posted on 2024-07-25, 06:13authored byOmri Wengrowicz, Or Peleg, Barry Loevsky, Oren Cohen
We propose and numerically investigate a new methodology for long-range short-wavelength synthetic aperture imaging. Utilizing low-resolution intensity images captured by a distributed array of sparsely fly-scanning detectors, we reconstruct high-resolution images. We introduce and explore two reconstruction implementations: one leveraging Fourier ptychography and the other employing an untrained deep neural network to replace the update step in the iterative algorithm. These methods are compared to small-aperture low-resolution images and conventional Fourier ptychography reconstructions. The proposed techniques yield superior reconstructions in scenarios where traditional methodologies may be inadequate, with the neural network demonstrating generally superior performances over the ptychography-based approach. The proposed method exhibits four principal advancements: enhancement of images via sparsely sampled synthetic aperture, fly-scan sampling, better resistance to noise, and serialization and scalability—whereby additional samples can incrementally refine the solution without necessitating resolving for the entire dataset for each new sample.
History
Funder Name
H2020 European Research Council (819440-TIMP)
Preprint ID
116547
Highlighter Commentary
The authors systematically compare the performance of synthetic aperture imaging across various reconstruction methodologies, focusing on aspects such as image quality, computation time, coverage of constituent apertures, and noise resistance. They conclude that their proposed algorithms, particularly SAIDAST with an untrained neural network, achieve superior outcomes, notably in noise sensitivity and coverage utility.
-- Xin Xie, Atom Computing, Inc., Berkeley, CA, USA