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Fast Recolor Prediction Scheme in Point Cloud Attribute Compression

机译:点云属性压缩中快速重新调高预测方案

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Due to the emerging requirement of point cloud applications, efficient point cloud compression methods are in high demand for compact point cloud representation in limited bandwidth transmission. The compression standard GPCC (Geometry-based Point Cloud Compression) is led by the MPEG (Moving Picture Expert Group) in respond to industrial requirements. KNN (K-Nearest Neighbors) search based prediction method is adopted for point cloud attribute compression in current G-PCC, which only exploits Euclidean distance-based geometric relationship without fully consideration of underlying geometric distribution. In this paper, we propose a novel prediction scheme based on fast recolor technique for attribute lossless and near-lossless compression. Our method has been implemented upon G-PCC reference software of the latest version. Experimental results show that our method can take advantage of the correlation between the attributes of neighbors, which leads to better rate-distortion (R-D) performance than G-PCC anchor on point cloud dataset with negligible encode and decode time increase under the common test conditions.
机译:由于点云应用的新出现要求,有效点云压缩方法对紧凑的点云表示有限的有限带宽传输。压缩标准GPCC(基于几何的点云压缩)由MPEG(运动图像专家组)引导,以响应工业要求。基于KNN(K-CORMENT邻居)基于云属性压缩的KNN(K-CORMENT邻居)搜索的预测方法在当前G-PCC中采用点云属性压缩,其仅利用基于欧几里德距离的几何关系,而无需完全考虑底层的几何分布。在本文中,我们提出了一种基于Fast Recolor技术的新型预测方案,用于属性无损和近无损压缩。我们的方法已在最新版本的G-PCC参考软件上实现。实验结果表明,我们的方法可以利用邻居属性之间的相关性,这导致比P点云数据集上的G-PCC锚在Point云数据集上的更好的速率 - 失真(RD)性能,并且在常见的测试条件下可以忽略不计的编码和解码时间增加。

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