Diffusion-based Sinogram Interpolation for Limited Angle PET
By: Rüveyda Yilmaz , Julian Thull , Johannes Stegmaier and more
Potential Business Impact:
Lets scanners see inside bodies better with gaps.
Accurate PET imaging increasingly requires methods that support unconstrained detector layouts from walk-through designs to long-axial rings where gaps and open sides lead to severely undersampled sinograms. Instead of constraining the hardware to form complete cylinders, we propose treating the missing lines-of-responses as a learnable prior. Data-driven approaches, particularly generative models, offer a promising pathway to recover this missing information. In this work, we explore the use of conditional diffusion models to interpolate sparsely sampled sinograms, paving the way for novel, cost-efficient, and patient-friendly PET geometries in real clinical settings.
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