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📄 Abstract
Abstract: Volumetric ultrasound has the potential to significantly improve diagnostic
accuracy and clinical decision-making, yet its widespread adoption remains
limited by dependence on specialized hardware and restrictive acquisition
protocols. In this work, we present a novel unsupervised framework for
reconstructing 3D anatomical structures from freehand 2D transvaginal
ultrasound (TVS) sweeps, without requiring external tracking or learned pose
estimators. Our method adapts the principles of Gaussian Splatting to the
domain of ultrasound, introducing a slice-aware, differentiable rasterizer
tailored to the unique physics and geometry of ultrasound imaging. We model
anatomy as a collection of anisotropic 3D Gaussians and optimize their
parameters directly from image-level supervision, leveraging sensorless probe
motion estimation and domain-specific geometric priors. The result is a
compact, flexible, and memory-efficient volumetric representation that captures
anatomical detail with high spatial fidelity. This work demonstrates that
accurate 3D reconstruction from 2D ultrasound images can be achieved through
purely computational means, offering a scalable alternative to conventional 3D
systems and enabling new opportunities for AI-assisted analysis and diagnosis.