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Iterative Distance-Aware Similarity Matrix Convolution with Mutual-Supervised Point Elimination for Efficient Point Cloud Registration

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In this paper, we propose a novel learning-based pipeline for partially overlapping 3D point cloud registration. The proposed model includes an iterative distance-aware similarity matrix convolution module to incorporate information from both the feature and Euclidean space into the pairwise point matching process. These convolution layers learn to match points based on joint information of the entire geometric features and Euclidean offset for each point pair, overcoming the disadvantage of matching by simply taking the inner product of feature vectors. Furthermore, a two-stage learnable point elimination technique is presented to improve computational efficiency and reduce false positive correspondence pairs. A novel mutual-supervision loss is proposed to train the model without extra annotations of keypoints. The pipeline can be easily integrated with both traditional (e.g. FPFH) and learning-based features. Experiments on partially overlapping and noisy point cloud registration show that our method outperforms the current state-of-the-art, while being more computationally efficient. Code is publicly available at https://github.com/jiahaowork/idam.

Jiahao Li, Changhao Zhang, Ziyao Xu, Hangning Zhou, Chi Zhang• 2019

Related benchmarks

TaskDatasetResultRank
6D Object Pose EstimationLineMOD--
50
Point cloud registrationModelNet40 (Unseen categories)
RMSE (Rotation)2.46
36
Point cloud registrationModelNet40 RPMNet manner (Unseen Shapes)
RMSE(R)4.744
32
Point cloud registrationModelNet40 twice-sampled (TS) unseen categories (test)
RMSE (Rotation)6.852
30
6D Object Pose EstimationOcclusion LINEMOD--
27
Point cloud registrationnuScenes
RRE (°)0.79
25
Point cloud registrationModelNet40 Unseen Categories with Gaussian Noise RPMNet manner (OS)
RMSE (Rotation)5.551
21
Point cloud registrationModelNet40 PRNet generation manner with Gaussian noise (unseen categories)
RMSE (Rotation)5.188
20
6D Object Pose EstimationTUD-L
mAP (5 deg)0.03
14
Point cloud registrationModelNet40 Gaussian Noise twice-sampled (test)
RMSE (R)6.846
11
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