Data in non-Euclidean spaces are commonly encountered in many fields of Science and Engineering. For instance, in Robotics, attitude sensors capture orientation which is an element of a Lie group. In the recent past, several researchers have reported methods that take into account the geometry of Lie Groups in designing parameter estimation algorithms in nonlinear spaces. Maximum likelihood estimators (MLE) are quite commonly used for such tasks and it is well known in the field of statistics that Stein's shrinkage estimators dominate the MLE in a mean-squared sense assuming the observations are from a normal population. In this paper, we present a novel shrinkage estimator for data residing in Lie groups, specifically, abelian or compact Lie groups. The key theoretical results presented in this paper are: (i) Stein's Lemma and its proof for Lie groups and, (ii) proof of dominance of the proposed shrinkage estimator over MLE for abelian and compact Lie groups. We present examples of simulation studies of the dominance of the proposed shrinkage estimator and an application of shrinkage estimation to multiple-robot localization.
翻译:例如,在机器人学中,姿态感应器捕捉方向是Lie组的一个要素。最近,一些研究人员报告了在设计非线性空间参数估计算法时考虑Lie组几何特征的方法。最大可能性估计器(MLE)在这类任务中非常常用,在统计领域众所周知,Stein的缩微偏差估计器以中度偏差的方式主宰MLE,假定观测来自正常人口。在本文中,我们为居住在Lie组的数据,特别是ABelian或Cluctial Lie组的数据提供了一个新的缩微估计器。本文提出的主要理论结果是:(一) Stein's Lemma及其为Lie组提供的证据,以及(二) 证明拟议的缩微数估计器相对于ABelian和紧凑性谎言组MLE的主导地位。我们举例说明了对拟议的缩微估测仪的主导地位进行模拟研究,并将缩微估测算器应用于多色地方。