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Kalman-Filter-CA-RealMeasurements.py
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Kalman-Filter-CA-RealMeasurements.py
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# -*- coding: utf-8 -*-
# <nbformat>3.0</nbformat>
# <codecell>
import numpy as np
import matplotlib.pyplot as plt
from scipy.stats import norm
# <headingcell level=1>
# Kalman Filter Implementation for Constant Acceleration Model (CA) in Python
# <markdowncell>
# Situation covered: You have an acceleration sensor (in 2D: $\ddot x$ and $\ddot y$) and a position sensor ($x$ and $y$) and calculate velocity ($\dot x$ and $\dot y$).
# <headingcell level=2>
# State Vector - Constant Acceleration
# <markdowncell>
# Constant Acceleration Model for Ego Motion in Plane
#
# $$x= \left[ \matrix{ x \\ y \\ \dot x \\ \dot y \\ \ddot x \\ \ddot y} \right]$$
#
# <markdowncell>
# Formal Definition:
#
# $$x_{k+1} = A \cdot x_{k}$$
#
# $$x_{k+1} = \begin{bmatrix}1 & 0 & \Delta t & 0 & \frac{1}{2}\Delta t^2 & 0 \\ 0 & 1 & 0 & \Delta t & 0 & \frac{1}{2}\Delta t^2 \\ 0 & 0 & 1 & 0 & \Delta t & 0 \\ 0 & 0 & 0 & 1 & 0 & \Delta t \\ 0 & 0 & 0 & 0 & 1 & 0 \\ 0 & 0 & 0 & 0 & 0 & 1\end{bmatrix} \cdot \begin{bmatrix} x \\ y \\ \dot x \\ \dot y \\ \ddot x \\ \ddot y\end{bmatrix}_{k}$$
#
# $$y = H \cdot x$$
#
# The position ($x$ & $y$) as well as the acceleration ($\ddot x$ & $\ddot y$) is measured.
#
# $$y = \begin{bmatrix}1 & 0 & 0 & 0 & 0 & 0 \\0 & 1 & 0 & 0 & 0 & 0 \\0 & 0 & 0 & 0 & 1 & 0 \\ 0 & 0 & 0 & 0 & 0 & 1\end{bmatrix} \cdot x$$
# <headingcell level=4>
# Initial State
# <codecell>
x = np.matrix([[0.0, 0.0, 0.0, 0.0, 0.0, 0.0]]).T
print(x, x.shape)
n=x.size # States
plt.scatter(x[0],x[1], s=100)
plt.title('Initial Location')
# <headingcell level=4>
# Initial Uncertainty
# <codecell>
P = np.matrix([[10.0, 0.0, 0.0, 0.0, 0.0, 0.0],
[0.0, 10.0, 0.0, 0.0, 0.0, 0.0],
[0.0, 0.0, 10.0, 0.0, 0.0, 0.0],
[0.0, 0.0, 0.0, 10.0, 0.0, 0.0],
[0.0, 0.0, 0.0, 0.0, 10.0, 0.0],
[0.0, 0.0, 0.0, 0.0, 0.0, 10.0]])
print(P, P.shape)
fig = plt.figure(figsize=(6, 6))
im = plt.imshow(P, interpolation="none", cmap=plt.get_cmap('binary'))
plt.title('Initial Covariance Matrix $P$')
ylocs, ylabels = yticks()
# set the locations of the yticks
yticks(arange(7))
# set the locations and labels of the yticks
yticks(arange(6),('$x$', '$y$', '$\dot x$', '$\dot y$', '$\ddot x$', '$\ddot y$'), fontsize=22)
xlocs, xlabels = xticks()
# set the locations of the yticks
xticks(arange(7))
# set the locations and labels of the yticks
xticks(arange(6),('$x$', '$y$', '$\dot x$', '$\dot y$', '$\ddot x$', '$\ddot y$'), fontsize=22)
plt.xlim([-0.5,5.5])
plt.ylim([5.5, -0.5])
from mpl_toolkits.axes_grid1 import make_axes_locatable
divider = make_axes_locatable(plt.gca())
cax = divider.append_axes("right", "5%", pad="3%")
plt.colorbar(im, cax=cax)
plt.tight_layout()
