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import numpy as np
from scipy.optimize import minimize
from colour import *
from colour.recovery import error_function_Jakob2019
from matplotlib import pyplot as plt
from gsoc_common import plot_comparison

# This test checks if derivatives are calculated correctly by comparing them
# to finite differences.
if __name__ == "__main__":
	shape = SpectralShape(360, 830, 1)
	cmfs = STANDARD_OBSERVER_CMFS["CIE 1931 2 Degree Standard Observer"].align(shape)

	illuminant = SpectralDistribution(ILLUMINANT_SDS["D65"]).align(shape)
	illuminant_XYZ = sd_to_XYZ(illuminant) / 100

	target = np.array([50, -20, 30]) # Some arbitrary Lab colour
	xs = np.linspace(-10, 10, 500)
	h = xs[1] - xs[0]

	# Vary one coefficient at a time
	for c_index in range(3):
		errors = np.empty(len(xs))
		derrors = np.empty(len(xs))

		for i, x in enumerate(xs):
			c = np.array([1.0, 1, 1])
			c[c_index] = x

			error, derror_dc = error_function_Jakob2019(
				c, target, shape, cmfs, illuminant, illuminant_XYZ
			)

			errors[i] = error
			derrors[i] = derror_dc[c_index]


		plt.subplot(2, 3, 1 + c_index)
		plt.xlabel("c%d" % c_index)
		plt.ylabel("ΔE")
		plt.plot(xs, errors)

		plt.subplot(2, 3, 4 + c_index)
		plt.xlabel("c%d" % c_index)
		plt.ylabel("dΔE/dc%d" % c_index)

		plt.plot(xs, derrors, "k-")
		plt.plot(xs[:-1] + h / 2, np.diff(errors) / h, "r:")

	plt.show()