Long-range medical image registration through generalized mutual information (GMI): toward a fully automatic volumetric alignment
Vinicius Pavanelli Vianna, Luiz Otavio Murta Jr

TL;DR
This paper introduces a generalized mutual information (GMI) method for medical image registration, significantly extending the registration range and reliability for affine transformations in volumetric images.
Contribution
The paper proposes and evaluates a novel GMI function that improves the registration range and accuracy, overcoming local maxima issues in traditional mutual information methods.
Findings
GMI provides smooth isosurfaces guiding to global maxima.
Registration range extended to ±150mm translations and ±180° rotations.
Achieved over 99% success rate in simulated and real MRI image registration.
Abstract
Image registration is a key operation in medical image processing, allowing a plethora of applications. Mutual information (MI) is consolidated as a robust similarity metric often used for medical image registration. Although MI provides a robust medical image registration, it usually fails when the needed image transform is too big due to MI local maxima traps. In this paper, we propose and evaluate a generalized parametric MI as an affine registration cost function. We assessed the generalized MI (GMI) functions for separable affine transforms and exhaustively evaluated the GMI mathematical image seeking the maximum registration range through a gradient descent simulation. We also employed Monte Carlo simulation essays for testing translation registering of randomized T1 versus T2 images. GMI functions showed to have smooth isosurfaces driving the algorithm to the global maxima.…
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Taxonomy
TopicsMedical Image Segmentation Techniques · Image Retrieval and Classification Techniques · AI in cancer detection
