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Published 2009 | Published
Book Section - Chapter Open

Particle filtering for Quantized Innovations

Abstract

In this paper, we re-examine the recently proposed distributed state estimators based on quantized innovations. It is widely believed that the error covariance of the Quantized Innovation Kalman filter follows a modified Riccati recursion. We present stable linear dynamical systems for which this is violated and the filter diverges. We propose a Particle Filter that approximates the optimal nonlinear filter and observe that the error covariance of the Particle Filter follows the modified Riccati recursion. We also simulate a Posterior Cramer-Rao bound (PCRB) for this filtering problem.

Additional Information

© 2009 IEEE.

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Published - Sukhavasi2009p80802009_Ieee_International_Conference_On_Acoustics_Speech_And_Signal_Processing_Vols_1-_8_Proceedings.pdf

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Sukhavasi2009p80802009_Ieee_International_Conference_On_Acoustics_Speech_And_Signal_Processing_Vols_1-_8_Proceedings.pdf

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Created:
August 22, 2023
Modified:
March 5, 2024