提出的方法优于现有的最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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