laser simulation is not good..

This commit is contained in:
Atsushi Sakai
2018-05-12 11:48:59 +09:00
parent 45d695323c
commit aa5de3ed1f
3 changed files with 149 additions and 30 deletions

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"""
Object shape recognition with circle fitting
author: Atsushi Sakai (@Atsushi_twi)
"""
import matplotlib.pyplot as plt
import math
import random
import numpy as np
def circle_fitting(x, y):
"""
Circle Fitting with least squared
input: point x-y positions
output cxe x center position
cye y center position
re radius of circle
error: prediction error
"""
sumx = sum(x)
sumy = sum(y)
sumx2 = sum([ix ** 2 for ix in x])
sumy2 = sum([iy ** 2 for iy in y])
sumxy = sum([ix * iy for (ix, iy) in zip(x, y)])
F = np.array([[sumx2, sumxy, sumx],
[sumxy, sumy2, sumy],
[sumx, sumy, len(x)]])
G = np.array([[-sum([ix ** 3 + ix * iy ** 2 for (ix, iy) in zip(x, y)])],
[-sum([ix ** 2 * iy + iy ** 3 for (ix, iy) in zip(x, y)])],
[-sum([ix ** 2 + iy ** 2 for (ix, iy) in zip(x, y)])]])
# try:
T = np.linalg.inv(F).dot(G)
# except:
# return (0, 0, float("inf"))
cxe = float(T[0] / -2)
cye = float(T[1] / -2)
# print (cxe,cye,T)
# try:
re = math.sqrt(cxe**2 + cye**2 - T[2])
# except:
# return (cxe, cye, float("inf"))
error = sum([np.hypot(cxe - ix, cye - iy) - re for (ix, iy) in zip(x, y)])
# print(error)
return (cxe, cye, re, error)
def get_sample_points(cx, cy, r, angle_reso):
x, y, angle, ran = [], [], [], []
for theta in np.arange(0.0, 2.0 * math.pi, angle_reso):
rn = r * random.uniform(1.0, 1.0)
nx = cx + rn * math.cos(theta)
ny = cy + rn * math.sin(theta)
nangle = math.atan2(ny, nx)
nr = math.hypot(nx, ny)
occluded = False
for i in range(len(angle)):
if abs(angle[i] - nangle) <= angle_reso:
if nr >= ran[i]:
occluded = True
break
if not occluded:
x.append(nx)
y.append(ny)
angle.append(nangle)
ran.append(nr)
return x, y
def plot_circle(x, y, size, color="-b"):
deg = list(range(0, 360, 5))
deg.append(0)
xl = [x + size * math.cos(math.radians(d)) for d in deg]
yl = [y + size * math.sin(math.radians(d)) for d in deg]
plt.plot(xl, yl, color)
def main1():
print(__file__ + " start!!")
tcx = 1.0
tcy = 2.0
tr = 3.0
np = 10
x, y = get_sample_points(tcx, tcy, tr, np)
cx, cy, r, error = circle_fitting(x, y)
print("Error:", error)
plot_circle(tcx, tcy, tr)
plot_circle(cx, cy, r, color="-xr")
plt.plot(x, y, "gx")
plt.axis("equal")
plt.show()
def main():
time = 0.0
simtime = 10.0
dt = 1.0
cx = -3.0
cy = -5.0
theta = math.radians(30.0)
cr = 1.0
angle_reso = math.radians(30.0)
while time <= simtime:
time += dt
cx += math.cos(theta)
cy += math.cos(theta)
x, y = get_sample_points(cx, cy, cr, angle_reso)
ex, ey, er, error = circle_fitting(x, y)
print("Error:", error)
plt.cla()
plt.axis("equal")
plt.plot(0.0, 0.0, "*r")
plot_circle(cx, cy, cr)
plt.plot(x, y, "xr")
plot_circle(ex, ey, er, "-r")
plt.pause(dt)
if __name__ == '__main__':
# main1()
main()

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"""
Object shape recognition with convex optimization
author: Atsushi Sakai (@Atsushi_twi)
"""
def main():
print(__file__ + " start!!")
if __name__ == '__main__':
main()

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@@ -1,15 +0,0 @@
"""
Object shape recognition with convex optimization
author: Atsushi Sakai (@Atsushi_twi)
"""
def main():
print(__file__ + " start!!")
if __name__ == '__main__':
main()