Set-membership localization with probabilistic errors |
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Authors: | Luc Jaulin Author Vitae |
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Affiliation: | ENSTA-Bretagne, 2 rue François Verny, 29806 Brest, France |
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Abstract: | Interval methods have been shown to be efficient, robust and reliable to solve difficult set-membership localization problems. However, they are unsuitable in a probabilistic context, where the approximation of an unbounded probability density function by a set cannot be accepted. This paper proposes a new probabilistic approach which makes possible to use classical set-membership localization methods which are robust with respect to outliers. The approach is illustrated on two simulated examples. |
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Keywords: | Gaussian noise Interval analysis Probabilistic estimation Robust estimation Set-membership estimation Outliers |
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