Buske Paul, Hofmann Oskar, Bonnhoff Annika, Stollenwerk Jochen, Holly Carlo
Opt Express. 2024 Feb 26;32(5):7064-7078. doi: 10.1364/OE.507630.
Spatial light modulators (SLMs) based on liquid crystal on silicon (LCoS) are powerful tools for laser beam shaping as they can be used to dynamically create almost arbitrary intensity distributions. However, laser beam shaping with LCoS-SLMs often suffers from beam shaping artifacts in part caused by unconsidered properties of the LCoS devices: astigmatism that stems from the non-normal incidence of the laser beam on the SLM and the effect commonly referred to as the '0-th diffraction order' that is caused by both the crosstalk between neighboring pixels and the direct reflection at the cover glass of the SLM. We here present a method to consider and compensate for these inherent properties of LCoS devices by treating the SLM as a diffractive neural network.
基于硅基液晶(LCoS)的空间光调制器(SLM)是用于激光束整形的强大工具,因为它们可用于动态创建几乎任意的强度分布。然而,使用LCoS-SLM进行激光束整形时,常常会出现光束整形伪像,部分原因是LCoS器件的一些未被考虑的特性:激光束非垂直入射到SLM上产生的像散,以及由相邻像素之间的串扰和SLM覆盖玻璃上的直接反射共同引起的通常被称为“零阶衍射”的效应。我们在此提出一种方法,通过将SLM视为衍射神经网络来考虑并补偿LCoS器件的这些固有特性。