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I'm working with Python 2.7.5 and OpenCV. I have a test image and I want to find it's most similar image in an array of images. I have written a function using OpenCV that will give me the total number of similarity points. The more similar points I have the more similar the images are. Unfortunately this is a rather time consuming function so I would like to parallelize my code to make it faster.

#img is the image that I am trying to find the most number of similar pointswith
maxSimilarPts = 0;

#testImages is a list of testImages
for testImage in testImages:
    #getNumSimilarPts returns the number of similar points between two images
    similarPts = getNumSimilarPts(img, testImage) 

    if similarPts > maxSimilarPts:
        maxSimilarPts = similarPts

How can I do this in parallel with python? Any help would be greatly appreciated.

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You may want to have a look at this post. It has nothing to do with OpenCV. But it has a lot of discussion on mutithreading with python. – Yuchen Zhong May 10 '14 at 21:14

The following is a (untested) parallel version of the original code. It runs 5 workers in parallel. Each one takes an image from the input queue, calculates the similary, then puts the value and image onto an output queue. When all the workers are done, there are no more images, then the parent process prints the (similarity, imageID) of the most similar image.

# adapted from Raymond Hettinger
# http://stackoverflow.com/questions/11920490/how-do-i-run-os-walk-in-parallel-in-python/23779787#23779787

from multiprocessing.pool import Pool
from multiprocessing import JoinableQueue as Queue
import os, sys


def parallel_worker():
    while True:
        testImage = imageq.get()
        similarPts = getNumSimilarPts(img, testImage) 
        similarq.put( [similarPts, testImage] )
        imageq.task_done()

similarq = Queue()
imageq = Queue()
for testImage in testImages:
    imageq.put(testImage)

pool = Pool(5)
for i in range(5):
    pool.apply_async(parallel_worker)

imageq.join()
print 'Done'

print max(similarq)
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