Towards Positive Jacobian: Learn to Postprocess Diffeomorphic Image Registration with Matrix Exponential
Soumyadeep Pal, Matthew Tennant, Nilanjan Ray

TL;DR
This paper introduces a differentiable postprocessing layer that enforces positive Jacobians in deformable image registration fields, ensuring more diffeomorphic transformations without degrading registration accuracy.
Contribution
A novel postprocessing layer using matrix exponential and Poisson reconstruction to improve the diffeomorphic properties of registration fields in deep learning models.
Findings
Reduces non-positive Jacobians significantly
Maintains registration accuracy
Applicable as a plug-in to existing methods
Abstract
We present a postprocessing layer for deformable image registration to make a registration field more diffeomorphic by encouraging Jacobians of the transformation to be positive. Diffeomorphic image registration is important for medical imaging studies because of the properties like invertibility, smoothness of the transformation, and topology preservation/non-folding of the grid. Violation of these properties can lead to destruction of the neighbourhood and the connectivity of anatomical structures during image registration. Most of the recent deep learning methods do not explicitly address this folding problem and try to solve it with a smoothness regularization on the registration field. In this paper, we propose a differentiable layer, which takes any registration field as its input, computes exponential of the Jacobian matrices of the input and reconstructs a new registration field…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · Medical Image Segmentation Techniques · Advanced Neuroimaging Techniques and Applications
