论文标题
laplacian2mesh:基于拉普拉斯的网眼理解
Laplacian2Mesh: Laplacian-Based Mesh Understanding
论文作者
论文摘要
几何深度学习激发了对计算机图形的兴趣,以执行形状理解任务,例如形状分类和语义分割。当输入是多边形的表面时,必须患有不规则的网格结构。在几何光谱理论的启发下,我们引入了Laplacian2mesh,这是一种新颖而灵活的卷积神经网络(CNN)框架,用于应对不规则的三角形网格(顶点可能具有任何价值)。通过将输入网格表面映射到多维Laplacian-Beltrami空间,Laplacian2mesh使一个人可以使用成熟的CNN直接执行形状分析任务,而无需处理网格结构的不规则连接性。我们进一步定义了网格池操作,以便可以在保留原始顶点集以及它们之间的连接时扩展网络的接收场。此外,我们还引入了一个通过渠道的自我发场障碍,以了解特征成分的个人重要性。 laplacian2mesh不仅将几何形状与网格结构的不规则连通性相抵消,而且更好地捕获了形状分类和分割至关重要的全局特征。对各种数据集进行的广泛测试证明了Laplacian2mesh的有效性和效率,特别是在容易受到噪音完成各种学习任务的能力方面。
Geometric deep learning has sparked a rising interest in computer graphics to perform shape understanding tasks, such as shape classification and semantic segmentation. When the input is a polygonal surface, one has to suffer from the irregular mesh structure. Motivated by the geometric spectral theory, we introduce Laplacian2Mesh, a novel and flexible convolutional neural network (CNN) framework for coping with irregular triangle meshes (vertices may have any valence). By mapping the input mesh surface to the multi-dimensional Laplacian-Beltrami space, Laplacian2Mesh enables one to perform shape analysis tasks directly using the mature CNNs, without the need to deal with the irregular connectivity of the mesh structure. We further define a mesh pooling operation such that the receptive field of the network can be expanded while retaining the original vertex set as well as the connections between them. Besides, we introduce a channel-wise self-attention block to learn the individual importance of feature ingredients. Laplacian2Mesh not only decouples the geometry from the irregular connectivity of the mesh structure but also better captures the global features that are central to shape classification and segmentation. Extensive tests on various datasets demonstrate the effectiveness and efficiency of Laplacian2Mesh, particularly in terms of the capability of being vulnerable to noise to fulfill various learning tasks.