Point Cloud Sampling and Recovery (PCSR) is critical for massive real-time point cloud collection and processing since raw data usually requires large storage and computation. In this paper, we address a fundamental problem in PCSR: How to downsample the dense point cloud with arbitrary scales while preserving the local topology of discarding points in a case-agnostic manner (i.e. without additional storage for point relationship)? We propose a novel Locally Invertible Embedding for point cloud adaptive sampling and recovery (PointLIE). Instead of learning to predict the underlying geometry details in a seemingly plausible manner, PointLIE unifies point cloud sampling and upsampling to one single framework through bi-directional learning. Specifically, PointLIE recursively samples and adjusts neighboring points on each scale. Then it encodes the neighboring offsets of sampled points to a latent space and thus decouples the sampled points and the corresponding local geometric relationship. Once the latent space is determined and that the deep model is optimized, the recovery process could be conducted by passing the recover-pleasing sampled points and a randomly-drawn embedding to the same network through an invertible operation. Such a scheme could guarantee the fidelity of dense point recovery from sampled points. Extensive experiments demonstrate that the proposed PointLIE outperforms state-of-the-arts both quantitatively and qualitatively. Our code is released through https://github.com/zwb0/PointLIE.
翻译:云层取样和回收( PCSR) 对大规模实时点云的收集和处理至关重要, 因为原始数据通常需要大量存储和计算。 在本文中, 我们解决了PCSR中的一个根本问题: 如何以任意的尺度将稠密点云降为任意的云层, 同时保留当地丢弃点的地形学( 即不为点关系增加存储 )? 我们建议为点云适应采样和回收( PointLIE ) 建立一个全新的本地可忽略的嵌入式 。 不学习以看似合理的方式预测基本几何细节, 点LIE 将点采样统一化, 并通过双向学习将点云采样和复制到一个单一的框架。 具体地说, 点LIEE 递归样本样本样本样本样本样本的样本样本样本和精度实验将样本的相邻偏移到潜移的空间, 从而将抽样点与相应的区域测量关系分解。 一旦确定了潜在空间, 深层模型得到优化后, 恢复过程可以通过回收点的深度模型进行。