Deep Sylvester Posterior Inference for Adaptive Compressed Sensing in Ultrasound Imaging
Journal:
arXiv
Published Date:
Jan 7, 2025
Abstract
Ultrasound images are commonly formed by sequential acquisition of
beam-steered scan-lines. Minimizing the number of required scan-lines can
significantly enhance frame rate, field of view, energy efficiency, and data
transfer speeds. Existing approaches typically use static subsampling schemes
in combination with sparsity-based or, more recently, deep-learning-based
recovery. In this work, we introduce an adaptive subsampling method that
maximizes intrinsic information gain in-situ, employing a Sylvester Normalizing
Flow encoder to infer an approximate Bayesian posterior under partial
observation in real-time. Using the Bayesian posterior and a deep generative
model for future observations, we determine the subsampling scheme that
maximizes the mutual information between the subsampled observations, and the
next frame of the video. We evaluate our approach using the EchoNet cardiac
ultrasound video dataset and demonstrate that our active sampling method
outperforms competitive baselines, including uniform and variable-density
random sampling, as well as equidistantly spaced scan-lines, improving mean
absolute reconstruction error by 15%. Moreover, posterior inference and the
sampling scheme generation are performed in just 0.015 seconds (66Hz), making
it fast enough for real-time 2D ultrasound imaging applications.