Compression of Plenoptic Point Cloud Attributes Using 6-D Point Clouds and 6-D Transforms

IEEE Transactions on Multimedia(2021)

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摘要
In this paper, we introduce a novel 6-D representation of plenoptic point clouds, enabling joint, non-separable transform coding of plenoptic signals defined along both spatial and angular (viewpoint) dimensions. This 6-D representation, which is built in a global coordinate system, can be used in both multi-camera studio capture and video fly-by capture scenarios, with various viewpoint (camera) arrangements and densities. We show that both the Region-Adaptive Hierarchical Transform (RAHT) and the Graph Fourier Transform (GFT) can be extended to the proposed 6-D representation to enable the non-separable transform coding. Our method is applicable to plenoptic data with either dense or sparse sets of viewpoints, and to or plenoptic data, while the stateof-the-art RAHT-KLT method, which is separable in spatial and angular dimensions, is applicable only to plenoptic data. The complete plenoptic data refers to data that has, for each spatial point, one colour for every viewpoint (ignoring any occlusions), while incomplete data has colours only for the visible surface points at each viewpoint. We demonstrate that the proposed 6-D RAHT and 6-D GFT compression methods are able to outperform the state-of-the-art RAHT-KLT method on 3-D objects with various levels of surface specularity, and captured with different camera arrangements and different degrees of viewpoint sparsity.
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关键词
GFT,plenoptic point clouds,point cloud compression,RAHT,separable transforms,surface light fields
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