In this paper, we propose a novel variable rate deep compression architecture that operates on raw 3D point cloud data. The majority of learning-based point cloud compression methods work on a downsampled representation of the data. Moreover, many existing techniques require training multiple networks for different compression rates to generate consolidated point clouds of varying quality. In contrast, our network is capable of explicitly processing point clouds and generating a compressed description at a comprehensive range of bitrates. Furthermore, our approach ensures that there is no loss of information as a result of the voxelization process and the density of the point cloud does not affect the encoder/decoder performance. An extensive experimental evaluation shows that our model obtains state-of-the-art results, it is computationally efficient, and it can work directly with point cloud data thus avoiding an expensive voxelized representation.
翻译:在本文中,我们提出了一个创新的可变率深压缩结构,该结构以原始 3D 点云数据为操作。大多数基于学习的点云压缩方法都对数据进行下取样。此外,许多现有技术需要培训不同压缩率的多个网络,以产生质量不同的合并点云。相比之下,我们的网络能够明确处理点云,以全面的比特率生成压缩描述。此外,我们的方法确保不因氧化过程和点云密度而丢失信息,不会影响编码器/计算器的性能。一个广泛的实验性评估显示,我们的模型获得了最新的结果,它具有计算效率,可以直接与点云数据合作,从而避免昂贵的氧化代言。