# <headingcell level=4>
# Dynamic Matrix
# <markdowncell>
# It is calculated from the dynamics of the Egomotion.
#
# $$x_{k+1} = x_{k} + \dot x_{k} \cdot \Delta t + \ddot x_k \cdot \frac{1}{2}\Delta t^2$$
# $$y_{k+1} = y_{k} + \dot y_{k} \cdot \Delta t + \ddot y_k \cdot \frac{1}{2}\Delta t^2$$
# $$\dot x_{k+1} = \dot x_{k} + \ddot x \cdot \Delta t$$
# $$\dot y_{k+1} = \dot y_{k} + \ddot y \cdot \Delta t$$
# $$\ddot x_{k+1} = \ddot x_{k}$$
# $$\ddot y_{k+1} = \ddot y_{k}$$
# <codecell>
dt = 0.5 # Time Step between Filter Steps
A = np.matrix([[1.0, 0.0, dt, 0.0, 1/2.0*dt**2, 0.0],
[0.0, 1.0, 0.0, dt, 0.0, 1/2.0*dt**2],
[0.0, 0.0, 1.0, 0.0, dt, 0.0],
[0.0, 0.0, 0.0, 1.0, 0.0, dt],
[0.0, 0.0, 0.0, 0.0, 1.0, 0.0],
[0.0, 0.0, 0.0, 0.0, 0.0, 1.0]])
print(A, A.shape)
# <headingcell level=4>
# Measurement Matrix
# <markdowncell>
# Here you can determine, which of the states is covered by a measurement. In this example, the position ($x$ and $y$) as well as the acceleration is measured ($\ddot x$ and $\ddot y$).
# <codecell>
H = np.matrix([[1.0, 0.0, 0.0, 0.0, 0.0, 0.0],
[0.0, 1.0, 0.0, 0.0, 0.0, 0.0],
[0.0, 0.0, 0.0, 0.0, 1.0, 0.0],
[0.0, 0.0, 0.0, 0.0, 0.0, 1.0]])
print(H, H.shape)
# <headingcell level=4>
# Measurement Noise Covariance
# <codecell>
ra = 10.0**2
R = np.matrix([[ra, 0.0, 0.0, 0.0],
[0.0, ra, 0.0, 0.0],
[0.0, 0.0, ra, 0.0],
[0.0, 0.0, 0.0, ra]])
print(R, R.shape)
# Plot between -10 and 10 with .001 steps.
xpdf = np.arange(-10, 10, 0.001)
plt.subplot(121)
plt.plot(xpdf, norm.pdf(xpdf,0,R[0,0]))
plt.title('$x$')
plt.subplot(122)
plt.plot(xpdf, norm.pdf(xpdf,0,R[1,1]))
plt.title('$y$')
plt.tight_layout()
# <headingcell level=3>
# Process Noise Covariance Matrix Q for CV Model
# <markdowncell>
# The Position of the car can be influenced by a force (e.g. wind), which leads to an acceleration disturbance (noise). This process noise has to be modeled with the process noise covariance matrix Q.
#
# $$Q = \begin{bmatrix}\sigma_{x}^2 & \sigma_{xy} & \sigma_{x \dot x} & \sigma_{x \dot y} & \sigma_{x \ddot x} & \sigma_{x \ddot y} \\ \sigma_{yx} & \sigma_{y}^2 & \sigma_{y \dot x} & \sigma_{y \dot y} & \sigma_{y \ddot x} & \sigma_{y \ddot y} \\ \sigma_{\dot x x} & \sigma_{\dot x y} & \sigma_{\dot x}^2 & \sigma_{\dot x \dot y} & \sigma_{\dot x \ddot x} & \sigma_{\dot x \ddot y} \\ \sigma_{\dot y x} & \sigma_{\dot y y} & \sigma_{\dot y \dot x} & \sigma_{\dot y}^2 & \sigma_{\dot y \ddot x} & \sigma_{\dot y \ddot y} \\ \sigma_{\ddot x x} & \sigma_{\ddot x y} & \sigma_{\ddot x \dot x} & \sigma_{\ddot x \dot y} & \sigma_{\ddot x}^2 & \sigma_{\ddot x \ddot y} \\ \sigma_{\ddot y x} & \sigma_{\ddot y y} & \sigma_{\ddot y \dot x} & \sigma_{\ddot y \dot y} & \sigma_{\ddot y \ddot x} & \sigma_{\ddot y}^2\end{bmatrix}$$
#
# To easily calcualte Q, one can ask the question: How the noise effects my state vector? For example, how the acceleration change the position over one timestep dt.
