Intraoperative 2D/3D Image Registration via Differentiable X-ray Rendering
Surgical decisions are informed by aligning rapid portable 2D intraoperative images (e.g., X-rays) to a high-fidelity 3D preoperative reference scan (e.g., CT). 2D/3D image registration often fails in practice: conventional optimization methods are prohibitively slow and susceptible to local minima,...
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Zusammenfassung: | Surgical decisions are informed by aligning rapid portable 2D intraoperative
images (e.g., X-rays) to a high-fidelity 3D preoperative reference scan (e.g.,
CT). 2D/3D image registration often fails in practice: conventional
optimization methods are prohibitively slow and susceptible to local minima,
while neural networks trained on small datasets fail on new patients or require
impractical landmark supervision. We present DiffPose, a self-supervised
approach that leverages patient-specific simulation and differentiable
physics-based rendering to achieve accurate 2D/3D registration without relying
on manually labeled data. Preoperatively, a CNN is trained to regress the pose
of a randomly oriented synthetic X-ray rendered from the preoperative CT. The
CNN then initializes rapid intraoperative test-time optimization that uses the
differentiable X-ray renderer to refine the solution. Our work further proposes
several geometrically principled methods for sampling camera poses from
$\mathbf{SE}(3)$, for sparse differentiable rendering, and for driving
registration in the tangent space $\mathfrak{se}(3)$ with geodesic and
multiscale locality-sensitive losses. DiffPose achieves sub-millimeter accuracy
across surgical datasets at intraoperative speeds, improving upon existing
unsupervised methods by an order of magnitude and even outperforming supervised
baselines. Our code is available at https://github.com/eigenvivek/DiffPose. |
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DOI: | 10.48550/arxiv.2312.06358 |