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Is there any way to slice a scanned image of a text into a number of images containing one word each? ie if we scan a page with 'n' words thent the script should produce 'n' seperate images.

(using python)

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up vote 3 down vote accepted

This is not an area I'm very familer with but, assuming you are not able to use OCR (because your text is illegible or something), I would (probably naively) try something like:

  • load image data into memory
  • split the pixel data into rows of the image
  • find each "row" that has only white pixels all the way across it: note these as "white rows"
  • for each "column" in each "white row" try to find the white gaps
  • take all your new x,y co-ords and cut up the image.

Actually, this sounded like a fun exercise so I gave it a go with the pyPNG module:

import png
import sys


def find_rows(pixels,width, height):
    "find all rows that are purely white"
    white_rows = []
    is_white = False
    for y in range(height):
        if sum(sum( pixels[(y*4*width)+x*4+p] for p in range(3)) for x in range(width)) >= width*3*254:
            if not is_white:
            is_white = True
            is_white = False
    return white_rows

def find_words_in_image(blob, tolerance=30):    
    n = 0
    r = png.Reader(bytes=blob)
    (width,height,pixels_rows,meta) = r.asRGBA8()
    pixels = []
    for row in pixels_rows:
        for px in row:
    # find each horizontal line
    white_rows = find_rows(pixels,width,height)
    # for each line try to find a white vertical gap
    for i,y in enumerate(white_rows):
        if y >= len(white_rows):
        y2 = white_rows[i+1]
        height_of_row = y2 - y
        is_white = False
        white_cols = []
        last_black = -100
        for x in range(width-4):
            s = y*4*width+x*4
            if sum(pixels[s+y3*4*width] + pixels[s+y3*4*width+1] + pixels[s+y3*4*width+2] for y3 in range(height_of_row)) >= height_of_row*3*240:
                if not is_white:
                    if len(white_cols)>0 and x-last_black < KERNING:
                is_white = True
                is_white = False
                last_black = x
        # now we have a list of x,y co-oords for all the words on this row
        for j,x in enumerate(white_cols):
            if j >= len(white_cols)-1:
            wordpx = []
            new_width = white_cols[j+1]-x
            new_height = y2-y
            x_offset = x*4
            for h in range(new_height):
                y_offset = (y+h)*4*width
                start = x_offset+y_offset
                wordpx.append( pixels[start:start+(new_width*4)] )
            n += 1
            with open('word%s.png' % n, 'w') as f:
                w = png.Writer(
    return n

if __name__ == "__main__":
    # USAGE: python png2words.py yourpic.png
    # OUTPUT: [word1.png...word2.png...wordN.png]
    n = find_words_in_image( open(sys.argv[1]).read() )
    print "found %s words" % n
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wow thats a neat readable. well commented code , thank you very much, this exactly is what i was looking for. I must learn more and try to write codes like this ... thank you once again!! :) – Arackna Mar 10 '11 at 2:18
Infinity: Mark his answer as accepted then (the check mark below the up/down arrows). It'll give you 2 rep, and will let others know that it worked. – Wilduck Mar 10 '11 at 2:32
Wilduck: Done !!:) – Arackna Mar 10 '11 at 2:39

You need to look at Blob Detection, this is an image processing technique. Also, this question has nothing to do with python, but searching for python blob detection libraries might help.

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I'll read that :), seems to be interesting, thank you!! – Arackna Mar 10 '11 at 2:08

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