[mngseg] add gaussian / coherent PS segementation tool

This commit is contained in:
Noe Brucy
2021-06-25 09:21:41 +02:00
parent 0b5cbd3a95
commit a493839f4b
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from pywavan import powspec, nb_scale
from astropy.io import fits
import numpy as np
from matplotlib import pyplot as plt
import aplpy
def make_images(im, wt, M, meanim, label):
""" show the Gaussian and coherent part of the image """
total = np.sum(wt[:M, :, :], axis=0).real + meanim
coherent = np.sum(wt[M : 2 * M, :, :], axis=0).real + meanim
Gaussian = np.sum(wt[2 * M : 3 * M, :, :], axis=0).real + meanim
fig_all = plt.figure(1, figsize=(16, 4))
# original image
fig = aplpy.FITSFigure(fits.PrimaryHDU(im), figure=fig_all, subplot=(1, 4, 1))
fig.show_colorscale(cmap="cubehelix")
fig.add_colorbar()
fig.axis_labels.hide()
fig.tick_labels.hide()
fig.set_title("Original")
# wavelet image total (should be same as original image)
fig = aplpy.FITSFigure(fits.PrimaryHDU(total), figure=fig_all, subplot=(1, 4, 2))
fig.show_colorscale(cmap="cubehelix")
fig.add_colorbar()
fig.axis_labels.hide()
fig.tick_labels.hide()
fig.set_title("wavelet")
# gaussian component
fig = aplpy.FITSFigure(fits.PrimaryHDU(Gaussian), figure=fig_all, subplot=(1, 4, 3))
fig.show_colorscale(cmap="cubehelix")
fig.add_colorbar()
fig.axis_labels.hide()
fig.tick_labels.hide()
fig.set_title("Gaussian")
# coherent component
fig = aplpy.FITSFigure(fits.PrimaryHDU(coherent), figure=fig_all, subplot=(1, 4, 4))
fig.show_colorscale(cmap="cubehelix")
fig.add_colorbar()
fig.axis_labels.hide()
fig.tick_labels.hide()
fig.set_title("Coherent")
plt.tight_layout()
plt.savefig("reconstructed_image_{}.png".format(label))
plt.close()
def scale_images(thingy, M, label, scale=14, mode="wt"):
""" visualize wt or S11a for a specific scale. Remark S11a = wt^2"""
total = thingy[scale, :, :].real
coherent = thingy[M + scale, :, :].real
Gaussian = thingy[2 * M + scale, :, :].real
# make images
fig_all = plt.figure(1, figsize=(12, 4))
# wavelet image on scale
fig = aplpy.FITSFigure(fits.PrimaryHDU(total), figure=fig_all, subplot=(1, 3, 1))
limit = max(np.max(total), abs(np.min(total)))
fig.show_colorscale(cmap="PiYG", vmin=-limit, vmax=limit)
fig.add_colorbar()
fig.axis_labels.hide()
fig.tick_labels.hide()
fig.set_title("wavelet")
# gaussian component
fig = aplpy.FITSFigure(fits.PrimaryHDU(Gaussian), figure=fig_all, subplot=(1, 3, 2))
limit = max(np.max(Gaussian), abs(np.min(Gaussian)))
fig.show_colorscale(cmap="PiYG", vmin=-limit, vmax=limit)
fig.add_colorbar()
fig.axis_labels.hide()
fig.tick_labels.hide()
fig.set_title("Gaussian")
# coherent component
fig = aplpy.FITSFigure(fits.PrimaryHDU(coherent), figure=fig_all, subplot=(1, 3, 3))
limit = max(np.max(coherent), abs(np.min(coherent)))
fig.show_colorscale(cmap="PiYG", vmin=-limit, vmax=limit)
fig.add_colorbar()
fig.axis_labels.hide()
