Deep Learning-Based Point Cloud Compression: An In-Depth Survey and Benchmark

IF 18.6
Wei Gao;Liang Xie;Songlin Fan;Ge Li;Shan Liu;Wen Gao
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Abstract

With the maturity of 3D capture technology, the explosive growth of point cloud data has burdened the storage and transmission process. Traditional hybrid point cloud compression (PCC) tools relying on handcrafted priors have limited compression performance and are increasingly weak in addressing the burden induced by data growth. Recently, deep learning-based PCC methods have been introduced to continue to push the PCC performance boundary. With the thriving of deep PCC, the community urgently demands a systematic overview to conclude the past progress and present future research directions. In this paper, we have a detailed review that covers popular point cloud datasets, algorithm evolution, benchmarking analysis, and future trends. Concretely, we first introduce several widely-used PCC datasets according to their major properties. Then the algorithm evolution of existing studies on deep PCC, including lossy ones and lossless ones proposed for various point cloud types, is reviewed. Apart from academic studies, we also investigate the development of relevant international standards (i.e., MPEG standards and JPEG standards). To help have an in-depth understanding of the advance of deep PCC, we select a representative set of methods and conduct extensive experiments on multiple datasets. Comprehensive benchmarking comparisons and analysis reveal the pros and cons of previous methods. Finally, based on the profound analysis, we highlight the challenges and future trends of deep learning-based PCC, paving the way for further study.
基于深度学习的点云压缩:深入调查和基准
随着三维捕获技术的成熟,点云数据的爆炸式增长给存储和传输过程带来了负担。传统的基于手工先验的混合点云压缩(PCC)工具压缩性能有限,在解决数据增长带来的负担方面越来越弱。最近,基于深度学习的PCC方法被引入,以继续推动PCC性能的边界。随着深度PCC的蓬勃发展,学界迫切需要对过去的研究进展和未来的研究方向进行系统的综述。在本文中,我们详细回顾了流行的点云数据集,算法进化,基准分析和未来趋势。具体而言,我们首先根据其主要特性介绍了几种广泛使用的PCC数据集。然后回顾了现有的深度PCC算法的发展,包括针对各种点云类型提出的有损算法和无损算法。除了学术研究外,我们还研究了相关国际标准(即MPEG标准和JPEG标准)的发展。为了帮助深入了解深度PCC的进展,我们选择了一组具有代表性的方法,并在多个数据集上进行了广泛的实验。全面的基准比较和分析揭示了以前方法的优缺点。最后,在深入分析的基础上,我们强调了基于深度学习的PCC的挑战和未来趋势,为进一步的研究铺平了道路。
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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