Survey on Deep Learning-Based Point Cloud Compression

IF 1.3 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Maurice Quach, Jiahao Pang, Dong Tian, G. Valenzise, F. Dufaux
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引用次数: 17

Abstract

Point clouds are becoming essential in key applications with advances in capture technologies leading to large volumes of data. Compression is thus essential for storage and transmission. In this work, the state of the art for geometry and attribute compression methods with a focus on deep learning based approaches is reviewed. The challenges faced when compressing geometry and attributes are considered, with an analysis of the current approaches to address them, their limitations and the relations between deep learning and traditional ones. Current open questions in point cloud compression, existing solutions and perspectives are identified and discussed. Finally, the link between existing point cloud compression research and research problems to relevant areas of adjacent fields, such as rendering in computer graphics, mesh compression and point cloud quality assessment, is highlighted.
基于深度学习的点云压缩研究进展
随着捕获技术的进步,导致大量数据的产生,点云在关键应用中变得至关重要。因此,压缩对于存储和传输是必不可少的。在这项工作中,回顾了几何和属性压缩方法的最新进展,重点是基于深度学习的方法。考虑了压缩几何和属性时面临的挑战,分析了当前解决这些问题的方法、它们的局限性以及深度学习与传统方法之间的关系。当前开放的问题在点云压缩,现有的解决方案和观点进行了识别和讨论。最后,强调了现有的点云压缩研究与计算机图形学中的渲染、网格压缩和点云质量评估等相关领域的研究问题之间的联系。
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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