#
# One can calculate Q as
#
# $$Q = G\cdot G^T \cdot \sigma_v^2$$
#
# with $G = \begin{bmatrix}0.5dt^2 & 0.5dt^2 & dt & dt & 1.0 & 1.0\end{bmatrix}^T$ and $\sigma_v$ as the acceleration process noise, which can be assumed for a vehicle to be $8.8m/s^2$, according to: Schubert, R., Adam, C., Obst, M., Mattern, N., Leonhardt, V., & Wanielik, G. (2011). [Empirical evaluation of vehicular models for ego motion estimation](http://ieeexplore.ieee.org/xpl/articleDetails.jsp?arnumber=5940526). 2011 IEEE Intelligent Vehicles Symposium (IV), 534–539. doi:10.1109/IVS.2011.5940526
# <codecell>
sa = 1.0
G = np.matrix([[1/2.0*dt**2],
[1/2.0*dt**2],
[dt],
[dt],
[1.0],
[1.0]])
Q = G*G.T*sa**2
print(Q, Q.shape)
# <codecell>
from sympy import Symbol, Matrix
from sympy.interactive import printing
printing.init_printing()
dts = Symbol('\Delta t')
Qs = Matrix([[0.5*dts**2],[0.5*dts**2],[dts],[dts],[1.0],[1.0]])
Qs*Qs.T
# <codecell>
fig = plt.figure(figsize=(6, 6))
im = plt.imshow(Q, interpolation="none", cmap=plt.get_cmap('binary'))
plt.title('Process Noise Covariance Matrix $Q$')
ylocs, ylabels = yticks()
# set the locations of the yticks
yticks(arange(7))
# set the locations and labels of the yticks
yticks(arange(6),('$x$', '$y$', '$\dot x$', '$\dot y$', '$\ddot x$', '$\ddot y$'), fontsize=22)
xlocs, xlabels = xticks()
# set the locations of the yticks
xticks(arange(7))
# set the locations and labels of the yticks
xticks(arange(6),('$x$', '$y$', '$\dot x$', '$\dot y$', '$\ddot x$', '$\ddot y$'), fontsize=22)
plt.xlim([-0.5,5.5])
plt.ylim([5.5, -0.5])
from mpl_toolkits.axes_grid1 import make_axes_locatable
divider = make_axes_locatable(plt.gca())
cax = divider.append_axes("right", "5%", pad="3%")
plt.colorbar(im, cax=cax)
plt.tight_layout()
# <headingcell level=4>
# Identity Matrix
# <codecell>
I = np.eye(n)
print(I, I.shape)
# <headingcell level=2>
# Measurement
# <headingcell level=4>
# Load Data from real sensor
# <codecell>
datafile = '2014-02-14-002-Data.csv'
date, \
time, \
millis, \
ax, \
ay, \
az, \
rollrate, \
pitchrate, \
yawrate, \
roll, \
pitch, \
yaw, \
speed, \
course, \
latitude, \
longitude, \
altitude, \
pdop, \
hdop, \
vdop, \
epe, \
fix, \
satellites_view, \
satellites_used, \
temp = np.loadtxt(datafile, delimiter=',', unpack=True,
converters={1: strpdate2num('%H%M%S%f'),
0: strpdate2num('%d%m%y')},
skiprows=1)
# Display GPS Heatmap from Disk
from IPython.display import Image as ImageDisp
gpsheatmap = ImageDisp(filename='2014-02-14-002-GPS-heatmap.png')
gpsheatmap
# <headingcell level=4>
# Convert Lat/Lon to Meters
# <codecell>
dlat = np.hstack((0.0, np.diff(latitude)))
dlon = np.hstack((0.0, np.diff(longitude)))
dt_s = np.hstack((0.0, np.diff(millis/1000.0)))
dy = 111.32 * np.cos(latitude * np.pi/180.0) * dlon # in km
dx = 111.32 * dlat # in km
mx = np.cumsum(1000.0 * dx) # in m
my = np.cumsum(1000.0 * dy) # in m
fig = plt.figure(figsize=(9,9))
plt.scatter(mx,my, s=20, label='Measurement', c='k')
plt.scatter(mx[0],my[0], s=100, label='Start', c='g')
