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I have a historical time sequence of seafloor images scanned from film that need registration.

from pylab import *
import cv2
import urllib



enter image description here

I want to use the black region on the left of each image to do the registration, since that region was inside the camera and should be fixed in time. So I just need to compute the affine transformation between the black regions.

I determined these regions by thresholding and finding the largest contour:

def find_biggest_contour(gray,threshold=40):
    # threshold a grayscale image 
    ret,thresh = cv2.threshold(gray,threshold,255,1)
    # find the contours
    contours,h = cv2.findContours(thresh,mode=cv2.RETR_LIST,method=cv2.CHAIN_APPROX_NONE)
    # measure the perimeter
    perim = [cv2.arcLength(cnt,True) for cnt in contours]
    # find contour with largest perimeter
    return contours[i]



imshow(gray1,cmap=cm.gray, alpha=0.5);plot(x1,y1,'b-')
imshow(gray2,cmap=cm.gray, alpha=0.5);plot(x2,y2,'g-')

enter image description here

The blue is the longest contour from the 1st frame, the green is the longest contour from the 2nd frame.

What is the best way to determine the rotation and offset between the blue and green contours?

I only want to use the right side of the contours in some region surrounding the step, something like the region between the arrows.

Of course, if there is a better way to register these images, I'd love to hear it. I already tried a standard feature matching approach on the raw images, and it didn't work well enough.

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Do you need only vector between green and blue contour or vector, angle of rotation and scale of scaling ? –  cyriel Apr 13 '13 at 1:52
offset and rotation only (no scaling) –  Rich Signell Apr 15 '13 at 10:22

4 Answers 4

up vote 5 down vote accepted

Following Shambool's suggested approach, here's what I've come up with. I used a Ramer-Douglas-Peucker algorithm to simplify the contour in the region of interest and identified the two turning points. I was going to use the two turning points to get my three unknowns (xoffset, yoffset and angle of rotation), but the 2nd turning point is a bit too far toward the right because RDP simplified away the smoother curve in this region. So instead I used the angle of the line segment leading up to the 1st turning point. Differencing this angle between image1 and image2 gives me the rotation angle. I'm still not completely happy with this solution. It worked well enough for these two images, but I'm not sure it will work well on the entire image sequence. We'll see.

It would really be better to fit the contour to the known shape of the black border.

# select region of interest from largest contour 
ind1=where((x1>190.) & (y1>200.) & (y1<900.))[0]
ind2=where((x2>190.) & (y2>200.) & (y2<900.))[0]
imshow(gray1,cmap=cm.gray, alpha=0.5);plot(x1[ind1],y1[ind1],'b-')
imshow(gray2,cmap=cm.gray, alpha=0.5);plot(x2[ind2],y2[ind2],'g-')

enter image description here

def angle(x1,y1):
    #  Returns angle of each segment along an (x,y) track
    return array([math.atan2(y,x) for (y,x) in zip(diff(y1),diff(x1))])

def simplify(x,y, tolerance=40, min_angle = 60.*pi/180.): 
    Use the Ramer-Douglas-Peucker algorithm to simplify the path
    Python implementation: https://github.com/sebleier/RDP/
    from RDP import rdp   
    simplified = array(rdp(points.tolist(), tolerance))
    sx, sy = simplified.T

    # Select the index of the points with the greatest theta
    # Large theta is associated with greatest change in direction.
    idx = where(theta>min_angle)[0]+1
    return sx,sy,idx

sx1,sy1,i1 = simplify(x1[ind1],y1[ind1])
sx2,sy2,i2 = simplify(x2[ind2],y2[ind2])
fig = plt.figure(figsize=(10,6))
ax =fig.add_subplot(111)

ax.plot(x1, y1, 'b-', x2, y2, 'g-',label='original path')
ax.plot(sx1, sy1, 'ko-', sx2, sy2, 'ko-',lw=2, label='simplified path')
ax.plot(sx1[i1], sy1[i1], 'ro', sx2[i2], sy2[i2], 'ro', 
    markersize = 10, label='turning points')

enter image description here

# determine x,y offset between 1st turning points, and 
# angle from difference in slopes of line segments approaching 1st turning point
xoff = sx2[i2[0]] - sx1[i1[0]]
yoff = sy2[i2[0]] - sy1[i1[0]]
iseg1 = [i1[0]-1, i1[0]]
iseg2 = [i2[0]-1, i2[0]]
ang1 = angle(sx1[iseg1], sy1[iseg1])
ang2 = angle(sx2[iseg2], sy2[iseg2])
ang = -(ang2[0] - ang1[0])
print xoff, yoff, ang*180.*pi

-28 14 5.07775871644

# 2x3 affine matrix M
print M

[[  9.99959685e-01   8.97932821e-03  -2.80000000e+01]
 [ -8.97932821e-03   9.99959685e-01   1.40000000e+01]]

# warp 2nd image into coordinate frame of 1st
Minv = cv2.invertAffineTransform(M)
gray2b = cv2.warpAffine(gray2,Minv,shape(gray2.T))

imshow(gray1,cmap=cm.gray, alpha=0.5);plot(x1[ind1],y1[ind1],'b-')
imshow(gray2b,cmap=cm.gray, alpha=0.5);
title('image1 and transformed image2 overlain with 50% transparency');

enter image description here

share|improve this answer
What is the Stackoverflow etiquette here? Do I select Shambool's suggestion, since he inspired the solution that I ended up using? Or do I select my solution because it contains code, and it's what I actually used? –  Rich Signell Apr 18 '13 at 11:36

Good question.

