Point cloud compression plays a crucial role in reducing the huge cost of data storage and transmission. However, distortions can be introduced into the decompressed point clouds due to quantization. In this paper, we propose a novel learning-based post-processing method to enhance the decompressed point clouds. Specifically, a voxelized point cloud is first divided into small cubes. Then, a 3D convolutional network is proposed to predict the occupancy probability for each location of a cube. We leverage both local and global contexts by generating multi-scale probabilities. These probabilities are progressively summed to predict the results in a coarse-to-fine manner. Finally, we obtain the geometry-refined point clouds based on the predicted probabilities. Different from previous methods, we deal with decompressed point clouds with huge variety of distortions using a single model. Experimental results show that the proposed method can significantly improve the quality of the decompressed point clouds, achieving 9.30dB BDPSNR gain on three representative datasets on average.
翻译:点云压缩在降低数据存储和传输的巨额成本方面起着关键作用。 但是,由于量化,可以将扭曲引入降压点云中。 在本文中,我们提出一种新的基于学习的后处理方法,以强化降压点云。 具体地说, 氧化点云首先分为小立方体。 然后, 提出一个 3D 革命网络, 以预测立方体每个位置的占用概率。 我们通过生成多尺度概率来利用当地和全球环境。 这些概率被逐步归并, 以粗到软的方式预测结果。 最后, 我们获得了基于预测概率的几何性精炼点云。 不同于以往的方法, 我们用一个单一模型处理大量扭曲的脱压点云。 实验结果显示, 拟议的方法可以大幅提高降压点云的质量, 平均在3个具有代表性的数据集上获得930dBDPSNR的收益 。