plt.scatter(mx[-1],my[-1], s=100, label='Goal', c='r')
plt.xlabel('m')
plt.ylabel('m')
plt.legend(loc='best')
# <headingcell level=3>
# Acceleration
# <markdowncell>
# The car measures the acceleration in car's coordinate system. Therefore one have to rotate the acceleration vector to fit in the earth centered, earth fixed reference frame
# <codecell>
R
# <codecell>
measurements = np.vstack((mx,my))
print(measurements.shape)
print('Standard Deviation of Acceleration Measurements=%.2f' % np.std(mx))
print('You assumed %.2f in R.' % R[0,0])
# <headingcell level=3>
# Acceleration
# <codecell>
fig = plt.figure(figsize=(16,9))
subplot(211)
plt.step(range(m),mx, label='$a_x$')
plt.step(range(m),my, label='$a_y$')
plt.ylabel('Acceleration')
plt.title('Measurements')
plt.legend(loc='best',prop={'size':18})
subplot(212)
plt.step(range(m),mpx, label='$x$')
plt.step(range(m),mpy, label='$y$')
plt.ylabel('Position')
plt.legend(loc='best',prop={'size':18})
plt.xlabel('Filter Step')
# <codecell>
# Preallocation for Plotting
xt = []
yt = []
dxt= []
dyt= []
ddxt=[]
ddyt=[]
Zx = []
Zy = []
Px = []
Py = []
Pdx= []
Pdy= []
Pddx=[]
Pddy=[]
Kx = []
Ky = []
Kdx= []
Kdy= []
Kddx=[]
Kddy=[]
# <headingcell level=2>
# Kalman Filter
# <markdowncell>
# ![Kalman Filter](http://www.cbcity.de/wp-content/uploads/2013/05/Kalman-Filter-Step1-770x429.png)
# <codecell>
for n in range(m):
# Time Update (Prediction)
# ========================
# Project the state ahead
x = A*x
# Project the error covariance ahead
P = A*P*A.T + Q
# Measurement Update (Correction)
# ===============================
# Compute the Kalman Gain
S = H*P*H.T + R
K = (P*H.T) * np.linalg.pinv(S)
# Update the estimate via z
Z = measurements[:,n].reshape(H.shape[0],1)
y = Z - (H*x) # Innovation or Residual
x = x + (K*y)
# Update the error covariance
P = (I - (K*H))*P
# Save states for Plotting
xt.append(float(x[0]))
yt.append(float(x[1]))
dxt.append(float(x[2]))
dyt.append(float(x[3]))
ddxt.append(float(x[4]))
ddyt.append(float(x[5]))
Zx.append(float(Z[0]))
Zy.append(float(Z[1]))
Px.append(float(P[0,0]))
Py.append(float(P[1,1]))
Pdx.append(float(P[2,2]))
Pdy.append(float(P[3,3]))
Pddx.append(float(P[4,4]))
Pddy.append(float(P[5,5]))
Kx.append(float(K[0,0]))
Ky.append(float(K[1,0]))
Kdx.append(float(K[2,0]))
Kdy.append(float(K[3,0]))
Kddx.append(float(K[4,0]))
Kddy.append(float(K[5,0]))
# <headingcell level=2>
# Plots
# <headingcell level=3>
# Uncertainty
# <codecell>
fig = plt.figure(figsize=(16,4))
#plt.plot(range(len(measurements[0])),Px, label='$x$')
#plt.plot(range(len(measurements[0])),Py, label='$y$')
plt.plot(range(len(measurements[0])),Pddx, label='$\ddot x$')
plt.plot(range(len(measurements[0])),Pddy, label='$\ddot y$')
plt.xlabel('Filter Step')
plt.ylabel('')
plt.title('Uncertainty (Elements from Matrix $P$)')
plt.legend(loc='best',prop={'size':22})
# <headingcell level=3>
# Kalman Gains
# <codecell>
fig = plt.figure(figsize=(16,4))
plt.plot(range(len(measurements[0])),Kx, label='Kalman Gain for $x$')
