TY - UNPB
T1 - Amortized Normalizing Flows for Transcranial Ultrasound with Uncertainty Quantification
AU - Orozco, Rafael
AU - Louboutin, Mathias
AU - Siahkoohi, Ali
AU - Rizzuti, Gabrio
AU - van Leeuwen, Tristan
AU - Herrmann, Felix
PY - 2023/3/6
Y1 - 2023/3/6
N2 - We present a novel approach to transcranial ultrasound computed tomography that utilizes normalizing flows to improve the speed of imaging and provide Bayesian uncertainty quantification. Our method combines physics-informed methods and data-driven methods to accelerate the reconstruction of the final image. We make use of a physics-informed summary statistic to incorporate the known ultrasound physics with the goal of compressing large incoming observations. This compression enables efficient training of the normalizing flow and standardizes the size of the data regardless of imaging configurations. The combinations of these methods results in fast uncertainty-aware image reconstruction that generalizes to a variety of transducer configurations. We evaluate our approach with in silico experiments and demonstrate that it can significantly improve the imaging speed while quantifying uncertainty. We validate the quality of our image reconstructions by comparing against the traditional physics-only method and also verify that our provided uncertainty is calibrated with the error.
AB - We present a novel approach to transcranial ultrasound computed tomography that utilizes normalizing flows to improve the speed of imaging and provide Bayesian uncertainty quantification. Our method combines physics-informed methods and data-driven methods to accelerate the reconstruction of the final image. We make use of a physics-informed summary statistic to incorporate the known ultrasound physics with the goal of compressing large incoming observations. This compression enables efficient training of the normalizing flow and standardizes the size of the data regardless of imaging configurations. The combinations of these methods results in fast uncertainty-aware image reconstruction that generalizes to a variety of transducer configurations. We evaluate our approach with in silico experiments and demonstrate that it can significantly improve the imaging speed while quantifying uncertainty. We validate the quality of our image reconstructions by comparing against the traditional physics-only method and also verify that our provided uncertainty is calibrated with the error.
KW - Electrical Engineering and Systems Science - Image and Video Processing
KW - Computer Science - Machine Learning
UR - http://adsabs.harvard.edu/abs/2023arXiv230303478O
U2 - 10.48550/arXiv.2303.03478
DO - 10.48550/arXiv.2303.03478
M3 - Preprint
SP - 1
EP - 18
BT - Amortized Normalizing Flows for Transcranial Ultrasound with Uncertainty Quantification
PB - arXiv
ER -