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I'm trying to read in a series of .bmp images and do some linear contrast adjustment based on a tip I got. These images are small, 112x112, and I want to them to come out looking exactly the same except contrast-adjusted. I've tried doing it with matplotlib, but no matter what I do I get white space around the border of the images. Here's the code I'm using:

# Open image and convert to array
oldImage =
imageArray = np.array(oldImage)

# Preprocessing
vrange = stats.mquantiles(imageArray.flatten(),prob=[0.01,0.99])

# Plot and save
fig = plt.figure()
plt.savefig(f[:-4] + "_adjusted.png", bbox_inches='tight')

Any tips for how to remove the padding? I've done some googling but nothing I've found has worked so far.

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related:… – tcaswell Mar 2 '13 at 23:39
up vote 2 down vote accepted

You can do thresholding without matplotlib:

import os
import Image
import numpy as np
import scipy.stats.mstats as mstats

f = os.path.expanduser('~/tmp/image.png')
name, ext = os.path.splitext(f)
out = name+"_adjusted.png"

oldImage ='L')
imageArray = np.array(oldImage)

vmin, vmax = mstats.mquantiles(imageArray.flatten(), prob=[0.01,0.99])

np.clip(imageArray, vmin, vmax, out=imageArray)
imageArray = (imageArray-vmin)*255/(vmax-vmin)
img = Image.fromarray(imageArray.astype('uint8'), 'L')

This way, you do not have to define a figure size in inches, and a DPI and so forth. You just convert the PIL Image to a numpy array, do some math, and convert back to a PIL Image.

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add the following line before plt.savefig():

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