FuzzyPSReg: Strategies of Fuzzy Cluster-Based Point Set Registration

IEEE Transactions on Robotics(2022)

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摘要
This article studies the fuzzy cluster-based point set registration (FuzzyPSReg). First, we propose a new metric based on Gustafson–Kessel (GK) fuzzy clustering to measure the alignment of two point clouds. Unlike the metric based on fuzzy c-means (FCM) clustering in our previous work, the GK-based metric includes orientation properties of the point clouds, thereby providing more information for registration. We then develop the registration quality assessment of the GK-based metric, which is more sensitive to small misalignments than that of the FCM-based metric. Next, by effectively combining the two metrics, we design two FuzzyPSReg strategies with global optimization. 1) FuzzyPSReg-SS , which extends our previous work and aligns two similar-sized point clouds with greatly improved efficiency. 2) FuzzyPSReg-O2S , which aligns two point clouds with a relatively large difference in size and can be used to estimate the pose of an object in a scene. In the experiment, we use different point clouds to test and compare the proposed method with state-of-the-art registration approaches. The results demonstrate the advantages and effectiveness of our method.
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关键词
3-D point clouds,fuzzy clusters,object pose estimation,point set registration,registration quality assessment
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