JOURNAL ARTICLE

Feature-Metric Registration: A Fast Semi-Supervised Approach for Robust Point Cloud Registration Without Correspondences

Abstract

We present a fast feature-metric point cloud registration framework, which enforces the optimisation of registration by minimising a feature-metric projection error without correspondences. The advantage of the feature-metric projection error is robust to noise, outliers and density difference in contrast to the geometric projection error. Besides, minimising the feature-metric projection error does not need to search the correspondences so that the optimisation speed is fast. The principle behind the proposed method is that the feature difference is smallest if point clouds are aligned very well. We train the proposed method in a semi-supervised or unsupervised approach, which requires limited or no registration label data. Experiments demonstrate our method obtains higher accuracy and robustness than the state-of-the-art methods. Besides, experimental results show that the proposed method can handle significant noise and density difference, and solve both same-source and cross-source point cloud registration.

Keywords:
Point cloud Robustness (evolution) Artificial intelligence Outlier Metric (unit) Computer science Feature (linguistics) Projection (relational algebra) Computer vision Pattern recognition (psychology) Image registration Algorithm Image (mathematics)

Metrics

289
Cited By
28.94
FWCI (Field Weighted Citation Impact)
32
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1.00
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