FEA-Bench / testbed /matplotlib__matplotlib /galleries /examples /specialty_plots /topographic_hillshading.py
| """ | |
| ======================= | |
| Topographic hillshading | |
| ======================= | |
| Demonstrates the visual effect of varying blend mode and vertical exaggeration | |
| on "hillshaded" plots. | |
| Note that the "overlay" and "soft" blend modes work well for complex surfaces | |
| such as this example, while the default "hsv" blend mode works best for smooth | |
| surfaces such as many mathematical functions. | |
| In most cases, hillshading is used purely for visual purposes, and *dx*/*dy* | |
| can be safely ignored. In that case, you can tweak *vert_exag* (vertical | |
| exaggeration) by trial and error to give the desired visual effect. However, | |
| this example demonstrates how to use the *dx* and *dy* keyword arguments to | |
| ensure that the *vert_exag* parameter is the true vertical exaggeration. | |
| """ | |
| import matplotlib.pyplot as plt | |
| import numpy as np | |
| from matplotlib.cbook import get_sample_data | |
| from matplotlib.colors import LightSource | |
| dem = get_sample_data('jacksboro_fault_dem.npz') | |
| z = dem['elevation'] | |
| # -- Optional dx and dy for accurate vertical exaggeration -------------------- | |
| # If you need topographically accurate vertical exaggeration, or you don't want | |
| # to guess at what *vert_exag* should be, you'll need to specify the cellsize | |
| # of the grid (i.e. the *dx* and *dy* parameters). Otherwise, any *vert_exag* | |
| # value you specify will be relative to the grid spacing of your input data | |
| # (in other words, *dx* and *dy* default to 1.0, and *vert_exag* is calculated | |
| # relative to those parameters). Similarly, *dx* and *dy* are assumed to be in | |
| # the same units as your input z-values. Therefore, we'll need to convert the | |
| # given dx and dy from decimal degrees to meters. | |
| dx, dy = dem['dx'], dem['dy'] | |
| dy = 111200 * dy | |
| dx = 111200 * dx * np.cos(np.radians(dem['ymin'])) | |
| # ----------------------------------------------------------------------------- | |
| # Shade from the northwest, with the sun 45 degrees from horizontal | |
| ls = LightSource(azdeg=315, altdeg=45) | |
| cmap = plt.cm.gist_earth | |
| fig, axs = plt.subplots(nrows=4, ncols=3, figsize=(8, 9)) | |
| plt.setp(axs.flat, xticks=[], yticks=[]) | |
| # Vary vertical exaggeration and blend mode and plot all combinations | |
| for col, ve in zip(axs.T, [0.1, 1, 10]): | |
| # Show the hillshade intensity image in the first row | |
| col[0].imshow(ls.hillshade(z, vert_exag=ve, dx=dx, dy=dy), cmap='gray') | |
| # Place hillshaded plots with different blend modes in the rest of the rows | |
| for ax, mode in zip(col[1:], ['hsv', 'overlay', 'soft']): | |
| rgb = ls.shade(z, cmap=cmap, blend_mode=mode, | |
| vert_exag=ve, dx=dx, dy=dy) | |
| ax.imshow(rgb) | |
| # Label rows and columns | |
| for ax, ve in zip(axs[0], [0.1, 1, 10]): | |
| ax.set_title(f'{ve}', size=18) | |
| for ax, mode in zip(axs[:, 0], ['Hillshade', 'hsv', 'overlay', 'soft']): | |
| ax.set_ylabel(mode, size=18) | |
| # Group labels... | |
| axs[0, 1].annotate('Vertical Exaggeration', (0.5, 1), xytext=(0, 30), | |
| textcoords='offset points', xycoords='axes fraction', | |
| ha='center', va='bottom', size=20) | |
| axs[2, 0].annotate('Blend Mode', (0, 0.5), xytext=(-30, 0), | |
| textcoords='offset points', xycoords='axes fraction', | |
| ha='right', va='center', size=20, rotation=90) | |
| fig.subplots_adjust(bottom=0.05, right=0.95) | |
| plt.show() | |