3D Point Cloud Denoising Based on Hybrid Attention Mechanism and Score Matching

Ziwei Wang, Wei Sun, Linyang Tian
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Abstract

Due to the limitations of the acquisition equipment, sensors, and the illumination or reflection characteristics of the ground, the acquired point clouds will inevitably be noisy. Noise degrades the quality of point clouds and hinders the subsequent point cloud processing tasks, so the denoising technique becomes a crucial step in point cloud processing. This paper proposes a point cloud denoising algorithm based on a hybrid attention mechanism, which takes into account the complexity of the internal features of point clouds and the randomness of point cloud transformations. Generates channel and spatial attention by parallel maximum pooling and average pooling of point cloud data, trains adaptive attention weights using a multilayer perceptron with shared weights, and serially fuses them, multiplies them with the input features to obtain more robust point cloud features, and connect to the score estimation module using the residuals. By studying and analyzing the mechanism proposed in this paper, it is experimentally demonstrated that the performance of the proposed model under various noise models is vastly improved over the baseline network and outperforms the advanced denoising methods without significantly increasing the network operation cost.
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基于混合注意机制和分数匹配的三维点云去噪
由于采集设备、传感器以及地面光照或反射特性的限制,采集到的点云不可避免地会有噪声。噪声会降低点云的质量,阻碍后续的点云处理任务,因此去噪技术成为点云处理的关键步骤。考虑到点云内部特征的复杂性和点云变换的随机性,提出了一种基于混合注意机制的点云去噪算法。通过点云数据的并行最大池化和平均池化产生通道和空间注意力,使用共享权值的多层感知器训练自适应注意力权值,并对其进行串行融合,与输入特征相乘得到更鲁棒的点云特征,利用残差连接到分数估计模块。通过对本文提出的机制进行研究和分析,实验证明,本文提出的模型在各种噪声模型下的性能都比基线网络有很大的提高,并且在不显著增加网络运行成本的情况下优于先进的去噪方法。
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