In this paper, we present IRON (Invariant-based global Robust estimation and OptimizatioN), a non-minimal and highly robust solution for point cloud registration with a great number of outliers among the correspondences. To realize this, we decouple the registration problem into the estimation of scale, rotation and translation, respectively. Our first contribution is to propose RANSIC (RANdom Samples with Invariant Compatibility), which employs the invariant compatibility to seek inliers from random samples and robustly estimates the scale between two sets of point clouds in the meantime. Once the scale is estimated, our second contribution is to relax the non-convex global registration problem into a convex Semi-Definite Program (SDP) in a certifiable way using Sum-of-Squares (SOS) Relaxation and show that the relaxation is tight. For robust estimation, we further propose RT-GNC (Rough Trimming and Graduated Non-Convexity), a global outlier rejection heuristic having better robustness and time-efficiency than traditional GNC, as our third contribution. With these contributions, we can render our registration algorithm, IRON. Through experiments over real datasets, we show that IRON is efficient, highly accurate and robust against as many as 99% outliers whether the scale is known or unknown, outperforming the existing state-of-the-art algorithms.
翻译:在本文中,我们介绍了IRON(基于差异的全球强力估计和OptimizatioN),这是对点云登记的一种非最微和高度有力的解决方案,在函授中有大量外差。为了实现这一点,我们将登记问题分别分解为规模估计、轮换和翻译。我们的第一个贡献是提出RANSIC(不易相容的RANDOM样本),它利用无差异的兼容性从随机抽样中寻找无差异的样本,并同时强有力地估计两组点云之间的比例。一旦对规模作出估算,我们的第二个贡献就是用Sum-quarres(SOS)的放松和显示松缩。为了稳健的估计,我们进一步提议RT-GNC(精选的Trimming and Decristationded Non-Conclity), 一种全球超强的排斥性高超度高强度和时间效率比传统的GNCR的注册(S-DR)问题,我们作为高性的数据,我们作为高性的数据展示了我们的真实性的数据。