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Bayesian Kalman filtering, regularization and compressed sampling

机译:贝叶斯卡尔曼滤波,正则化和压缩采样

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Bayesian Kalman filter (BKF) is an important tool in signal processing, communications, control and statistics. This paper briefly reviews the principle of BKF for Gaussian mixture and proposes a new and efficient method for real-time implementation. Moreover, the close relationship between conventional KF and regularization theory in estimation is reviewed. Using this framework, the problem of sampling, smoothing and interpolation can be treated in a unified framework. New results on under-sampling using non-uniform samples will be presented.
机译:贝叶斯卡尔曼滤波器(BKF)是信号处理,通信,控制和统计中的重要工具。本文简要回顾了高斯混合的BKF原理,并提出了一种新的,高效的实时实现方法。此外,回顾了传统KF和正则化理论在估计中的密切关系。使用此框架,可以在一个统一的框架中处理采样,平滑和插值的问题。将介绍使用非均匀样本进行欠采样的新结果。

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