fig.tick_labels.hide()
fig.set_title("Coherent")
plt.tight_layout()
plt.savefig("imag_{}_scale{}_{}.png".format(mode, scale, label))
plt.close()
def plot_each_scale(S11a, wav_k, q, label, coherent=False, reso=1):
""" plot histogram at a certain scale """
nsize = len(S11a[0, 0, :])
M = len(q)
for scl in range(0, M):
plt.figure(figsize=(6, 6))
# determine bins (large scales should have less bins)
nbins = np.int(nsize ** 2.0 * (wav_k[scl] * reso) ** 2.0)
nbins = max(9, nbins)
nbins = min(500, nbins)
# calc histogram gaussian component w.r.t. its mean value (easier to compare)
intermit = (S11a[2 * M + scl, :, :]) / np.mean(S11a[2 * M + scl, :, :])
histo, edges = np.histogram(intermit, density=True, bins=nbins)
plt.hist(
(edges[:-1] + edges[1:]) / 2.0,
bins=edges,
weights=histo,
alpha=0.5,
label="Gaussian",
color="red",
)
# calc histogram coherent component
if coherent and (np.mean(S11a[M + scl, :, :]) > 0):
intermit_C = (S11a[M + scl, :, :]) / np.mean(S11a[M + scl, :, :])
histo_C, edges_C = np.histogram(intermit_C, density=True, bins=nbins)
plt.hist(
(edges_C[:-1] + edges_C[1:]) / 2.0,
bins=edges_C,
weights=histo_C,
alpha=0.5,
label="coherent",
color="blue",
)
else:
histo_C = []
# plot mean
plt.plot([1, 1], [0, 5])
plt.xlabel(r"$I/\langle I \rangle$")
plt.ylabel("PDF")
plt.title(
"scale {}, k= {}, l={} pc".format(
scl, np.str(wav_k[scl])[:7], 1000.0 / nsize / wav_k[scl]
)
)
plt.legend()
# avoid first bin dominating the range
gauss_max = 0
if len(histo) > 1:
gauss_max = max(histo[1:])
coh_max = 0
if coherent & len(histo_C) > 1:
coh_max = max(histo_C[1:])
if max(gauss_max, coh_max) > 0:
plt.ylim(0, max(gauss_max, coh_max))
plt.xlim(0, 4)
plt.ylim(0, 1.0)
plt.tight_layout()
plt.savefig("S11a_scale{}_q_{}_{}.png".format(scl, q[scl], label))
plt.close()
def plot_components_power_spectrum(
tab_k, wav_k, spec_k, S1a, label="", fit_min=7, fit_max=15, nsize=1024, lvlmin=8
):
# plot power spectra
plt.figure(figsize=(5, 5))
plt.plot(tab_k, spec_k, color="black", label="Fourier PS", linewidth=1.5)
plt.plot(wav_k, S1a[0, :], "s", color="black", label="Wavelet PS", markersize=6)
plt.plot(wav_k, S1a[1, :], "D", color="blue", label="Coherent PS", markersize=4)
plt.plot(wav_k, S1a[2, :], "^", color="red", label="Gaussian PS", markersize=5)
scl_min = fit_min
scl_max = fit_max + 1
# power law fit to gaussian component
coefw, cov = np.polyfit(
np.log(wav_k[scl_min:scl_max]), np.log(S1a[2, scl_min:scl_max]), deg=1, cov=True
)
yfitw = np.exp(coefw[1]) * wav_k[scl_min:scl_max] ** coefw[0]
plt.plot(wav_k[scl_min:scl_max], yfitw, "-", color=("red"), linewidth=4, alpha=0.5)
print("Gaussian Power law", coefw[0])
# Coherent power law fit
coefcw, cov = np.polyfit(
np.log(wav_k[scl_min:scl_max]), np.log(S1a[1, scl_min:scl_max]), deg=1, cov=True
)
yfitcw = np.exp(coefcw[1]) * wav_k[scl_min:scl_max] ** coefcw[0]
plt.plot(wav_k[scl_min:scl_max], yfitcw, "-", color="blue", linewidth=4, alpha=0.5)
