数据压缩
云计算
未压缩视频
压缩(物理)
压缩比
实时计算
编码(社会科学)
编码(内存)
作者
Hao Liu,Hui Yuan,Qi Liu,Junhui Hou,Ju Liu
出处
期刊:IEEE Transactions on Broadcasting
[Institute of Electrical and Electronics Engineers]
日期:2020-09-01
卷期号:66 (3): 701-717
被引量:13
标识
DOI:10.1109/tbc.2019.2957652
摘要
Point cloud based 3D visual representation is becoming popular due to its ability to exhibit the real world in a more comprehensive and immersive way. However, under a limited network bandwidth, it is very challenging to communicate this kind of media due to its huge data volume. Therefore, the MPEG have launched the standardization for point cloud compression (PCC), and proposed three model categories, i.e., TMC1, TMC2, and TMC3. Because the 3D geometry compression methods of TMC1 and TMC3 are similar, TMC1 and TMC3 are further merged into a new platform namely TMC13. In this paper, we first introduce some basic technologies that are usually used in 3D point cloud compression, then review the encoder architectures of these test models in detail, and finally analyze their rate distortion performance as well as complexity quantitatively for different cases (i.e., lossless geometry and lossless color, lossless geometry and lossy color, lossy geometry and lossy color) by using 16 benchmark 3D point clouds that are recommended by MPEG. Experimental results demonstrate that the coding efficiency of TMC2 is the best on average (especially for lossy geometry and lossy color compression) for dense point clouds while TMC13 achieves the optimal coding performance for sparse and noisy point clouds with lower time complexity.
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