3D Point cloud registration is still a very challenging topic due to the difficulty in finding the rigid transformation between two point clouds with partial correspondences, and it's even harder in the absence of any initial estimation information. In this paper, we present an end-to-end deep-learning based approach to resolve the point cloud registration problem. Firstly, the revised LPD-Net is introduced to extract features and aggregate them with the graph network. Secondly, the self-attention mechanism is utilized to enhance the structure information in the point cloud and the cross-attention mechanism is designed to enhance the corresponding information between the two input point clouds. Based on which, the virtual corresponding points can be generated by a soft pointer based method, and finally, the point cloud registration problem can be solved by implementing the SVD method. Comparison results in ModelNet40 dataset validate that the proposed approach reaches the state-of-the-art in point cloud registration tasks and experiment resutls in KITTI dataset validate the effectiveness of the proposed approach in real applications.
翻译:3D点云登记仍是一个极具挑战性的专题,因为很难找到两个点云与部分对应的两点云之间的僵硬转变,而且由于缺乏任何初步估算信息,这种转变就更难了。 在本文中,我们提出了一个基于端到端深学习的解决点云登记问题的方法。首先,引入了经修订的LPD-Net来提取特征并将其与图形网络聚合。第二,自留机制用来加强点云中的结构信息,而交叉注意机制的目的是加强两个输入点云之间的相应信息。在此基础上,虚拟对应点可以通过基于软点的方法生成,最后,点云登记问题可以通过实施SVD方法来解决。模型Net40数据集的比较结果证实,拟议的方法达到了点云登记任务的最新水平,KITTI数据集的实验性转基因验证了拟议方法在实际应用中的有效性。