Generating a set of high-quality correspondences or matches is one of the most critical steps in point cloud registration. This paper proposes a learning framework COTReg by jointly considering the pointwise and structural matchings to predict correspondences of 3D point cloud registration. Specifically, we transform the two matchings into a Wasserstein distance-based and a Gromov-Wasserstein distance-based optimizations, respectively. Thus the task of establishing the correspondences can be naturally reshaped to a coupled optimal transport problem. Furthermore, we design a network to predict the confidence score of being an inlier for each point of the point clouds, which provides the overlap region information to generate correspondences. Our correspondence prediction pipeline can be easily integrated into either learning-based features like FCGF or traditional descriptors like FPFH. We conducted comprehensive experiments on 3DMatch, KITTI, 3DCSR, and ModelNet40 benchmarks, showing the state-of-art performance of the proposed method.
翻译:本文提出一个学习框架COTReg,共同考虑点和结构匹配,以预测3D点云的对应情况。具体地说,我们将两个匹配分别转化为瓦塞尔斯坦远程和格罗莫夫-瓦瑟斯坦远程优化。因此,建立通信的任务可以自然地重塑为最佳运输问题。此外,我们设计了一个网络,以预测点云每个点的置信分数,为生成通信提供重叠的区域信息。我们的通信预测管道可以很容易地纳入基于学习的特征,如FCGF或FPFH等传统描述器。我们进行了3DMatch、KITTI、3DCSR和模型Net40基准的全面实验,展示了拟议方法的最新表现。