One approach is to represent contours as 2d point clouds and then do registration. More simple and clear code in Matlab that can give you affine transform.

And more complex C++ code(using VXL lib) with python and matlab wrapper included. Or you can use some modificated ICP(iterative closest point) algorithm that is robust to noise and can handle affine transform.

Also your contours seems to be not very accurate so it can be a problem.

Another approach is to use some kind of registration that use pixel values. Matlab code (I think it's using some kind of minimizer+ crosscorrelation metric) Also maybe there is some kind of optical flow registration(or some other kind) that is used in medical imaging.

Also you can use point features as SIFT(SURF).

You can try it quick in FIJI(ImageJ) also this link.

  1. Open 2 images
  2. Plugins->feature extraction-> sift (or other)
  3. Set expected transformation to affine
  4. Look at estimated transformation model [3,3] homography matrix in ImageJ log. If it works good then you can implement it in python using OpenCV or maybe using Jython with ImageJ.

And it will be better if you post original images and describe all conditions (it seems that image is changing between frames)

share|improve this answer
I did post the original images. The images are indeed changing because the seafloor conditions change in time. That's why I want to use the black region, which should not be changing, to register the images. –  Rich Signell Apr 17 '13 at 19:20

If you don't want to find the homography between the two images and want to find the affine transformation you have three unknowns, rotation angle (R), and the displacement in x and y (X,Y). Therefore minimum of two points (with two known values for each) are needed to find the unknowns. Two points should be matched between the two images or two lines, each has two known values, the intercept and slope. If you go with the point matching approach, the further the points are from each other the more robust is the found transform to noise (this is very simple if you remember error propagation rules).

In the two point matching method:

  1. find two points (A and B) in the first image I1 and their corresponding points (A',B') in the second image I2
  2. find the middle point between A and B: C, and the middle point between A' and B': C'
  3. the difference C and C' (C-C') gives the translation between the images (X and Y)
  4. using the dot product of C-A and C'-A' you can find the rotation angle (R)

To detect robust points, I would find the the points along the side of counter you have found with highest absolute value of the second derivative (Hessian) and then try to match them. Since you mentioned this is a video footage you can easily make the assumption the transformation between each two frames is small to reject the outliers.

share|improve this answer
This seems most promising. I'm working on getting those two points. –  Rich Signell Apr 17 '13 at 20:38
I'm too busy today to help with coding. There are several easy methods (due to the simple transform between the images) to get rid of mismatches/outliers once you have candidate matched points, so an approach is that instead of trying hard to find the best matches, you can find a set of candidate matches and then refine them till you get the best two matches. Probably tomorrow i will be able to give hand with coding in case you don't find a robust solution by then. –  fireant Apr 17 '13 at 21:29
I mostly followed your suggestion and posted the code. Still not completely happy with the way I determined my 3 unknowns. If you have a better idea, please let me know. –  Rich Signell Apr 18 '13 at 11:38
can you upload the video on youtube or somewhere so we can have a look at it? –  fireant Apr 18 '13 at 15:07
do you want a video of the original images, or using the above code to register them? –  Rich Signell Apr 18 '13 at 15:22

You can represent these contours with their respective ellipses. These ellipses are centered on the centroid of the contour and they are oriented towards the main density axis. You can compare the centroids and the orientation angle.

1) Fill the contours => drawContours with thickness=CV_FILLED

2) Find moments => cvMoments()

3) And use them.

Centroid: { x, y } = {M10/M00, M01/M00 }

Orientation (theta): enter image description here

EDIT: I customized the sample code from legacy (enteringblobdetection.cpp) for your case.

            /* Image moments */
            double      M00,X,Y,XX,YY,XY;
            CvMoments   m;
            CvRect      r = ((CvContour*)cnt)->rect;
            CvMat       mat;
            cvMoments( cvGetSubRect(pImgFG,&mat,r), &m, 0 );
            M00 = cvGetSpatialMoment( &m, 0, 0 );
            X = cvGetSpatialMoment( &m, 1, 0 )/M00;
            Y = cvGetSpatialMoment( &m, 0, 1 )/M00;
            XX = (cvGetSpatialMoment( &m, 2, 0 )/M00) - X*X;
            YY = (cvGetSpatialMoment( &m, 0, 2 )/M00) - Y*Y;  
            XY = (cvGetSpatialMoment( &m, 1, 1 )/M00) - X*Y; 

            /* Contour description */
            CvPoint myCentroid(r.x+(float)X,r.y+(float)Y);
            double myTheta =  atan( 2*XY/(XX-YY) );

Also, check this with OpenCV 2.0 examples.

share|improve this answer
This is a cool idea, but I don't it will work in this case because the the moments will be affected by that stuff at the top and left side of the contour that I don't want to use. –  Rich Signell Apr 17 '13 at 20:37
You could crop the objects. –  William Apr 18 '13 at 6:31
I thought of that too, but it seemed to me in order for this approach to give the right answer, the objects would need to be cropped with a rotated and translated bounding box, which would require knowing the answer already. Isn't that right? –  Rich Signell Apr 18 '13 at 10:56

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