基于折叠网的多描述点云几何压缩

Xiaoqi Ma, Qian Yin, Xinfeng Zhang, Lv Tang
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引用次数: 2

摘要

传统的点云压缩(PCC)方法在极低比特率的情况下由于量化的均匀性而不有效。基于学习的PCC方法虽然可以获得较好的压缩性能,但需要针对不同的比特率训练多个模型,这大大增加了训练复杂度和存储空间。为了解决这些问题,本文提出了一种新的基于foldingnet的点云几何压缩(FN-PCGC)框架。首先,通过多描述生成(Multiple-Description Generation, MDG)模块将点云划分为多个描述;然后引入基于点的多尺度特征提取(MFE)自编码器对所有描述进行压缩。实验结果表明,该方法优于MPEG - pcc和Draco,平均增益约为30% ~ 80%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Foldingnet-Based Geometry Compression of Point Cloud with Multi Descriptions
Traditional point cloud compression (PCC) methods are not effective at extremely low bit rate scenarios because of the uniform quantization. Although learning-based PCC approaches can achieve superior compression performance, they need to train multiple models for different bit rate, which greatly increases the training complexity and memory storage. To tackle these challenges, a novel FoldingNet-based Point Cloud Geometry Compression (FN-PCGC) framework is proposed in this paper. Firstly, the point cloud is divided into several descriptions by a Multiple-Description Generation (MDG) module. Then a point-based Auto-Encoder with the Multi-scale Feature Extraction (MFE) is introduced to compress all the descriptions. Experimental results show that the proposed method outperforms the MPEG G-PCC and Draco with about 30% ~ 80% gain on average.
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