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I read from this thread - Get most accurate image using OpenCV - that I can use variance to measure which of the input images are the sharpest. I can't seem to find a tutorial for this. I am very new to openCV. Right now, my code scans images from a folder and stores them using vector

for (int ct = 0; ct < images.size() ; ct++) {
    //should i put the cvAvgSdv function here?

Thank you for any help!

Update: I called this fxn: cvAvgSdv(images[ct],&scalar_mean,&std_dev); and it gave me an error: No suitable conversion function from cv::Mat to const cvArr * exists.

Can I use the fxn without converting the Mat to iplImage? If not, what's the easiest way to convert the Mat?

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you could try cvAvgSdv(images[ct]->imageData,&scalar_mean,&std_dev); –  slggamer Jan 9 '13 at 6:15
you could try cvCreateImage, this will help you to convert mat to iplImage, sorry for last answer. –  slggamer Jan 9 '13 at 6:21

1 Answer 1

up vote 1 down vote accepted

yes, it is. you should calc like this:

CvScalar mean, std_dev; 
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Thanks! Should I put that in a loop? Do I get a float as a result? –  Masochist Jan 9 '13 at 3:33
yes, you put them in the loop to calc each image. The results is a CvScalar which is include 4 channals. You should compare each of them. –  slggamer Jan 9 '13 at 5:19
Thank you! I am updating the question as I have another problem. Will you please check it one last time? Thnx @slggamer –  Masochist Jan 9 '13 at 5:48

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