Using deep learning techniques to process 3D objects has achieved many successes. However, few methods focus on the representation of 3D objects, which could be more effective for specific tasks than traditional representations, such as point clouds, voxels, and multi-view images. In this paper, we propose a Sphere Node Graph (SN-Graph) to represent 3D objects. Specifically, we extract a certain number of internal spheres (as nodes) from the signed distance field (SDF), and then establish connections (as edges) among the sphere nodes to construct a graph, which is seamlessly suitable for 3D analysis using graph neural network (GNN). Experiments conducted on the ModelNet40 dataset show that when there are fewer nodes in the graph or the tested objects are rotated arbitrarily, the classification accuracy of SN-Graph is significantly higher than the state-of-the-art methods.
翻译:使用深层学习技术处理 3D 对象取得了许多成功。 但是,很少有方法侧重于 3D 对象的表示方式, 与传统的表示方式相比, 3D 对象的表示方式比点云、 voxels 和多视图图像等传统表示方式更有效。 在本文中, 我们提议用 Sphere 节点图( SN- Graph) 来代表 3D 对象。 具体地说, 我们从签名的距离字段( SDF) 中提取了一定数量的内部域( 作为节点 ), 然后在球节点中建立连接( 作为边缘 ), 以构建一个图形, 以利用图形神经网络( GNNN) 进行 3D 分析。 在模型Net40 数据集上进行的实验显示, 当图形中节点更少或测试对象被任意旋转时, SN- Graph 的分类精确度大大高于 最新方法 。