diff options
Diffstat (limited to 'examples/barycenters/plot_free_support_barycenter.py')
-rw-r--r-- | examples/barycenters/plot_free_support_barycenter.py | 55 |
1 files changed, 28 insertions, 27 deletions
diff --git a/examples/barycenters/plot_free_support_barycenter.py b/examples/barycenters/plot_free_support_barycenter.py index 2d68a39..226dfeb 100644 --- a/examples/barycenters/plot_free_support_barycenter.py +++ b/examples/barycenters/plot_free_support_barycenter.py @@ -9,61 +9,62 @@ sum of diracs. """ -# Author: Vivien Seguy <vivien.seguy@iip.ist.i.kyoto-u.ac.jp> +# Authors: Vivien Seguy <vivien.seguy@iip.ist.i.kyoto-u.ac.jp> +# RĂ©mi Flamary <remi.flamary@polytechnique.edu> # # License: MIT License +# sphinx_gallery_thumbnail_number = 2 + import numpy as np import matplotlib.pylab as pl import ot -############################################################################## +# %% # Generate data # ------------- -N = 3 +N = 2 d = 2 -measures_locations = [] -measures_weights = [] - -for i in range(N): - n_i = np.random.randint(low=1, high=20) # nb samples +I1 = pl.imread('../../data/redcross.png').astype(np.float64)[::4, ::4, 2] +I2 = pl.imread('../../data/duck.png').astype(np.float64)[::4, ::4, 2] - mu_i = np.random.normal(0., 4., (d,)) # Gaussian mean +sz = I2.shape[0] +XX, YY = np.meshgrid(np.arange(sz), np.arange(sz)) - A_i = np.random.rand(d, d) - cov_i = np.dot(A_i, A_i.transpose()) # Gaussian covariance matrix +x1 = np.stack((XX[I1 == 0], YY[I1 == 0]), 1) * 1.0 +x2 = np.stack((XX[I2 == 0] + 80, -YY[I2 == 0] + 32), 1) * 1.0 +x3 = np.stack((XX[I2 == 0], -YY[I2 == 0] + 32), 1) * 1.0 - x_i = ot.datasets.make_2D_samples_gauss(n_i, mu_i, cov_i) # Dirac locations - b_i = np.random.uniform(0., 1., (n_i,)) - b_i = b_i / np.sum(b_i) # Dirac weights +measures_locations = [x1, x2] +measures_weights = [ot.unif(x1.shape[0]), ot.unif(x2.shape[0])] - measures_locations.append(x_i) - measures_weights.append(b_i) +pl.figure(1, (12, 4)) +pl.scatter(x1[:, 0], x1[:, 1], alpha=0.5) +pl.scatter(x2[:, 0], x2[:, 1], alpha=0.5) +pl.title('Distributions') -############################################################################## +# %% # Compute free support barycenter # ------------------------------- -k = 10 # number of Diracs of the barycenter +k = 200 # number of Diracs of the barycenter X_init = np.random.normal(0., 1., (k, d)) # initial Dirac locations b = np.ones((k,)) / k # weights of the barycenter (it will not be optimized, only the locations are optimized) X = ot.lp.free_support_barycenter(measures_locations, measures_weights, X_init, b) - -############################################################################## -# Plot data +# %% +# Plot the barycenter # --------- -pl.figure(1) -for (x_i, b_i) in zip(measures_locations, measures_weights): - color = np.random.randint(low=1, high=10 * N) - pl.scatter(x_i[:, 0], x_i[:, 1], s=b_i * 1000, label='input measure') -pl.scatter(X[:, 0], X[:, 1], s=b * 1000, c='black', marker='^', label='2-Wasserstein barycenter') +pl.figure(2, (8, 3)) +pl.scatter(x1[:, 0], x1[:, 1], alpha=0.5) +pl.scatter(x2[:, 0], x2[:, 1], alpha=0.5) +pl.scatter(X[:, 0], X[:, 1], s=b * 1000, marker='s', label='2-Wasserstein barycenter') pl.title('Data measures and their barycenter') -pl.legend(loc=0) +pl.legend(loc="lower right") pl.show() |