Color Attribute Compression for Block Based Representation of Point Cloud

H. Kimata
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Abstract

Compression of point cloud obtained by sensing real-world objects with LiDAR or RGBD sensors has been studied. Block-based geometry compression methods using deep learning have been presented, however, less studies have been reported on compression of attribute information such as colors. In this paper, an efficient encoding of color attribute information is proposed for block-based geometry compression, which has an advantage that parts of point cloud are processed in parallel. The proposed method encodes color information as an image projected onto a surface, block by block, in order to achieve better subjective quality of the rendered image. A deep learning-based image compression method for the projected image is also studied. The overall efficiency is discussed in this paper.
基于块的点云表示的颜色属性压缩
利用激光雷达或RGBD传感器对真实物体进行传感得到的点云进行了压缩研究。使用深度学习的基于块的几何压缩方法已经被提出,然而,关于属性信息(如颜色)压缩的研究报道较少。针对基于分块的几何压缩,提出了一种有效的颜色属性信息编码方法,该方法的优点是可以对部分点云进行并行处理。该方法将颜色信息编码为投影到表面上的图像,逐块进行编码,以获得更好的渲染图像的主观质量。研究了一种基于深度学习的投影图像压缩方法。本文对整体效率进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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