Target tracking method based on pigeon intelligent optimization Kalman filtering parameters
A Kalman filter, intelligent optimization technology, applied in the field of automation
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[0079] See figure 1 — Figure 5 , the following uses a specific practical example to verify that the pigeon group algorithm proposed by the present invention optimizes the parameters of the Kalman filter to achieve the purpose of tracking the target.
[0080] The specific steps to implement this example are as follows:
[0081] Step 1: Get the real curve
[0082] Obtain a specific curve as a real curve;
[0083] Step 2: Get the original curve
[0084] Add Gaussian white noise (noise) to the target curve, called the original curve;
[0085] Step 3: Initialize the parameters of the pigeon group algorithm
[0086] (1) Initialize the optimization parameter dimension D
[0087] The parameter to be optimized in this method is the measurement noise covariance R of the Kalman filter, which is a 2×2 matrix, so the pigeon group algorithm is used to find the target area in four dimensions, so D is 4.
[0088] (2) Initialize the parameters of the contraction and expansion coeffici...
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