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3D POINT CLOUD COMPRESSION SYSTEM BASED ON MULTI-SCALE STRUCTURED DICTIONARY LEARNING

机译:基于多尺度结构化字典学习的三维点云压缩系统

摘要

The present invention provides a 3D point cloud compression system based on multi-scale structured dictionary learning. A point cloud data partition module outputs a voxel set obtained by point cloud partitioning and a voxel block set of different scales; a geometric information encoding module outputs an encoded geometric information bit stream; a geometric information decoding module outputs decoded geometric information; an attribute signal encoding module outputs a sparsely encoded coefficient matrix and a learned multi-scale structured dictionary; an attribute signal encoding module outputs the learned multi-scale structured dictionary; an attribute signal compression module outputs a compressed attribute signal bit stream; an attribute signal decoding module outputs a decoded attribute signal; and a 3D point cloud reconstruction module completes reconstruction. The present invention is applicable to lossless geometric and lossy attribute compression of point cloud signals, and by using a natural layer division structure of the point cloud signal, in a direction of signal scales from being coarse to being fine, the reconstruction quality of high-frequency detail information is improved in a gradient manner, thereby being able to obtain a significant performance gain.
机译:本发明提供了一种基于多尺度结构化字典学习的三维点云压缩系统。点云数据划分模块输出点云划分得到的体素集和不同尺度的体素块集;几何信息编码模块输出经编码的几何信息比特流;几何信息解码模块输出解码后的几何信息;属性信号编码模块输出稀疏编码的系数矩阵和学习的多尺度结构化字典;属性信号编码模块输出学习到的多尺度结构化词典;属性信号压缩模块输出压缩后的属性信号比特流;属性信号解码模块输出解码后的属性信号;三维点云重建模块完成重建。本发明适用于点云信号的无损几何压缩和有损属性压缩,通过使用点云信号的自然分层结构,在信号尺度从粗到细的方向上,以梯度方式改善高频细节信息的重建质量,从而能够获得显著的性能增益。

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