CVMar 9, 2021

PointDSC: Robust Point Cloud Registration using Deep Spatial Consistency

arXiv:2103.05465v1360 citations
Originality Highly original
AI Analysis

This addresses robust point cloud registration for applications like robotics and 3D reconstruction, representing a novel method for a known bottleneck.

The paper tackles the problem of outlier correspondence removal in point cloud registration by introducing PointDSC, a deep neural network that explicitly incorporates spatial consistency, resulting in outperforming state-of-the-art methods on real-world datasets by a significant margin.

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.

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