论文标题

SK-NET:通过端到端发现空间关键点对点云进行深度学习

SK-Net: Deep Learning on Point Cloud via End-to-end Discovery of Spatial Keypoints

论文作者

Wu, Weikun, Zhang, Yan, Wang, David, Lei, Yunqi

论文摘要

由于提出了点网,因此对点云的深度学习一直是3D研究的集中度。但是,现有的基于点的方法通常不足以提取局部特征和点云的空间模式,以进一步理解。本文介绍了一个端到端框架SK-NET,以通过学习特定点云任务的点云的特征表示,共同优化空间关键点的推断。 SK-NET的一个关键过程是生成空间关键点(Skeypoints)。它是由两个提议的调节损失和一个任务目标函数共同进行的,而没有知道Skeypoint位置注释和建议。具体而言,我们的气孔对位置一致性不敏感,而是敏锐地意识到形状。 SK-NET的另一个关键过程是提取Skeypoint的局部结构(详细功能)和归一化skeypoints(模式特征)的局部空间模式。该过程生成了全面的表示形式(PD)功能,其中包括点云的局部详细信息,并通过归一化Skeypoints的区域重建揭示其空间模式。因此,提示我们的网络有效地了解点云的不同区域之间的相关性,并集成点云的上下文信息。在诸如分类和分割之类的Point Cloud任务中,我们所提出的方法的性能优于或与最新方法相媲美。我们还提出了一项消融研究,以证明SK-NET的优势。

Since the PointNet was proposed, deep learning on point cloud has been the concentration of intense 3D research. However, existing point-based methods usually are not adequate to extract the local features and the spatial pattern of a point cloud for further shape understanding. This paper presents an end-to-end framework, SK-Net, to jointly optimize the inference of spatial keypoint with the learning of feature representation of a point cloud for a specific point cloud task. One key process of SK-Net is the generation of spatial keypoints (Skeypoints). It is jointly conducted by two proposed regulating losses and a task objective function without knowledge of Skeypoint location annotations and proposals. Specifically, our Skeypoints are not sensitive to the location consistency but are acutely aware of shape. Another key process of SK-Net is the extraction of the local structure of Skeypoints (detail feature) and the local spatial pattern of normalized Skeypoints (pattern feature). This process generates a comprehensive representation, pattern-detail (PD) feature, which comprises the local detail information of a point cloud and reveals its spatial pattern through the part district reconstruction on normalized Skeypoints. Consequently, our network is prompted to effectively understand the correlation between different regions of a point cloud and integrate contextual information of the point cloud. In point cloud tasks, such as classification and segmentation, our proposed method performs better than or comparable with the state-of-the-art approaches. We also present an ablation study to demonstrate the advantages of SK-Net.

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