# Checking image feature alignment

I have written my own software in C# for performing microscopy imaging. See this screenshot.

The images that can be seen there are of the same sample but recorded through physically different detectors. It s crucial for my experiments that these images be exactly aligned. I thought the easiest would be to somehow blend/substract the two bitmaps but this doesn't give me good results. Therefore I am looking for a better way to do this.

It might be useful to point out that the images exist as arrays of intensities in memory and are converted to bitmaps for on-screen painting to my self written image control.

I would greatly appreciate any help!

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Please define what you mean by "exactly aligned". What is your definition of exactly aligned? –  Paul Sonier Jun 8 '09 at 23:03
See below for a further description! –  Kris Jun 9 '09 at 15:25
What do you mean by "exactly aligned"? You mean you need to shift them horizontally and vertically so that they are aligned spatially, or do you mean something else by "aligned". They look aligned already, no? –  endolith Jul 24 '09 at 0:14

If the images are the same orientation and same size, but slightly shifted vertically or horizontally, can you use cross-correlation to find the best alignment?

If you know that features in the yellow channel need to line up, for instance, just feed the yellow channels into the cross-correlation algorithm, and then find the peak in the result. The peak will occur at the offset where the two images line up best.

It will work even with noisy images, and I suspect it will work even for images that are significantly different, like in your screenshot.

MATLAB example: Registering an Image Using Normalized Cross-Correlation

Wikipedia calls this "phase correlation" and also describes making it scale- and rotation-invariant:

The method can be extended to determine rotation and scaling differences between two images by first converting the images to log-polar coordinates. Due to properties of the Fourier transform, the rotation and scaling parameters can be determined in a manner invariant to translation.

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I got around solving this some time ago... Since I only need to verify that two images from two detectors are perfectly aligned and since I do not have to try and align them if they are not I solved it like this:

1) Use the Aforge Framework and apply a grayscale filter to both images. This will average the RGB values for each pixel. 2) On one image apply a ChannelFilter to retain only the red channel. 3) On the other image, apply a ChannelFilter to retain only the green channel. 4) Add Both images.

Here are the filters I used, I leave it to the reader to apply them if needed (it's trivial and there are examples on the Aforge website).

``````AForge.Imaging.Filters.IFilter filterR = new AForge.Imaging.Filters.ChannelFiltering(new AForge.IntRange( 0, 255 ), new AForge.IntRange( 0, 0 ), new AForge.IntRange( 0, 0 ));
AForge.Imaging.Filters.IFilter filterG = new AForge.Imaging.Filters.ChannelFiltering(new AForge.IntRange( 0, 0 ), new AForge.IntRange( 0, 255 ), new AForge.IntRange( 0, 0 ));
AForge.Imaging.Filters.GrayscaleRMY FilterGray= new AForge.Imaging.Filters.GrayscaleRMY();
``````

When significant features are present in both images I want to check, they will show up in Yellow thus doing exactly what I need.

Thanks for all the input!

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Thanks for posting your solution, you just helped me out a great deal. –  JMK Dec 18 '12 at 11:49

So the detectors are different, so the alignment will be slightly wrong, in that pixel (256,512) in image 1 could be a feature represented by pixel (257,513) in image 2. Is that the problem? What about magnification? If the detector is different, couldn't the magnification be slightly different as well?

If you mean something like the above, and judging from your screenshot, it shouldn't be too difficult to find the centers of the 4 or 5 areas of highest intensity - normalize the data and go through the entire image looking for blocks of 9 neighboring pixels with the highest average intensity. Note the center pixel of four or five of these features for each image. Then calculate the distance between each set of pixels between the two images.

If the distance is 0 for all sets, the two images should be in alignment. If the distance is constant, all you have to do is move one image that distance. If the distance varies, you will need to resize one image until it is constant, and then slide it to match up the features. Then you can average the intensity values of the two images, since they should be in alignment.

That's how I would start, anyway.

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See below for a further description! –  Kris Jun 9 '09 at 15:24

If the images are generated from different sensors then the problem will be difficult, in general. Particularly for you since one of your images seems to have a lot of noise.

Assuming there's no warping or rotation in he sensors, then I would suggest that you first normalize the intensities of each image. Then find the shift that minimizes the error between the images. The error can be euclidean (i.e the total sum of squared differences of each pixel). That, to me at least, is the definition of alignment.

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See below for a further description! –  Kris Jun 9 '09 at 15:23