Gaussian Primitives for Deformable Image Registration
Deformable Image Registration (DIR) is essential for aligning medical images that exhibit anatomical variations, facilitating applications such as disease tracking and radiotherapy planning. While classical iterative methods and deep learning approaches have achieved success in DIR, they are often h...
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Zusammenfassung: | Deformable Image Registration (DIR) is essential for aligning medical images
that exhibit anatomical variations, facilitating applications such as disease
tracking and radiotherapy planning. While classical iterative methods and deep
learning approaches have achieved success in DIR, they are often hindered by
computational inefficiency or poor generalization. In this paper, we introduce
GaussianDIR, a novel, case-specific optimization DIR method inspired by 3D
Gaussian splatting. In general, GaussianDIR represents image deformations using
a sparse set of mobile and flexible Gaussian primitives, each defined by a
center position, covariance, and local rigid transformation. This compact and
explicit representation reduces noise and computational overhead while
improving interpretability. Furthermore, the movement of individual voxel is
derived via blending the local rigid transformation of the neighboring Gaussian
primitives. By this, GaussianDIR captures both global smoothness and local
rigidity as well as reduces the computational burden. To address varying levels
of deformation complexity, GaussianDIR also integrates an adaptive density
control mechanism that dynamically adjusts the density of Gaussian primitives.
Additionally, we employ multi-scale Gaussian primitives to capture both coarse
and fine deformations, reducing optimization to local minima. Experimental
results on brain MRI, lung CT, and cardiac MRI datasets demonstrate that
GaussianDIR outperforms existing DIR methods in both accuracy and efficiency,
highlighting its potential for clinical applications. Finally, as a
training-free approach, it challenges the stereotype that iterative methods are
inherently slow and transcend the limitations of poor generalization. |
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DOI: | 10.48550/arxiv.2406.03394 |