Title :
Self-tuning M-estimators
Author :
Agamennoni, G. ; Furgale, P. ; Siegwart, R.
Author_Institution :
Autonomous Syst. Lab. (ASL), ETH Zurich, Zurich, Switzerland
Abstract :
M-estimators are the de-facto standard method of robust estimation in robotics. They are easily incorporated into iterative non-linear least-squares estimation and provide seamless and effective handling of outliers in data. However, every M-estimator´s robust loss function has one or more tuning parameters that control the influence of different data. The choice of M-estimator and the manual tuning of these parameters is always a source of uncertainty when applying the technique to new data or a new problem. In this paper we develop the concept of self-tuning M-estimators. We first make the connection between many common M-estimators and elliptical probability distributions. This connection shows that the choice of M-estimator is an assumption that the residuals belong to a well-defined elliptical distribution. We exploit this implication in two ways. First, we develop an algorithm for tuning the M-estimator parameters during iterative optimization. Second, we show how to choose the correct M-estimator for your data by examining the likelihood of the data given the model. We fully derive these algorithms and show their behavior on a representative example of visual simultaneous localization and mapping.
Keywords :
iterative methods; least squares approximations; mobile robots; optimisation; self-adjusting systems; statistical distributions; elliptical probability distributions; iterative nonlinear least-squares estimation; iterative optimization; robust estimation; self-tuning M-estimators; Cost function; Data models; Robustness; Simultaneous localization and mapping; Switches; Tuning;
Conference_Titel :
Robotics and Automation (ICRA), 2015 IEEE International Conference on
Conference_Location :
Seattle, WA
DOI :
10.1109/ICRA.2015.7139840