We propose a new paradigm for encoding the geometry of point cloud sequences, where the convolutional neural network (CNN) which estimates the encoding distributions is optimized on several frames of the sequence to be compressed. We adopt lightweight CNN structures, we perform training as part of the encoding process, and the CNN parameters are transmitted as part of the bitstream. The newly proposed encoding scheme operates on the octree representation for each point cloud, encoding consecutively each octree resolution layer. At every octree resolution layer, the voxel grid is traversed section-by-section (each section being perpendicular to a selected coordinate axis) and in each section the occupancies of groups of two-by-two voxels are encoded at once, in a single arithmetic coding operation. A context for the conditional encoding distribution is defined for each two-by-two group of voxels, based on the information available about the occupancy of neighbor voxels in the current and lower resolution layers of the octree. The CNN estimates the probability distributions of occupancy patterns of all voxel groups from one section in four phases. In each new phase the contexts are updated with the occupancies encoded in the previous phase, and each phase estimates the probabilities in parallel, providing a reasonable trade-off between the parallelism of processing and the informativeness of the contexts. The CNN training time is comparable to the time spent in the remaining encoding steps, leading to competitive overall encoding times. Bitrates and encoding-decoding times compare favorably with those of recently published compression schemes.
翻译:我们提出一个新的模式,用于将点云序列的几何编码, 即估计编码分布的卷发神经网络( CNN) 将优化在要压缩的顺序的若干框架上。 我们采用轻量的CNN结构, 将培训作为编码过程的一部分进行, 并传输CNN参数作为位流的一部分。 新提议的编码方案对每个点云的octree表示方式运作, 连续对每个octree解析层进行编码。 在每奥克特里解析层, voxel 网是逐节穿行的( 每个部分都与选定的协调轴相依赖), 在每一节中, 两对二对二对二的 voxel 组合的分布是一次性编码的, 并且作为单项计算编码过程的一部分 。 新提议的编码分配环境是每两对二对二的卷的表示方式, 根据当前和较低解析层的邻居的占用率信息, voxel 网格是逐节( 每个部分都与选定一个选定的坐标轴轴轴轴轴相对), 每节中的每一段的占用时间段的计算时间结构, 提供前一个平行交易阶段的计算过程的计算。