论文标题
几何数据及以后的图形信号处理:理论和应用
Graph Signal Processing for Geometric Data and Beyond: Theory and Applications
论文作者
论文摘要
从实际场景中获取的几何数据,例如2D深度图像,3D点云和4D动态点云,已经发现了广泛的应用,包括沉浸式远程伸展,自主驾驶,监视等。社区 - 启用存在于不规则域上的处理信号,并在从低级处理到高级分析的几何数据应用中起着至关重要的作用。为了进一步推进该领域的研究,我们通过在各种几何数据模态中桥接几何数据和图形之间的连接,以统一的方式提供了GSP方法的第一个及时,全面的概述,并提供了光谱/节点/节点图滤波技术。我们还讨论了最近开发的图形神经网络(GNN),并从GSP的角度解释了这些网络的操作。我们简要讨论了开放问题和挑战。
Geometric data acquired from real-world scenes, e.g., 2D depth images, 3D point clouds, and 4D dynamic point clouds, have found a wide range of applications including immersive telepresence, autonomous driving, surveillance, etc. Due to irregular sampling patterns of most geometric data, traditional image/video processing methodologies are limited, while Graph Signal Processing (GSP) -- a fast-developing field in the signal processing community -- enables processing signals that reside on irregular domains and plays a critical role in numerous applications of geometric data from low-level processing to high-level analysis. To further advance the research in this field, we provide the first timely and comprehensive overview of GSP methodologies for geometric data in a unified manner by bridging the connections between geometric data and graphs, among the various geometric data modalities, and with spectral/nodal graph filtering techniques. We also discuss the recently developed Graph Neural Networks (GNNs) and interpret the operation of these networks from the perspective of GSP. We conclude with a brief discussion of open problems and challenges.