PCGFormer: Lossy Point Cloud Geometry Compression via Local Self-Attention

Gexin Liu, Jianqiang Wang, Dandan Ding, Zhan Ma
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引用次数: 3

Abstract

Although the multiscale sparse tensor using stacked convolutions has attained noticeable gains for lossy compression of point cloud geometry (PCG), its capability suffers because convolutions with fixed receptive field and fixed weights after training cannot aggregate sufficient information collection due to the extremely sparse and unevenly distributed nature of points. To best tackle the sparsity and adaptively exploit inter-point correlations, we apply local self-attention on $k$ nearest neighbors (kNN) that are instantaneously formed for each point, with which attention-based mechanism can effectively characterize and embed spatial information conditioned on the dynamic neighborhood. This kNN self-attention is implemented using the prevalent Transformer architecture and stacked with sparse convolutions to capture neighborhood information in a progres-sively re-sampling framework, referred to as the PCGFormer. Compared with the MPEG standard Geometry-based PCC (G-PCC) using the latest octree codec, the proposed PCGFormer provides more than 90% and 87% BD-rate (Bjøntegaard Delta Rate) reduction in average across three different object point cloud datasets for point-to-point (D1) and point-to-plane (D2) distortion measures. Compared with the state-of-the-art learning-based approach, the PCGFormer achieves 17.39% and 15.75% BD-rate gains on D1 and D2, respectively.
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PCGFormer:基于局部自关注的有损点云几何压缩
尽管使用堆叠卷积的多尺度稀疏张量在点云几何(PCG)的有损压缩方面取得了显著的进步,但由于点的极度稀疏和不均匀分布的性质,训练后具有固定接受域和固定权值的卷积无法聚集足够的信息收集,因此其能力受到影响。为了更好地处理稀疏性和自适应利用点间相关性,我们对每个点瞬间形成的k个最近邻(kNN)应用局部自关注,利用基于关注的机制可以有效地表征和嵌入以动态邻域为条件的空间信息。这种kNN自关注是使用流行的Transformer架构实现的,并与稀疏卷积叠加在一起,以在渐进重采样框架(称为PCGFormer)中捕获邻域信息。与使用最新八叉树编解码器的MPEG标准基于几何的PCC (G-PCC)相比,所提出的PCGFormer在点对点(D1)和点对平面(D2)失真测量中,在三个不同的目标点云数据集上平均降低了90%和87%的BD-rate (bj ~ ntegaard Delta Rate)。与最先进的基于学习的方法相比,PCGFormer在D1和D2上分别实现了17.39%和15.75%的bd速率增益。
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