Removing outlier correspondences is one of the critical steps for successful feature-based point cloud registration. Despite the increasing popularity of introducing deep learning methods in this field, spatial consistency, which is essentially established by a Euclidean transformation between point clouds, has received almost no individual attention in existing learning frameworks. In this paper, we present PointDSC, a novel deep neural network that explicitly incorporates spatial consistency for pruning outlier correspondences. First, we propose a nonlocal feature aggregation module, weighted by both feature and spatial coherence, for feature embedding of the input correspondences. Second, we formulate a differentiable spectral matching module, supervised by pairwise spatial compatibility, to estimate the inlier confidence of each correspondence from the embedded features. With modest computation cost, our method outperforms the state-of-the-art hand-crafted and learning-based outlier rejection approaches on several real-world datasets by a significant margin. We also show its wide applicability by combining PointDSC with different 3D local descriptors.
翻译:清除外线通信是成功基于地貌特征的云层登记的关键步骤之一。 尽管在这一领域采用深层学习方法越来越受欢迎,但空间一致性(基本上由点云之间的欧几里特变所建立)在现有学习框架中几乎没有引起个别注意。在本文中,我们介绍一个全新的深层神经网络PointDSC,它明确包含外线通信的空间一致性。首先,我们提议为输入通信的嵌入功能建立一个按特征和空间一致性加权的非本地特征汇总模块。第二,我们设计了一个不同的光谱匹配模块,由对齐空间兼容性监督,以估计嵌入特征中的每一通信的内含可靠性。用少量的计算成本,我们的方法超越了几个现实世界数据集中最新的手工制作和基于学习的外部拒绝方法。我们还通过将PointDSC与不同的3D本地描述器相结合,显示了其广泛适用性。