Cluster-based point cloud attribute compression using inter prediction and graph Fourier transform

Jiaying Liu, Jin Wang, Longhua Sun, Jie Pei, Qing Zhu
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引用次数: 1

Abstract

With the rapid development of 3D capture technologies, point cloud has been widely used in many emerging applications such as augmented reality, autonomous driving, and 3D printing. However, point cloud, used to represent real world objects in these applications, may contain millions of points, which results in huge data volume. Therefore, efficient compression algorithms are essential for point cloud when it comes to storage and real-time transmission issues. Specially, the attribute compression of point cloud is still challenging owing to the sparsity and irregular distribution of corresponding points in 3D space. In this paper, we present a novel point cloud attribute compression scheme based on inter-prediction of blocks and graph Laplacian transforms for attributes residual. Firstly, we divide the entire point cloud into adaptive sub-clouds via K-means based on the geometry to acquire sub-clouds, which enables efficient representation with less cost. Secondly, the sub-clouds are divided into two parts, one is the attribute means of the sub clouds, another is the attribute residual by removing the means. For the attribute means, we use inter-prediction between sub-clouds to remove the attribute redundancy, and the attribute residual is encoded after graph Fourier transforming. Experimental results demonstrate that the proposed scheme is much more efficient than traditional attribute compression schemes.
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基于聚类的点云属性压缩,采用内部预测和图傅里叶变换
随着三维捕获技术的快速发展,点云已广泛应用于增强现实、自动驾驶、3D打印等新兴应用领域。然而,在这些应用程序中用于表示现实世界对象的点云可能包含数百万个点,这导致了巨大的数据量。因此,当涉及到存储和实时传输问题时,高效的压缩算法对点云至关重要。特别是点云的属性压缩由于其对应点在三维空间中的稀疏性和不规则性,仍然是一个具有挑战性的问题。本文提出了一种基于块间预测和属性残差图拉普拉斯变换的点云属性压缩方案。首先,采用基于几何的K-means方法将整个点云划分为自适应子云获取子云,实现了低成本高效表示;其次,将子云分为两部分,一部分是子云的属性均值,另一部分是通过均值去除得到的属性残差。对于属性均值,采用子云间互预测去除属性冗余,对属性残差进行图傅里叶变换后编码。实验结果表明,该算法比传统的属性压缩算法效率更高。
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