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this is the opencv code:

int main()  
IplImage* image=cvLoadImage("C:\\boat.png",CV_LOAD_IMAGE_GRAYSCALE);

cout<<"1-norm is : "<<cvNorm(image,NULL,CV_L1)<<endl;  

cout<<"2-norm is : "<<cvNorm(image,NULL,CV_L2)<<endl;  //the result is 6000+,it's too
big and unnormal!

return 0;

The l2 norm result is so big,that is 6000+,however, the matlab answer is 229 as below,

This is the matlab code:

>> norm(image)

ans =



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1 Answer 1

On the contrary, 6000+ norm for a grayscale image looks normal. Grayscale image values range from 0 to 255, so depending on the size of the image, even for images as small as 64x64, you may get L2=sqrt(sum(image.^2)) (not an actual code) in thousands, tens of thousands or more.

More interesting is why norm(image) in Matlab is so low. norm does not accept uint8 vectors, so somewhere between loading image and calculating its norm there is a data conversion that may also have a side effect of changing absolute values in image, and subsequently its norm.

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THX!I have used im2double(image) in matlab, so the image values range from 0 to 1. – freeboy1015 Sep 22 '12 at 1:31

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