I've been working on a script, and I need it to basically:
- Make the image greyscale (or bitonal, I will play with both to see which one works better).
- Process each individual column and create a net intensity value for each column.
- Spit the results into an ordered list.
There is a really easy way to do this with ImageMagick (although you need a few Linux utilities to process the output text), but I'm not really seeing how to do this with Python and PIL.
Here's what I have so far:
from PIL import Image image_file = 'test.tiff' image = Image.open(image_file).convert('L') histo = image.histogram() histo_string = '' for i in histo: histo_string += str(i) + "\n" print(histo_string)
This outputs something (I am looking to graph the results), but it looks nothing like the ImageMagick output. I'm using this to detect the seam and content of a scanned book.
Thanks to anyone who helps!
I've got a (nasty-looking) solution that works, for now:
from PIL import Image import numpy def smoothListGaussian(list,degree=5): window=degree*2-1 weight=numpy.array([1.0]*window) weightGauss= for i in range(window): i=i-degree+1 frac=i/float(window) gauss=1/(numpy.exp((4*(frac))**2)) weightGauss.append(gauss) weight=numpy.array(weightGauss)*weight smoothed=[0.0]*(len(list)-window) for i in range(len(smoothed)): smoothed[i]=sum(numpy.array(list[i:i+window])*weight)/sum(weight) return smoothed image_file = 'verypurple.jpg' out_file = 'out.tiff' image = Image.open(image_file).convert('1') image2 = image.load() image.save(out_file) intensities =  for x in xrange(image.size): intensities.append() for y in xrange(image.size): intensities[x].append(image2[x, y] ) plot =  for x in xrange(image.size): plot.append(0) for y in xrange(image.size): plot[x] += intensities[x][y] plot = smoothListGaussian(plot, 10) plot_str = '' for x in range(len(plot)): plot_str += str(plot[x]) + "\n" print(plot_str)