高光谱压缩波前传感

IF 5.2 1区 物理与天体物理 Q1 OPTICS High Power Laser Science and Engineering Pub Date : 2023-01-01 DOI:10.1017/hpl.2022.35
Sunny Howard, Jannik Esslinger, Robin H.W. Wang, Peter Norreys, Andreas Döpp
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引用次数: 1

摘要

摘要提出了一种将快照压缩成像和横向剪切干涉相结合的方法,用于单次捕获超短激光脉冲的空间光谱相位。深度展开算法用于快照压缩成像重建,由于其参数效率和相对于其他方法的更快的速度,有可能允许在线重建。该算法的正则化项使用三维卷积层的神经网络来表示,以利用激光波前存在的空间-光谱相关性。压缩感知通常不应用于调制信号,但我们在这里展示了它的成功。此外,我们训练了一个神经网络来根据泽尼克多项式预测横向剪切干涉图的波前,这再次提高了我们的技术的速度,而不牺牲保真度。该方法得到了仿真结果的支持。虽然应用于横向剪切干涉测量的例子,但这里提出的方法通常适用于广泛的信号,包括shack - hartmann型传感器。结果可能超出了激光波前表征的范围,包括定量相位成像。
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Hyperspectral compressive wavefront sensing
Abstract Presented is a novel way to combine snapshot compressive imaging and lateral shearing interferometry in order to capture the spatio-spectral phase of an ultrashort laser pulse in a single shot. A deep unrolling algorithm is utilized for snapshot compressive imaging reconstruction due to its parameter efficiency and superior speed relative to other methods, potentially allowing for online reconstruction. The algorithm’s regularization term is represented using a neural network with 3D convolutional layers to exploit the spatio-spectral correlations that exist in laser wavefronts. Compressed sensing is not typically applied to modulated signals, but we demonstrate its success here. Furthermore, we train a neural network to predict the wavefronts from a lateral shearing interferogram in terms of Zernike polynomials, which again increases the speed of our technique without sacrificing fidelity. This method is supported with simulation-based results. While applied to the example of lateral shearing interferometry, the methods presented here are generally applicable to a wide range of signals, including Shack–Hartmann-type sensors. The results may be of interest beyond the context of laser wavefront characterization, including within quantitative phase imaging.
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来源期刊
High Power Laser Science and Engineering
High Power Laser Science and Engineering Physics and Astronomy-Nuclear and High Energy Physics
CiteScore
7.10
自引率
4.20%
发文量
401
审稿时长
21 weeks
期刊介绍: High Power Laser Science and Engineering (HPLaser) is an international, peer-reviewed open access journal which focuses on all aspects of high power laser science and engineering. HPLaser publishes research that seeks to uncover the underlying science and engineering in the fields of high energy density physics, high power lasers, advanced laser technology and applications and laser components. Topics covered include laser-plasma interaction, ultra-intense ultra-short pulse laser interaction with matter, attosecond physics, laser design, modelling and optimization, laser amplifiers, nonlinear optics, laser engineering, optical materials, optical devices, fiber lasers, diode-pumped solid state lasers and excimer lasers.
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