4.8 Article

A Performance Evaluation of Correspondence Grouping Methods for 3D Rigid Data Matching

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TPAMI.2019.2960234

关键词

Three-dimensional displays; Shape; Measurement; Detectors; Feature extraction; Object recognition; Clutter; Performance evaluation; correspondence grouping; 3D computer vision; 3D rigid data; shape matching

资金

  1. National Natural Science Foundation of China [61876152]

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This paper provides a comprehensive evaluation of nine state-of-the-art 3D correspondence grouping methods under various application contexts and perturbations, aiming to find a more efficient and accurate way for point-to-point correspondences between 3D rigid data.
Seeking consistent point-to-point correspondences between 3D rigid data (point clouds, meshes, or depth maps) is a fundamental problem in 3D computer vision. While a number of correspondence selection methods have been proposed in recent years, their advantages and shortcomings remain unclear regarding different applications and perturbations. To fill this gap, this paper gives a comprehensive evaluation of nine state-of-the-art 3D correspondence grouping methods. A good correspondence grouping algorithm is expected to retrieve as many as inliers from initial feature matches, giving a rise in both precision and recall as well as facilitating accurate transformation estimation. Toward this rule, we deploy experiments on three benchmarks with different application contexts, including shape retrieval, 3D object recognition, and point cloud registration. We also investigate various perturbations such as noise, point density variation, clutter, occlusion, partial overlap, different scales of initial correspondences, and different combinations of keypoint detectors and descriptors. The rich variety of application scenarios and nuisances result in different spatial distributions and inlier ratios of initial feature correspondences, thus enabling a thorough evaluation. Based on the outcomes, we give a summary of the traits, merits, and demerits of evaluated approaches and indicate some potential future research directions.

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