Attribute Compression of 3D Point Clouds Using Laplacian Sparsity Optimized Graph Transform

October 10, 2017 ยท Declared Dead ยท ๐Ÿ› Visual Communications and Image Processing

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Authors Yiting Shao, Zhaobin Zhang, Zhu Li, Kui Fan, Ge Li arXiv ID 1710.03532 Category cs.MM: Multimedia Citations 58 Venue Visual Communications and Image Processing Last Checked 1 month ago
Abstract
3D sensing and content capture have made significant progress in recent years and the MPEG standardization organization is launching a new project on immersive media with point cloud compression (PCC) as one key corner stone. In this work, we introduce a new binary tree based point cloud content partition and explore the graph signal processing tools, especially the graph transform with optimized Laplacian sparsity, to achieve better energy compaction and compression efficiency. The resulting rate-distortion operating points are convex-hull optimized over the existing Lagrangian solutions. Simulation results with the latest high quality point cloud content captured from the MPEG PCC demonstrated the transform efficiency and rate-distortion (R-D) optimal potential of the proposed solutions.
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