def mul_wavelet_dec(imArray):
    shape = imArray.shape
    fig, axes = plt.subplots(2, 4, figsize=[14, 8])
    max_lev = 3  # how many levels of decomposition to draw
    label_levels = 3  # how many levels to explicitly label on the plots
    for level in range(0, max_lev + 1):
        if level == 0:
            # show the original image before decomposition
            axes[0, 0].set_axis_off()
            axes[1, 0].imshow(imArray, cmap=plt.cm.gray)
            axes[1, 0].set_title('Image')
            axes[1, 0].set_axis_off()
            continue

        # plot subband boundaries of a standard DWT basis
        draw_2d_wp_basis(shape,
                         wavedec2_keys(level),
                         ax=axes[0, level],
                         label_levels=label_levels)
        axes[0, level].set_title('{} level\ndecomposition'.format(level))

        # compute the 2D DWT
        c = pywt.wavedec2(imArray, 'haar', mode='periodization', level=level)
        # normalize each coefficient array independently for better visibility
        c[0] /= np.abs(c[0]).max()
        for detail_level in range(level):
            c[detail_level +
              1] = [d / np.abs(d).max() for d in c[detail_level + 1]]
        # show the normalized coefficients
        arr, slices = pywt.coeffs_to_array(c)
        axes[1, level].imshow(arr, cmap=plt.cm.gray)
        axes[1, level].set_title('Coefficients\n({} level)'.format(level))
        axes[1, level].set_axis_off()
Пример #2
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def dw_show(img):
    """
    Code taken from https://pywavelets.readthedocs.io/ to show what wavelet decomposition does.
    :param img:
    :return:
    """
    shape = img.shape
    max_lev = 3  # how many levels of decomposition to draw
    label_levels = 3  # how many levels to explicitly label on the plots
    fig, axes = plt.subplots(2, 4, figsize=[14, 8])
    for level in range(0, max_lev + 1):
        if level == 0:
            # show the original image before decomposition
            axes[0, 0].set_axis_off()
            axes[1, 0].imshow(img, cmap=plt.cm.gray)
            axes[1, 0].set_title('Image')
            axes[1, 0].set_axis_off()
            continue
        # plot subband boundaries of a standard DWT basis
        draw_2d_wp_basis(shape,
                         wavedec2_keys(level),
                         ax=axes[0, level],
                         label_levels=label_levels)
        axes[0, level].set_title('{} level\ndecomposition'.format(level))
        # compute the 2D DWT
        c = pywt.wavedec2(img, 'db2', mode='periodization', level=level)
        print(level, np.array(c[0]).shape)
        # normalize each coefficient array independently for better visibility
        c[0] /= np.abs(c[0]).max()
        for detail_level in range(level):
            c[detail_level +
              1] = [d / np.abs(d).max() for d in c[detail_level + 1]]
        # show the normalized coefficients
        arr, slices = pywt.coeffs_to_array(c)
        axes[1, level].imshow(arr, cmap=plt.cm.gray)
        axes[1, level].set_title('Coefficients\n({} level)'.format(level))
        axes[1, level].set_axis_off()
    plt.tight_layout()
    plt.show()
Пример #3
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x = pywt.data.camera()
shape = x.shape

max_lev = 2
label_levels = 2

fig, axes = plt.subplots(2, 3, figsize=[14, 8])
for level in range(0, max_lev + 1):
    if level == 0:
        axes[0, 0].set_axis_off()
        axes[1, 0].imshow(x, cmap=plt.cm.gray)
        axes[1, 0].set_title('Image')
        axes[1, 0].set_axis_off()
        continue
    draw_2d_wp_basis(shape,
                     wavedec2_keys(level),
                     ax=axes[0, level],
                     label_levels=label_levels)
    axes[0, level].set_title('{} level\ndecomposition'.format(level))
    c = pywt.wavedec2(x, 'db2', mode='periodization', level=level)
    c[0] /= np.abs(c[0]).max()
    for detail_level in range(level):
        c[detail_level +
          1] = [d / np.abs(d).max() for d in c[detail_level + 1]]
    arr, slices = pywt.coeffs_to_array(c)
    axes[1, level].imshow(arr, cmap=plt.cm.gray)
    axes[1, level].set_title('Coefficients\n({} level)'.format(level))
    axes[1, level].set_axis_off()

plt.tight_layout()
plt.show()
Пример #4
0
max_lev = 3       # how many levels of decomposition to draw
label_levels = 3  # how many levels to explicitly label on the plots

fig, axes = plt.subplots(2, 4, figsize=[14, 8])
for level in range(0, max_lev + 1):
    if level == 0:
        # show the original image before decomposition
        axes[0, 0].set_axis_off()
        axes[1, 0].imshow(x, cmap=plt.cm.gray)
        axes[1, 0].set_title('Image')
        axes[1, 0].set_axis_off()
        continue

