Minimizing mean square error for a body tracking problem
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Seeking big-picture suggestions on how to tackle the following problem: I have measurements of the positions of 4 marker locations on a 3D body, and I know how to write the rotation/translation matrix given the body's unknown yaw, pitch, roll, and x,y,z translation. I want to solve for the yaw, pitch, etc. which minimizes the error of [markers' estimated separations] - [known marker separations]. I could loop through the expected range of yaw, pitch, etc., calculate the resulting marker separation, and choose the combination with smallest distance from their known separation. But is there a way to perform the minimization in 1 step? I assume this would be faster, especially since this will be inside a time loop.
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Anton Semechko
am 5 Jun. 2012
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If point correspondences are known, do the following:
1) solve for translation, by comparing the centroids of the landmark sets before and after the transformation 2) normalize for translation and find rotation matrix using SVD (<http://kwon3d.com/theory/jkinem/rotmat.html>)
If you are interested in finding the Euler angles, you can use the 't2x' which can be downloaded from here: http://www.mathworks.com/matlabcentral/fileexchange/956-3d-rotations.
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K E
am 5 Jun. 2012
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