Version 2 2023-06-29, 09:14Version 2 2023-06-29, 09:14
Version 1 2023-05-22, 09:44Version 1 2023-05-22, 09:44
preprint
posted on 2023-06-29, 09:14authored byZheyuan Zhu, Dewan Saiham, Andrew Klein, Shuo Pang
Computational imaging systems with embedded processing have potential advantages in power consumption, computing speed, and cost. However, common processors for embedding systems have limited computing capacity with low level of parallelism. The widely used iterative algorithms for image reconstruction rely on floating-point processors to ensure calculation precision, which require more computing resources than fixed-point processors. Here we present a regularized Landweber fixed-point iterative solver for image reconstruction, implemented on a field programmable gated array (FPGA). Compared with floating-point embedded uniprocessors, iterative solvers implemented on the fixed-point FPGA gain 1 to 2 orders of magnitude acceleration, while achieving the same reconstruction accuracy in comparable number of effective iterations. Specifically, we have demonstrated the proposed fixed-point iterative solver in fiber borescope image reconstruction, successfully correcting the artifacts introduced by the lenses and fiber bundle.
History
Funder Name
National Science Foundation (1932858); Army Research Office (W911NF2110321); Florida High Tech Corridor Council; National Aeronautics and Space Administration (80MSFC21C0008); Eta Space; Office of Naval Research (N000142012441)