    # plot subband boundaries of a standard DWT basis
    draw_2d_wp_basis(shape, wavedec2_keys(level), ax=axes[0, level],
                     label_levels=label_levels)
    axes[0, level].set_title('{} level\ndecomposition'.format(level))

    # compute the 2D DWT
    c = pywt.wavedec2(x, 'db2', mode='periodization', level=level)
    # normalize each coefficient array independently for better visibility
    c[0] /= np.abs(c[0]).max()
    for detail_level in range(level):
        c[detail_level + 1] = [d/np.abs(d).max() for d in c[detail_level + 1]]
    # show the normalized coefficients
    arr, slices = pywt.coeffs_to_array(c)
    axes[1, level].imshow(arr, cmap=plt.cm.gray)
    axes[1, level].set_title('Coefficients\n({} level)'.format(level))
    axes[1, level].set_axis_off()

plt.tight_layout()
Пример #5
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                             draw_2d_fswavedecn_basis)

shape = (512, 512)

max_lev = 4       # how many levels of decomposition to draw
label_levels = 2  # how many levels to explicitly label on the plots

if False:
    fig, axes = plt.subplots(1, 4, figsize=[16, 4])
    axes = axes.ravel()
else:
    fig, axes = plt.subplots(2, 2, figsize=[8, 8])
    axes = axes.ravel()

# plot a 5-level standard DWT basis
draw_2d_wp_basis(shape, wavedec2_keys(max_lev), ax=axes[0],
                 label_levels=label_levels)
axes[0].set_title('wavedec2 ({} level)'.format(max_lev))

# plot for the fully separable case
draw_2d_fswavedecn_basis(shape, max_lev, ax=axes[1], label_levels=label_levels)
axes[1].set_title('fswavedecn ({} level)'.format(max_lev))

# get all keys corresponding to a full wavelet packet decomposition
wp_keys = list(product(['a', 'd', 'h', 'v'], repeat=max_lev))
draw_2d_wp_basis(shape, wp_keys, ax=axes[2])
axes[2].set_title('wavelet packet\n(full: {} level)'.format(max_lev))

# plot an example of a custom wavelet packet basis
keys = ['aaaa', 'aaad', 'aaah', 'aaav', 'aad', 'aah', 'aava', 'aavd',
        'aavh', 'aavv', 'ad', 'ah', 'ava', 'avd', 'avh', 'avv', 'd', 'h',
        'vaa', 'vad', 'vah', 'vav', 'vd', 'vh', 'vv']
Пример #6
0
shape = (512, 512)

max_lev = 4  # how many levels of decomposition to draw
label_levels = 2  # how many levels to explicitly label on the plots

if False:
    fig, axes = plt.subplots(1, 4, figsize=[16, 4])
    axes = axes.ravel()
else:
    fig, axes = plt.subplots(2, 2, figsize=[8, 8])
    axes = axes.ravel()

# plot a 5-level standard DWT basis
draw_2d_wp_basis(shape,
                 wavedec2_keys(max_lev),
                 ax=axes[0],
                 label_levels=label_levels)
axes[0].set_title('wavedec2 ({} level)'.format(max_lev))

# plot for the fully separable case
draw_2d_fswavedecn_basis(shape, max_lev, ax=axes[1], label_levels=label_levels)
axes[1].set_title('fswavedecn ({} level)'.format(max_lev))

# get all keys corresponding to a full wavelet packet decomposition
wp_keys = list(product(['a', 'd', 'h', 'v'], repeat=max_lev))
draw_2d_wp_basis(shape, wp_keys, ax=axes[2])
axes[2].set_title('wavelet packet\n(full: {} level)'.format(max_lev))

# plot an example of a custom wavelet packet basis
keys = [
    'aaaa', 'aaad', 'aaah', 'aaav', 'aad', 'aah', 'aava', 'aavd', 'aavh',