Digital Image-based Elasto-tomography (DIET) is an emerging method for noninvasive
breast cancer screening. Effective clinical application of the DIET system
requires highly accurate motion tracking of the surface of an actuated breast with
minimal computation. Normalized cross correlation (NCC) is the most robust
correlation measure for determining similarity between points in two or more images
providing an accurate foundation for motion tracking. However, even using fast
fourier transform (FFT) methods, it is too computationally intense for rapidly
managing several large images. A significantly faster method of calculating the NCC
is presented that uses rectangular approximations in place of randomly placed
landmark points or the natural marks on the breast. These approximations serve as an
optimal set of basis functions that are automatically detected, dramatically reducing
computational requirements. To prove the concept, the method is shown to be 37-150
times faster than the FFT-based NCC with the same accuracy for simulated data, a
visco-elastic breast phantom experiment and human skin. Clinically, this approach
enables thousands of randomly placed points to be rapidly and accurately tracked
providing high resolution for the DIET syste
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