Title :
Parametric covariance prediction for heteroscedastic noise
Author :
Humphrey Hu;George Kantor
Author_Institution :
Robotics Institute, Carnegie Mellon University, USA
Abstract :
The ubiquitous additive Gaussian noise model is favored in statistical modeling applications for its flexibility and ease of use. Often noise is assumed to be well-represented by a constant covariance, while in reality error characteristics may change predictably. We present an efficient parametric covariance predictor based on the modified Cholesky decomposition that maps from features of the input to covariance matrices. In addition, we discuss fitting the predictor parameters using noise samples with simple regularization techniques. We demonstrate our approach by estimating observation covariances for range-bearing localization with simulated and experimental datasets and show that this results in increased filtering performance compared to traditional covariance adaptation and constant covariance baselines.
Keywords :
"Covariance matrices","Matrix decomposition","Generators","Adaptation models","Predictive models","Data models","Kalman filters"
Conference_Titel :
Intelligent Robots and Systems (IROS), 2015 IEEE/RSJ International Conference on
DOI :
10.1109/IROS.2015.7353798