论文标题

Carnet:减压伪影的减少点云属性

CARNet:Compression Artifact Reduction for Point Cloud Attribute

论文作者

Ding, Dandan, Zhang, Junzhe, Wang, Jianqiang, Ma, Zhan

论文摘要

为基于几何的点云压缩(G-PCC)标准开发了基于学习的自适应环滤波器,以减少属性压缩工件。提出的方法首先生成多个最可探测的样品偏移(MPSO)作为潜在的压缩失真近似值,然后线性权重以减轻伪影。因此,我们尽可能靠近未压缩的PCA驱动过滤后的重建。为此,我们设计了一个由两个连续的处理阶段组成的压缩工件还原网络(Carnet):MPSOS衍生和MPSOS组合。 MPSOS派生使用两个流网络来模拟来自直接空间嵌入和频率依赖性嵌入的局部邻域变化,在这种嵌入中,稀疏的卷积被利用可从细微和不规则分布的点中最佳汇总信息。 MPSOS组合由最小平方误差指标指导,以进一步捕获输入PCAS的内容动力学的加权系数。 Carnet作为GPCC的环内过滤工具实现,其中这些线性加权系数被封装在比特斯流中,比特率忽略不计。实验结果表明,对最新的GPCC的主观和客观性都显着改善。

A learning-based adaptive loop filter is developed for the Geometry-based Point Cloud Compression (G-PCC) standard to reduce attribute compression artifacts. The proposed method first generates multiple Most-Probable Sample Offsets (MPSOs) as potential compression distortion approximations, and then linearly weights them for artifact mitigation. As such, we drive the filtered reconstruction as close to the uncompressed PCA as possible. To this end, we devise a Compression Artifact Reduction Network (CARNet) which consists of two consecutive processing phases: MPSOs derivation and MPSOs combination. The MPSOs derivation uses a two-stream network to model local neighborhood variations from direct spatial embedding and frequency-dependent embedding, where sparse convolutions are utilized to best aggregate information from sparsely and irregularly distributed points. The MPSOs combination is guided by the least square error metric to derive weighting coefficients on the fly to further capture content dynamics of input PCAs. The CARNet is implemented as an in-loop filtering tool of the GPCC, where those linear weighting coefficients are encapsulated into the bitstream with negligible bit rate overhead. Experimental results demonstrate significant improvement over the latest GPCC both subjectively and objectively.

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