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- # Copyright Jim Bosch 2010-2012.
- # Distributed under the Boost Software License, Version 1.0.
- # (See accompanying file LICENSE_1_0.txt or copy at
- # http://www.boost.org/LICENSE_1_0.txt)
- import numpy
- import gaussian
- mu = numpy.zeros(2, dtype=float)
- sigma = numpy.identity(2, dtype=float)
- sigma[0, 1] = 0.15
- sigma[1, 0] = 0.15
- g = gaussian.bivariate_gaussian(mu, sigma)
- r = numpy.linspace(-40, 40, 1001)
- x, y = numpy.meshgrid(r, r)
- z = g(x, y)
- s = z.sum() * (r[1] - r[0])**2
- print "sum (should be ~ 1):", s
- xc = (z * x).sum() / z.sum()
- print "x centroid (should be ~ %f): %f" % (mu[0], xc)
- yc = (z * y).sum() / z.sum()
- print "y centroid (should be ~ %f): %f" % (mu[1], yc)
- xx = (z * (x - xc)**2).sum() / z.sum()
- print "xx moment (should be ~ %f): %f" % (sigma[0,0], xx)
- yy = (z * (y - yc)**2).sum() / z.sum()
- print "yy moment (should be ~ %f): %f" % (sigma[1,1], yy)
- xy = 0.5 * (z * (x - xc) * (y - yc)).sum() / z.sum()
- print "xy moment (should be ~ %f): %f" % (sigma[0,1], xy)
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