Accurate denition of similarity measure is a key component
in image registration. Most commonly used intensitybased
similarity measures rely on the assumptions of independence
and stationarity of the intensities from pixel to
pixel. Such measures cannot capture the complex interactions
among the pixel intensities, and often result in less satisfactory
registration performances, especially in the presence
of nonstationary intensity distortions. We propose a
novel similarity measure that accounts for intensity nonstationarities
and complex spatially-varying intensity distortions.
We derive the similarity measure by analytically
solving for the intensity correction eld and its adaptive
regularization. The nal measure can be interpreted as one
that favors a registration with minimum compression complexity
of the residual image between the two registered images.
This measure produces accurate registration results
on both articial and real-world problems that we have
tes...
Andriy Myronenko, Xubo B. Song