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Learning Gabor filters with scikit-learn and ICA or k-means
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import numpy as np | |
import matplotlib.pyplot as plt | |
from sklearn.datasets import fetch_mldata | |
from sklearn.decomposition import FastICA, PCA | |
from sklearn.cluster import KMeans | |
# fetch natural image patches | |
image_patches = fetch_mldata("natural scenes data") | |
X = image_patches.data | |
# 1000 patches a 32x32 | |
# not so much data, reshape to 16000 patches a 8x8 | |
X = X.reshape(1000, 4, 8, 4, 8) | |
X = np.rollaxis(X, 3, 2).reshape(-1, 8 * 8) | |
# perform ICA | |
ica = FastICA(n_components=49) | |
ica.fit(X) | |
filters_ica = ica.unmixing_matrix_ | |
# zero mean "by hand" so that inverse transform | |
# doesn't mess up the filters | |
X -= X.mean(axis=0) | |
# perform whitening | |
pca = PCA(n_components=49, whiten=True) | |
X_white = pca.fit_transform(X) | |
kmeans = KMeans(k=49, n_init=1).fit(X_white) | |
filters_kmeans = pca.inverse_transform(kmeans.cluster_centers_) | |
filters_pca = pca.components_ | |
titles = ["ICA", "PCA", "k-means"] | |
filters = [filters_ica, filters_pca, filters_kmeans] | |
for T, F in zip(titles, filters): | |
plt.figure(T) | |
for i, f in enumerate(F): | |
plt.subplot(7, 7, i + 1) | |
plt.imshow(f.reshape(8, 8), cmap="gray") | |
plt.axis("off") | |
plt.show() |
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