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Fast modal analysis for Hermite-Gauss an beams via deep learning

机译:通过深度学习的Hermite-Gauss梁的快速模态分析

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The eigenmodes of Hermite-Gaussian (HG) beams emitting from solid-state lasers make up a complete and orthonormal basis, and they have gained increasing interest in recent years. Here, we demonstrate a deep learning-based mode decomposition (MD) scheme of HG beams for the first time, to the best of our knowledge. We utilize large amounts of simulated samples to train a convolutional neural network (CNN) and then use this trained CNN to perform MD. The results of simulated testing samples have shown that our scheme can achieve an averaged prediction error of 0.013 when six eigenmodes are involved. The scheme takes only about 23 ms to perform MD for one beam pattern, indicating promising real-time MD ability. When larger numbers of eigenmodes are involved, the method can also succeed with slightly larger prediction error. The robustness of the scheme is also investigated by adding noise to the input beam patterns, and the prediction error is smaller than 0.037 for heavily noisy patterns. This method offers a fast, economic, and robust way to acquire both the mode amplitude and phase information through a single-shot intensity image of HG beams, which will be beneficial to the beam shaping, beam quality evaluation, studies of resonator perturbations, and adaptive optics for resonators of solid-state lasers. (C) 2020 Optical Society of America
机译:从固态激光器发射的Hermite-Gaussian(HG)光束的特征模块弥补了完整和正式的基础,并且近年来他们越来越受益。在这里,我们首次展示了HG光束的基于深度学习的模式分解(MD)方案,以至于我们的知识。我们利用大量模拟样本来训练卷积神经网络(CNN),然后使用该训练的CNN执行MD。模拟测试样本的结果表明,当涉及六个特征模点时,我们的方案可以实现0.013的平均预测误差。该方案仅需要大约23毫秒,以执行一个波束图案的MD,表明有希望的实时MD能力。当涉及较大数量的特征范围时,该方法也可以通过稍大的预测误差成功。还通过向输入波束图案添加噪声来研究方案的稳健性,并且预测误差小于0.037,用于严重嘈杂的图案。该方法提供了一种快速,经济和强大的方式来通过HG光束的单次强度图像获取模式幅度和相位信息,这将有利于光束整形,光束质量评估,谐振器扰动的研究和固态激光器谐振器的自适应光学器件。 (c)2020美国光学学会

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    《Applied optics》 |2020年第7期|共6页
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