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A point cloud compression framework via spherical projection

机译:通过球面投影点云压缩框架

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In this paper, we propose a sphere-projection-based framework for point cloud geometry and attribute lossless and lossy coding. The original point cloud is adaptively divided into blocks, and then we create a fitting sphere in each block for modeling the local geometry structure of the point cloud. Sphere coordination transform and spherical projection scheme are introduced to transfer a 3D point cloud to a set of the range images. A novel compact representation of generated range images based on Morton codes is proposed to separate the range images into occupancy images and attributes vectors for further compression. Experimental results demonstrate that for the LiDAR point clouds datasets in lossless compression, the proposed method offers better performance than geometry-based point cloud compression (G-PCC). For the object point clouds datasets in lossy compression, the proposed method has better rate-distortion (R-D) performance than Draco.
机译:在本文中,我们提出了一个基于球体投影的框架,用于点云几何和物质无损和有损编码。原始点云自适应地分成块,然后我们在每个块中创建一个拟合球体,用于建模点云的局部几何结构。引入球形协调变换和球面投影方案以将3D点云传输到一组范围图像。提出了一种基于MORTON码的产生范围图像的小巧的紧凑型表示,以将范围图像分离成占用图像和属性向量以进行进一步压缩。实验结果表明,对于LIDAR点云数据集无损压缩,所提出的方法提供比基于几何的点云压缩(G-PCC)更好的性能。对于有损压缩中的对象点云数据集,所提出的方法具有比DRACO更好的速率 - 失真(R-D)性能。

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