Optimal State Estimation

Chapter 14 - The Unscented Kalman Filter

CHAPTER 14

The unscented Kalman filter

We use the intuition that it is easier to approximate a probability distribution than it is to approximate an arbitrary nonlinear function or transformation.

—Simon Julier, Jeffrey Uhlmann, and Hugh Durrant-Whyte [Jul00]


As discussed earlier, the extended Kalman filter (EKF) is the most widely applied state estimation algorithm for nonlinear systems. However, the EKF can be difficult to tune and often gives unreliable estimates if the system nonlinearities are severe. This is because the EKF relies on linearization to propagate the mean and covariance of the state. This chapter discusses the unscented Kalman filter (UKF), an extension of the Kalman filter that reduces the linearization errors of the EKF. The use of the UKF can provide significant improvement over the EKF.

First, we will take a diversion from filtering in Section 14.1 to investigate how means and covariances propagate in nonlinear equations. In Section 14.2, we will present the unscented transformation, which is a way to approximate how the mean and covariance of a random variable change when the random variable undergoes a nonlinear transformation. In Section 14.3, we will use the previous results to derive the UKF and show that it has less linearization error than the EKF. In Section 14.4, we will present some modifications of the standard UKF which can be used to obtain more accurate or faster filtering results.

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