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Point Clouds Attribute Compression Using Data-Adaptive Intra prediction

机译:使用数据自适应帧内预测的点云属性压缩

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摘要

In recent years, 3D sensing and capture technologies have made constant progress, leading to point clouds with higher resolution and fidelity. Since most applications demand compact storage and fast transmission, the issue of how to compress point clouds efficiently becomes an intractable problem. While previous GFT-based solutions use the transform tool to decorrelate attributes directly, ignoring the overall attribute's data spatial redundancy, Graph Fourier Transform (GFT) has shown good performance on point cloud attribute compression. So, motivated by coding tools in traditional image and video coding, we propose a block-based data-adaptive intra prediction tool before graph transform processing to further reduce the redundancy. We adopt uniform quantizing and context-based arithmetic coding to get the final bitstream. Experimental results on different datasets demonstrate that our method improves the compression efficiency of other GFT-based schemes and has much better BD-BR performance than the state-of-the-art Region-Adaptive Hierarchical Transform (RAHT) approach on most specified point cloud contents.
机译:近年来,3D传感和捕获技术取得了不断的进步,从而导致具有更高的分辨率和保真度的点云。由于大多数应用程序要求紧凑的存储和快速的传输,因此如何有效地压缩点云成为一个棘手的问题。尽管先前基于GFT的解决方案使用转换工具直接对属性进行解相关,而忽略了整体属性的数据空间冗余,但是图傅立叶变换(GFT)在点云属性压缩方面表现出良好的性能。因此,受传统图像和视频编码中的编码工具的激励,我们提出在图形变换处理之前基于块的数据自适应帧内预测工具,以进一步减少冗余。我们采用统一的量化和基于上下文的算术编码来获得最终的比特流。在不同数据集上的实验结果表明,与大多数指定点云上的最新区域自适应分层变换(RAHT)方法相比,我们的方法提高了其他基于GFT的方案的压缩效率,并具有更好的BD-BR性能。内容。

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