plt.plot(range(len(measurements[0])),Ky, label='Kalman Gain for $y$')
plt.plot(range(len(measurements[0])),Kdx, label='Kalman Gain for $\dot x$')
plt.plot(range(len(measurements[0])),Kdy, label='Kalman Gain for $\dot y$')
plt.plot(range(len(measurements[0])),Kddx, label='Kalman Gain for $\ddot x$')
plt.plot(range(len(measurements[0])),Kddy, label='Kalman Gain for $\ddot y$')
plt.xlabel('Filter Step')
plt.ylabel('')
plt.title('Kalman Gain (the lower, the more the measurement fullfill the prediction)')
plt.legend(loc='best',prop={'size':18})
# <headingcell level=3>
# Covariance Matrix
# <codecell>
fig = plt.figure(figsize=(6, 6))
im = plt.imshow(P, interpolation="none", cmap=plt.get_cmap('binary'))
plt.title('Covariance Matrix $P$ (after %i Filter Steps)' % (m))
ylocs, ylabels = yticks()
# set the locations of the yticks
yticks(arange(7))
# set the locations and labels of the yticks
yticks(arange(6),('$x$', '$y$', '$\dot x$', '$\dot y$', '$\ddot x$', '$\ddot y$'), fontsize=22)
xlocs, xlabels = xticks()
# set the locations of the yticks
xticks(arange(7))
# set the locations and labels of the yticks
xticks(arange(6),('$x$', '$y$', '$\dot x$', '$\dot y$', '$\ddot x$', '$\ddot y$'), fontsize=22)
plt.xlim([-0.5,5.5])
plt.ylim([5.5, -0.5])
from mpl_toolkits.axes_grid1 import make_axes_locatable
divider = make_axes_locatable(plt.gca())
cax = divider.append_axes("right", "5%", pad="3%")
plt.colorbar(im, cax=cax)
plt.tight_layout()
# <headingcell level=2>
# State Vector
# <codecell>
fig = plt.figure(figsize=(16,9))
plt.subplot(311)
plt.step(range(len(measurements[0])),ddxt, label='$\ddot x$')
plt.step(range(len(measurements[0])),ddyt, label='$\ddot y$')
plt.title('Estimate (Elements from State Vector $x$)')
plt.legend(loc='best',prop={'size':22})
plt.ylabel('Acceleration')
plt.ylim([-1,1])
plt.subplot(312)
plt.step(range(len(measurements[0])),dxt, label='$\dot x$')
plt.step(range(len(measurements[0])),dyt, label='$\dot y$')
plt.ylabel('')
plt.legend(loc='best',prop={'size':22})
plt.ylabel('Velocity')
plt.subplot(313)
plt.step(range(len(measurements[0])),xt, label='$x$')
plt.step(range(len(measurements[0])),yt, label='$y$')
plt.xlabel('Filter Step')
plt.ylabel('')
plt.legend(loc='best',prop={'size':22})
plt.ylabel('Position')
# <headingcell level=2>
# Position x/y
# <codecell>
fig = plt.figure(figsize=(16,16))
plt.scatter(xt,yt, s=20, label='State', c='k')
plt.scatter(xt[0],yt[0], s=100, label='Start', c='g')
plt.scatter(xt[-1],yt[-1], s=100, label='Goal', c='r')
plt.xlabel('X')
plt.ylabel('Y')
plt.title('Position')
plt.legend(loc='best')
axis('equal')
plt.savefig('Kalman-Filter-CA-Position.png', dpi=72, transparent=True, bbox_inches='tight')
# <headingcell level=1>
# Conclusion
# <codecell>
dist=np.cumsum(np.sqrt(np.diff(xt)**2 + np.diff(yt)**2))
print('Your drifted %d units from origin.' % dist[-1])
# <markdowncell>
# As you can see, bad idea just to measure the acceleration and try to get the position. The errors integrating up, so your position estimation is drifting.