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I wrote this code to use the Kalman Filter to predict the trajectory in 2D, I am trying to use the Opencv Kalman Filter in python, here is my code:

import cv2.cv as cv

kalman = cv.CreateKalman(4, 2, 0)

i = 0
# I read the point from an .txt file
with open('trajectory_0000.txt') as f:    
    array = []
    for line in f: # read rest of lines
        array.append([int(x) for x in line.split()])
        vec=array.pop()
        x=vec[0]
        y=vec[1]
        # I obtain the (x,y) points

        if i== 0:
        # This happens only one time to initialize the kalman Filter with the first (x,y) point
            kalman.state_pre[0,0]  = x
            kalman.state_pre[1,0]  = y
            kalman.state_pre[2,0]  = 0
            kalman.state_pre[3,0]  = 0

        # set kalman transition matrix
            kalman.transition_matrix[0,0] = 1
            kalman.transition_matrix[1,1] = 1
            kalman.transition_matrix[2,2] = 1
            kalman.transition_matrix[3,3] = 1

            # set Kalman Filter
            cv.SetIdentity(kalman.measurement_matrix, cv.RealScalar(1))
            cv.SetIdentity(kalman.process_noise_cov, cv.RealScalar(1e-5))## 1e-5
            cv.SetIdentity(kalman.measurement_noise_cov, cv.RealScalar(1e-1))
            cv.SetIdentity(kalman.error_cov_post, cv.RealScalar(0.1))
        else:
        # Kalman prediction with Kalman Correction with the points I have in trajectory_0000.txt
            kalman_prediction = cv.KalmanPredict(kalman)
            rightPoints = cv.CreateMat(2, 1, cv.CV_32FC1)
            rightPoints[0,0]=x
            rightPoints[1,0]=y

            kalman.state_pre[0,0]  = x
            kalman.state_pre[1,0]  = y
            kalman.state_pre[2,0]  = 0
            kalman.state_pre[3,0]  = 0

            estimated = cv.KalmanCorrect(kalman, rightPoints)

        i=i+1
        print str( x ) +  " - " + str( y )

# Here we do not have more points to apply the Kalman Correct, so I need to predict the points        
for i in range(20):
    kalman_prediction = cv.KalmanPredict(kalman)
    x= kalman_prediction[0,0]
    y= kalman_prediction[1,0]

    print "Kalman prediction " +str(i) + ": "+str( x ) +  ", " + str( y )

Here the Results of my code, white points are my points, and green points are the Kalman Prediction, the red circle is the last point of my points. As you can see, that code predict points(green points) but they far of my points (red point). I changed the parameters without success, do you have any idea?

share|improve this question
    
Just a weird guess, did you get dimensions in right order? – J0HN Jul 2 '13 at 16:11
    
Are you talking about the dimension of the points in the txt file? yeah, that's ok, I check it before to use the kalman filter – Gab Hum Jul 2 '13 at 17:41
    
Well, actually I felt it might be possible that you just fed y,x where x,y was expected. The image you have looks a little bit like that. – J0HN Jul 2 '13 at 18:58
    
Just a comment, but from 2D trajectory mapping, I remember the State Vector has to be [X, dX/dt, Y, dY/dt] this way the transition matrix is [1,dt,0,0, 0,1,0,0 0,0,1,dt, 0,0,0,1] aka X1=X0+dX/dt*dt, etc – user2056201 Jul 2 '15 at 16:49

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