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RIGA: Rotation-Invariant and Globally-Aware Descriptors for Point Cloud Registration

About

Successful point cloud registration relies on accurate correspondences established upon powerful descriptors. However, existing neural descriptors either leverage a rotation-variant backbone whose performance declines under large rotations, or encode local geometry that is less distinctive. To address this issue, we introduce RIGA to learn descriptors that are Rotation-Invariant by design and Globally-Aware. From the Point Pair Features (PPFs) of sparse local regions, rotation-invariant local geometry is encoded into geometric descriptors. Global awareness of 3D structures and geometric context is subsequently incorporated, both in a rotation-invariant fashion. More specifically, 3D structures of the whole frame are first represented by our global PPF signatures, from which structural descriptors are learned to help geometric descriptors sense the 3D world beyond local regions. Geometric context from the whole scene is then globally aggregated into descriptors. Finally, the description of sparse regions is interpolated to dense point descriptors, from which correspondences are extracted for registration. To validate our approach, we conduct extensive experiments on both object- and scene-level data. With large rotations, RIGA surpasses the state-of-the-art methods by a margin of 8\degree in terms of the Relative Rotation Error on ModelNet40 and improves the Feature Matching Recall by at least 5 percentage points on 3DLoMatch.

Hao Yu, Ji Hou, Zheng Qin, Mahdi Saleh, Ivan Shugurov, Kai Wang, Benjamin Busam, Slobodan Ilic• 2022

Related benchmarks

TaskDatasetResultRank
Point cloud matching3DMatch Rotated
Feature Matching Recall98.2
8
Point cloud matching3DLoMatch (Origin)
Feature Matching Recall85.1
8
Point cloud matching3DLoMatch Rotated
Feature Matching Recall84.5
8
Point cloud registration3DMatch Rotated
Registration Recall93
8
Point cloud registration3DLoMatch Rotated
Registration Recall66.9
8
Point cloud matching3DMatch (Origin)
Feature Matching Recall97.9
8
Point cloud registration3DMatch (Origin)
Registration Recall89.3
8
Point cloud registration3DLoMatch (Origin)
Registration Recall65.1
8
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