I am working with some 2-dimensional phase data and am trying to plot it in a reasonable way. With phase, 358 degrees and 2 degrees are very close, but when plotting, colorbars tend to show them as being maximally different. This is unacceptable.
The code below is a hack which I borrowed from here that sort of does what I want, but only in grayscale, and it's rather ugly.
I do not want to modify my data to do this (eg,
phase = np.abs(phase-180)). How can I make a continuous color map that starts at 0 with some color, then ends at 360 with the same color? I would prefer a solution not requiring extra packages.
import numpy as np import matplotlib.pyplot as plt def grayify_cmap(cmap): """Return a grayscale version of the colormap""" cmap = plt.cm.get_cmap(cmap) colors = cmap(np.arange(cmap.N)) # convert RGBA to perceived greyscale luminance # cf. http://alienryderflex.com/hsp.html RGB_weight = [0.299, 0.587, 0.114] luminance = np.sqrt(np.dot(colors[:, :3] ** 2, RGB_weight)) colors[:, :3] = luminance[:, np.newaxis] return cmap.from_list(cmap.name + "_grayscale", colors, cmap.N) if __name__ == "__main__": xdata = np.arange(100) ydata = xdata.copy() X, Y = np.meshgrid(xdata, ydata) phase = 1.80*(X+Y) plt.figure() plt.imshow(phase) plt.title('Unacceptable colormap') plt.colorbar() plt.figure() plt.imshow(phase, cmap=grayify_cmap('RdGy')) plt.title('Barely acceptable ugly colormap') plt.colorbar() plt.show()