Ejemplo n.º 1
0
 def plotCloudImage(self):
     """Generate some additional information and plots about the cloud image, if desired."""
     from pImagePlots import PImagePlots
     import pylab
     im = PImagePlots()
     im.setImage(self.cloudimage)
     im.showImage(copy=True)
     im.hanningFilter()
     im.calcAll()
     im.showPsd2d()
     im.showAcovf2d()
     im.showAcovf1d()
     im.showSf(linear=True)
     #pylab.show()
     return
Ejemplo n.º 2
0
 # And also try to make an image with the same (final) pixel scale, but that will be created (first)
 #  larger and then scaled down, to avoid introducing artifacts from the ACovF1d being truncated. 
 final_imsize = 1500 # pixels desired in final image
 final_rad_fov = 1.75*numpy.sqrt(2) # degrees
 final_pixscale = 2*final_rad_fov / float(final_imsize)
 # Start with larger image 
 pixscale = final_pixscale
 rad_fov = final_rad_fov
 imsize = int(2*rad_fov / pixscale)
 if (imsize%2 != 0):
     imsize = imsize + 1
 xr = xsf / pixscale # xr = in pixels, over range that want to simulate
 print 'Image: Rad_fov', rad_fov, 'Imsize', imsize, 'Pixscale', pixscale, 'deg/pix', '(', pixscale*60.*60., 'arcsec/pix)'    
 im = PImagePlots(shift=True, nx=imsize, ny=imsize)
 im.makeImageFromSf(sfx=xr, sf=SF)
 im.showAcovf1d()
 im.showPsd2dI()
 # Trim image to desired final size
 trim = round((imsize - final_imsize)/2.0)
 print 'Trimming about %d pixels from each side' %(trim)
 image = im.imageI[trim:trim+final_imsize, trim:trim+final_imsize]
 image = rescaleImage(image.real, sigma_goal, kappa)
 imsize = len(image)
 pixscale = pixscale
 rad_fov = imsize/2.0*pixscale
 print 'Image After Trimming: Rad_fov', rad_fov, 'Imsize', imsize, 'Pixscale', pixscale, 'deg/pix', '(', pixscale*60.*60., 'arcsec/pix)'    
 im.setImage(image.real)
 imageStats(im.image)
 im.showImage(copy=True)
 im.hanningFilter()
 im.calcAll()
Ejemplo n.º 3
0
def inversion():
    """Generate some example images & invert them to reconstruct the original image."""
    im = TestImage(shift=True, nx=1000, ny=1000)
    #im.addEllipseGrid(gridX=200, gridY=100, semiX=50, semiY=25, value=1)
    im.addLines(width=20, spacing=200, value=1, angle=45)
    im.addSin(scale=300)
    im.hanningFilter()
    im.zeroPad()
    #cmap = pylab.cm.gray_r
    cmap = None
    clims = im.showImage(cmap=cmap)
    pylab.savefig('invert_image.%s' %(figformat), format='%s' %(figformat))
    im.calcAll(min_npix=1, min_dr=1)
    # Invert from ACovF and show perfect reconstruction.
    im.invertAcovf2d()
    im.invertPsd2d(useI=True)
    im.invertFft(useI=True)
    im.showImageI(clims=clims, cmap=cmap)
    pylab.savefig('invert_acovf2d_good.%s' %(figformat), format='%s' %(figformat))
    # Invert from ACovF 2d without phases
    im.invertAcovf2d(usePhasespec=False, seed=42)
    im.invertPsd2d(useI=True)
    im.invertFft(useI=True)    
    im.showImageI(clims=clims, cmap=cmap)
    pylab.savefig('invert_acovf2d_nophases.%s' %(figformat), format='%s' %(figformat))
    # Invert from ACovF 1d with phases
    im.invertAcovf1d(phasespec=im.phasespec)
    im.invertAcovf2d(useI=True)
    im.invertPsd2d(useI=True)
    im.invertFft(useI=True)
    im.showImageI(clims=clims, cmap=cmap)
    pylab.savefig('invert_acovf1d_phases.%s' %(figformat), format='%s' %(figformat))
    # Invert from ACovF 1d without phases
    im.invertAcovf1d(seed=42)
    im.invertAcovf2d(useI=True)
    im.invertPsd2d(useI=True)
    im.invertFft(useI=True)
    im.showImageI(clims=clims, cmap=cmap)
    pylab.savefig('invert_acovf1d_nophases.%s' %(figformat), format='%s' %(figformat))
    # Recalculate 1-d PSD and ACovF from this last reconstructed image (ACovF1d no phases)
    im2 = PImagePlots()
    im2.setImage(im.imageI)
    im2.calcAll(min_npix=1, min_dr=1)
    legendlabels=['Reconstructed', 'Original']
    im2.showPsd1d(comparison=im, legendlabels=legendlabels)
    pylab.savefig('invert_recalc_ACovF_Psd1d.%s' %(figformat), format='%s' %(figformat))
    im2.showAcovf1d(comparison=im, legendlabels=legendlabels)
    pylab.savefig('invert_recalc_ACovF_Acovf1d.%s' %(figformat), format='%s' %(figformat))
    # Invert from PSD and show perfect reconstruction.                          
    im.invertPsd2d()
    im.invertFft(useI=True)
    im.showImageI(clims=clims, cmap=cmap)
    pylab.savefig('invert_psd2d_good.%s' %(figformat), format='%s' %(figformat))
    # Invert from PSD 2d without phases
    im.invertPsd2d(usePhasespec=False, seed=42)
    im.invertFft(useI=True)
    im.showImageI(clims=clims, cmap=cmap)
    pylab.savefig('invert_psd2d_nophases.%s' %(figformat), format='%s' %(figformat))
    # Invert from PSD 1d with phases                                   
    im.invertPsd1d(phasespec=im.phasespec)
    im.invertPsd2d(useI=True)
    im.invertFft(useI=True)
    im.showImageI(clims=clims, cmap=cmap)
    pylab.savefig('invert_psd1d_phases.%s' %(figformat), format='%s' %(figformat))
    # Invert from PSD 1d without phases                                             
    im.invertPsd1d(seed=42)
    im.invertPsd2d(useI=True)
    im.invertFft(useI=True)
    im.showImageI(clims=clims, cmap=cmap)
    pylab.savefig('invert_psd1d_nophases.%s' %(figformat), format='%s' %(figformat))
    # Recalculate 1-d PSD and ACovF from this last reconstructed image (PSD1d no phases)
    im2 = PImagePlots()
    im2.setImage(im.imageI)
    im2.calcAll(min_npix=1, min_dr=1)
    im2.showPsd1d(comparison=im, legendlabels=legendlabels)
    pylab.savefig('invert_recalc_PSD_Psd1d.%s' %(figformat), format='%s' %(figformat))
    im2.showAcovf1d(comparison=im, legendlabels=legendlabels)
    pylab.savefig('invert_recalc_PSD_Acovf1d.%s' %(figformat), format='%s' %(figformat))
    pylab.close()
    return