print("Coherent Power law", coefcw[0])
# Fourier power law fit
limit = np.where((tab_k >= wav_k[fit_min]) & (tab_k <= wav_k[fit_max]))
coef, cov = np.polyfit(np.log(tab_k[limit]), np.log(spec_k[limit]), deg=1, cov=True)
yfit = np.exp(coef[1]) * tab_k[limit] ** coef[0]
plt.plot(tab_k[limit], yfit, "-", color="black", linewidth=2, alpha=0.5)
print("Fourier Power law", coef[0])
# show resolution limits
# Gaussian part not accurate below levelmin due to the way AMR works
sim_res_eff = 2 ** lvlmin / 10
sim_res_lvl_min = 2 ** lvlmin
plt.plot(
[sim_res_lvl_min / nsize, sim_res_lvl_min / nsize],
[1e-6, 1e8],
color="green",
ls="--",
label="dx(levelmin)",
)
plt.plot(
[sim_res_eff / nsize, sim_res_eff / nsize],
[1e-6, 1e8],
color="green",
ls="-",
label="dx(levelmin) x 10",
)
plt.xscale("log")
plt.yscale("log")
plt.xlabel(r"$k$ (pixel$^{-1}$)")
plt.ylabel(r"$P(k)$")
plt.ylim(1e-6, 1e8)
plt.legend(loc="lower left")
plt.savefig("powerspectrum_{}.png".format(label), bbox_inches="tight")
plt.close()
def save_results(wt, S11a, wav_k, S1a, q, label):
np.save("wav_k_{}.npy".format(label), wav_k)
np.save("S1a_{}.npy".format(label), S1a)
np.save("wt_{}.npy".format(label), wt)
np.save("S11a_{}.npy".format(label), S11a)
np.save("q_{}.npy".format(label), q)
def load_results(label):
wav_k = np.load("wav_k_{}.npy".format(label))
S1a = np.load("S1a_{}.npy".format(label))
wt = np.load("wt_{}.npy".format(label))
S11a = np.load("S11a_{}.npy".format(label))
q = np.load("q_{}.npy".format(label))
return wav_k, S1a, wt, S11a, q
def analyse_sim(im):
""" Do the MnGseg analysis """
meanim = np.mean(im)
imzm = im - meanim
M = nb_scale(im.shape)
fit_min = 5 # minimal scale for fitting the power spectrum slope
fit_max = 11 # max scale
label = "final" # label to identify parameter setup
# after a lot of trials I found a fixed q=2 is a good value
q = [2.0] * nb_scale(imzm.shape)
# wt, S11a, wav_k, S1a, q = fan_trans(imzm, reso=1, q=q, qdyn=False)
# alternatively you can let pywavan determine it automatically by setting skewl
# q=[3.0]*nb_scale(imzm.shape)
# wt, S11a, wav_k, S1a, q = fan_trans(imzm, reso=1, q=q, qdyn=True, skewl=0.4)
# print(q)
# save results because it can be long to calculate (especially if qdyn=True). Remark that wt and S11a are quite big
# save_results(wt, S11a, wav_k, S1a, q, label)
wav_k, S1a, wt, S11a, q = load_results(label)
# make images of the Gaussian and coherent part
make_images(im, wt, M, meanim, label)
# (optional) make the image for each scale
for s in range(fit_min, fit_max + 1):
scale_images(wt, M, label, scale=s)
# (optional) plot the histogram for each scale
plot_each_scale(S11a, wav_k, q, label, coherent=True)
# calc Fourier power spectrum for comparison
tab_k, spec_k = powspec(imzm, reso=1)
# plot the powerspectrum for each component and fit the slope
plot_components_power_spectrum(tab_k, wav_k, spec_k, S1a, label, fit_min, fit_max)