I am using numpy to calculate camera images, which would be represented by unsigned integer grayvalues. I would like to limit the floating point accuracy, in order to speed up the computation. So as an example, say I'm calculating the image formed by the intensity distribution of a gaussian beam:
import numpy as np import matplotlib.pyplot as plt nx = 1000 ny = 1000 px = 5e-3 x = np.linspace(0, nx * px) y = np.linspace(0, ny * px) X, Y = np.meshgrid(x, y) xc = x[-1] / 2 yc = y[-1] / 2 sigma = 1 gauss_profile = np.exp(-(np.square(X - xc) + np.square(Y - yc)) / sigma**2) print(gauss_profile.dtype) bitdepth = 12 gauss_profile *= 2**bitdepth - 1 camera_image = gauss_profile.astype(np.uint16) #%% plot image fig = plt.figure() ax = fig.add_subplot(111) grey_cmap = plt.get_cmap('gray') im = ax.imshow(camera_image, cmap=grey_cmap, extent=(0, nx * px, 0, ny * px)) plt.xlabel('x (mm)') plt.ylabel('y (mm)') plt.colorbar(im)
Is there any way to have gauss_profile not be calculated with float64 precision, but rather a minimum resolution which is enough to get the desired gray value?
So far, I tried initializing the array before and passing it to the
out keyword in the np.exp call, but this resulted in a TypeError or ValueError depending on the dtype. Is there any other way to accelerate this computation?