Guzzi Francesco, Gianoncelli Alessandra, Billè Fulvio, Carrato Sergio, Kourousias George
Elettra-Sincrotrone Trieste, Strada Statale 14-km 163,500 in AREA Science Park, Basovizza, 34149 Trieste, Italy.
Department of Engineering and Architecture (DIA), University of Trieste, 34127 Trieste, Italy.
Life (Basel). 2023 Feb 23;13(3):629. doi: 10.3390/life13030629.
Computational techniques allow breaking the limits of traditional imaging methods, such as time restrictions, resolution, and optics flaws. While simple computational methods can be enough for highly controlled microscope setups or just for previews, an increased level of complexity is instead required for advanced setups, acquisition modalities or where uncertainty is high; the need for complex computational methods clashes with rapid design and execution. In all these cases, Automatic Differentiation, one of the subtopics of Artificial Intelligence, may offer a functional solution, but only if a GPU implementation is available. In this paper, we show how a framework built to solve just one optimisation problem can be employed for many different X-ray imaging inverse problems.
计算技术能够突破传统成像方法的限制,比如时间限制、分辨率和光学缺陷。虽然简单的计算方法对于高度可控的显微镜设置或者仅仅用于预览可能就足够了,但对于先进的设置、采集模式或者不确定性较高的情况,则需要更高的复杂度;复杂计算方法的需求与快速设计和执行相冲突。在所有这些情况下,自动微分作为人工智能的一个子主题,可能会提供一个有效的解决方案,但前提是要有GPU实现。在本文中,我们展示了一个为解决一个优化问题而构建的框架如何能够用于许多不同的X射线成像逆问题。