Outlier-Insensitive Kalman Smoothing And Marginal Message Passing

2016 24th European Signal Processing Conference (EUSIPCO)(2016)

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摘要
We propose a new approach to outlier-insensitive Kalman smoothing based on normal priors with unknown variance (NUV). In contrast to prior work, the actual computations amount essentially to iterations of a standard Kalman smoother (with few extra computations). The proposed approach is easily extended to nonlinear estimation problems by combining the outlier detection with an extended Kalman smoother. For the Kalman smoothing, we consider both a Modified Bryson-Frasier smoother and the recently proposed Backward Information Filter Forward Marginal smoother, neither of which requires matrix inversions.
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关键词
outlier-insensitive Kalman smoothing,marginal message passing,unknown variance,standard Kalman smoother,extended Kalman smoother,modified Bryson-Frasier smoother,backward information filter,forward marginal smoother
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