CLIPPER: A Graph-Theoretic Framework for Robust Data Association

2021 IEEE INTERNATIONAL CONFERENCE ON ROBOTICS AND AUTOMATION (ICRA 2021)(2021)

引用 34|浏览85
暂无评分
摘要
We present CLIPPER (Consistent Linking, Pruning, and Pairwise Error Rectification), a framework for robust data association in the presence of noise and outliers. We formulate the problem in a graph-theoretic framework using the notion of geometric consistency. State-of-the-art techniques that use this framework utilize either combinatorial optimization techniques that do not scale well to large-sized problems, or use heuristic approximations that yield low accuracy in high-noise, high-outlier regimes. In contrast, CLIPPER uses a relaxation of the combinatorial problem and returns solutions that are guaranteed to correspond to the optima of the original problem. Low time complexity is achieved with an efficient projected gradient ascent approach. Experiments indicate that CLIPPER maintains a consistently low runtime of 15 ms where exact methods can require up to 24 s at their peak, even on small-sized problems with 200 associations. When evaluated on noisy point cloud registration problems, CLIPPER achieves 100% precision and 98% recall in 90% outlier regimes while competing algorithms begin degrading by 70% outliers. In an instance of associating noisy points of the Stanford Bunny with 990 outlier associations and only 10 inlier associations, CLIPPER successfully returns 8 inlier associations with 100% precision in 138 ms. Code is available at https://mit-acl.github.io/clipper.
更多
查看译文
关键词
graph-theoretic framework,robust data association,consistent linking,geometric consistency,framework utilize,combinatorial optimization techniques,large-sized problems,high-noise regimes,high-outlier regimes,combinatorial problem,low time complexity,consistently low runtime,small-sized problems,noisy point cloud registration problems,pairwise error rectification,outlier regimes,outlier associations,inlier associations,CLIPPER,time 15.0 ms,time 24.0 s,time 138.0 ms
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要