What does it mean to get the (MSE) mean error squared for 2 images?

The MSE is the average of the channel error squared.

What does that mean in comparing two same size images?

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It's one of many possible measures of how different they are. –  Roger Rowland Nov 28 '13 at 19:59

For two pictures A, B you take the square of the difference between every pixel in A and the corresponding pixel in B, sum that up and divide it by the number of pixels.

Pseudo code:

``````sum = 0.0
for(x = 0; x < width;++x){
for(y = 0; y < height; ++y){
difference = (A[x,y] - B[x,y])
sum = sum + difference*difference
}
}
mse = sum /(width*height)
printf("The mean square error is %f\n",mse)
``````
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You can have a look at following article: http://en.wikipedia.org/wiki/Mean_squared_error#Definition_and_basic_properties. There "Yi" represents the true values and "hat_Yi" represents the values with which we want to compare the true values.

So, in your case you can consider one image as the reference image and the second image as the image whose pixel values you would like to compare with the first one....and you do so by calculating the MSE which tells you "how different/similar is the second image to the first one"

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Let's us assume you have two points in a 2-dimensional space A(`x1,y1`) and B(`x2,y2`), the distance between the two points is calculated as `sqrt((x1-x2)^2+(y1-y2)^2)`. If the the two points are in 3-dimensional space, it can be calculated as `sqrt((x1-x2)^2+(y1-y2)^2+(z1-z2)^2)`. For two points in n-dimensional space, the distance formulae can be extended as `sqrt(sumacrossdimensions(valueofAindim-valueofBindim)^2)` (since latex is not allowed).

Now, the image with n pixels can be viewed as a point in n-dimensional space. The distance between two images with n pixels can be thoughts as the distance between 2 points in n-dimensional space. This distance is called `MSE`.

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there is no square root in mean squared error –  user151496 Jun 15 '14 at 13:11