New multimodal similarity measure for image registration via modeling local functional dependence with linear combination of learned basis functions
Journal:
arXiv
Published Date:
Mar 7, 2025
Abstract
The deformable registration of images of different modalities, essential in
many medical imaging applications, remains challenging. The main challenge is
developing a robust measure for image overlap despite the compared images
capturing different aspects of the underlying tissue. Here, we explore
similarity metrics based on functional dependence between intensity values of
registered images. Although functional dependence is too restrictive on the
global scale, earlier work has shown competitive performance in deformable
registration when such measures are applied over small enough contexts. We
confirm this finding and further develop the idea by modeling local functional
dependence via the linear basis function model with the basis functions learned
jointly with the deformation. The measure can be implemented via convolutions,
making it efficient to compute on GPUs. We release the method as an easy-to-use
tool and show good performance on three datasets compared to well-established
baseline and earlier functional dependence-based methods.