Ejemplo n.º 1
0
def erosion_filtration(img):
    ef = ErosionFiltration(n_iterations=None, n_jobs=N_JOBS)
    diagrams_erosion = ef.fit_transformp(img)
    # BC = BettiCurve()
    # X_betti_curves = BC.fit_transform(diagrams_Erosion)
    # BC.plot(X_betti_curves).show()
    return diagrams_erosion
Ejemplo n.º 2
0
def pipeline1(images):
    """
    Binarizer --> Height Filtration, Erosion Filtration, Dilation Filtration --> Cubical Persistance --> Amp, PE
    return: Array of pipelines
    """
    # Pipeline parameters
    bin_thresholds = [np.percentile(images[0], 93) / np.max(images[0])]
    directions = [
        np.array([np.cos(t), np.sin(t)])
        for t in np.linspace(0, 2 * np.pi, 8)[:-1]
    ]
    n_iterations = np.linspace(1, 21, 5).astype(int).tolist()

    features = [('bottleneck', Amplitude(metric='bottleneck', n_jobs=-1)),
                ('PE', PersistenceEntropy(n_jobs=-1))]

    # Make filtrations
    binned_steps = [('binarizer_{}'.format(t), Binarizer(threshold=t,
                                                         n_jobs=-1))
                    for t in bin_thresholds]
    filtrations = [('height_{}'.format(d),
                    HeightFiltration(direction=d, n_jobs=-1))
                   for d in directions]
    filtrations += [('erosion_{}'.format(i),
                     ErosionFiltration(n_iterations=i, n_jobs=-1))
                    for i in n_iterations]
    filtrations += [('dilation_{}'.format(i),
                     DilationFiltration(n_iterations=i, n_jobs=-1))
                    for i in n_iterations]

    # Make pipelines
    cubical_lower = ('cubical', CubicalPersistence(n_jobs=-1))

    partial_pipeline_steps = []
    partial_pipeline_steps.append([cubical_lower])
    partial_pipeline_steps.append([('inverter', Inverter(n_jobs=-1)),
                                   cubical_lower])

    for b, f in itertools.product(binned_steps, filtrations):
        partial_pipeline_steps.append(
            [b, f, ('cubical', CubicalPersistence(n_jobs=-1))])

    feature_pipelines = []
    for s, f in itertools.product(partial_pipeline_steps, features):
        feature_pipelines.append(Pipeline(s + [f]))

    return feature_pipelines
Ejemplo n.º 3
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def test_erosion_fit_transform_plot():
    ErosionFiltration().fit_transform_plot(images_2D, sample=0)
Ejemplo n.º 4
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def test_erosion_transform(n_iterations, images, expected):
    erosion = ErosionFiltration(n_iterations=n_iterations)

    assert_almost_equal(erosion.fit_transform(images), expected)
Ejemplo n.º 5
0
def test_erosion_errors():
    n_iterations = 'a'
    erosion = ErosionFiltration(n_iterations=n_iterations)
    with pytest.raises(TypeError):
        erosion.fit(images_2D)
Ejemplo n.º 6
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def test_erosion_not_fitted():
    erosion = ErosionFiltration()
    with pytest.raises(NotFittedError):
        erosion.transform(images_2D)
Ejemplo n.º 7
0
pio.renderers.default = 'plotly_mimetype'

images_2D = np.stack([np.ones((3, 4)),
                      np.concatenate([np.ones((3, 2)), np.zeros((3, 2))],
                                     axis=1),
                      np.zeros((3, 4))], axis=0)

images_3D = np.stack([np.ones((3, 4, 2)),
                      np.concatenate([np.ones((3, 2, 2)),
                                      np.zeros((3, 2, 2))], axis=1),
                      np.zeros((3, 4, 2))], axis=0)


@pytest.mark.parametrize("transformer",
                         [HeightFiltration(), RadialFiltration(),
                          DilationFiltration(), ErosionFiltration(),
                          SignedDistanceFiltration(), DensityFiltration()])
def test_invalid_input_shape(transformer):
    X = np.ones((1, 1, 1, 1, 1))
    with pytest.raises(ValueError, match="Input of `fit`"):
        transformer.fit(X)


def test_height_not_fitted():
    height = HeightFiltration()
    with pytest.raises(NotFittedError):
        height.transform(images_2D)


def test_height_errors():
    direction = 'a'