Robust Feature Graph for Point Cloud Denoising

Xin Shang, R. Ye, Hui-Na Feng, Xueqin Jiang
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Abstract

Point cloud is an important and commonly used signal representation for volume objects or scenes in the real world. Due to the imperfect acquisition of the point cloud, there is nonnegligible noise in the point cloud. Most literatures that use graph signal processing (GSP) for point cloud denoising (PCD) generally construct k-NN graph to represent the point cloud. However, the graph constructed based on this scheme can not compactly represent the underlying structure of a noisy point cloud. In this paper, we propose a feature graph that can effectively and naturally represent the structure of the point cloud. To construct the feature graph, a feature sampling method is exploited to obtain the feature points. Then, patches are built based on the feature points. After that, the feature graph is constructed by connecting all the points in the patches. Finally, we apply the feature graph to the PCD problem and exploit graph Laplacian regularization (GLR) as smoothing prior information for denoising. Experimental results show that our proposed PCD method not only outperforms the existing PCD methods in objective evaluation metrics, but also performs better in processing the inner and edge structure of the point cloud.
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基于鲁棒特征图的点云去噪
点云是现实世界中体积物体或场景的重要且常用的信号表示。由于点云的采集不完善,点云中存在不可忽略的噪声。大多数使用图信号处理(GSP)进行点云去噪(PCD)的文献一般都是构造k-NN图来表示点云。然而,基于该格式构建的图不能紧凑地表示噪声点云的底层结构。本文提出了一种能够有效、自然地表示点云结构的特征图。在构造特征图时,利用特征采样方法获取特征点。然后,根据特征点构建补丁。然后,通过连接补丁中的所有点来构建特征图。最后,我们将特征图应用于PCD问题,并利用图拉普拉斯正则化(GLR)作为平滑先验信息进行去噪。实验结果表明,我们提出的PCD方法不仅在客观评价指标上优于现有的PCD方法,而且在处理点云的内部和边缘结构方面也有更好的表现。
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