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Experimental implementation of wavefront sensorless real-time adaptive optics aberration correction control loop with a neural network

机译:具有神经网络的波前无传感器实时自适应光学像差控制环的实验性实现

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Recently, deep neural network (DNN) based adaptive optics systems were proposed to address the issue of latency in existing wavefront sensorless (WFS-less) aberration correction techniques. Intensity images alone are sufficient for the DNN model to compute the necessary wavefront correction, removing the need for iterative processes and allowing practical real-time aberration correction to be implemented. Specifically, we generate the desired aberration correction phase profiles utilizing a DNN based system that outputs a set of coefficients for 27 terms of Zernike polynomials. We present an experimental realization of this technique using a spatial light modulator (SLM) on real physical turbulence-induced aberration. We report an aberration correction rate of 20 frames per second in this laboratory setting, accelerated by parallelization on a graphics processing unit. There are a number of issues associated with the practical implementation of such techniques, which we highlight and address in this paper.
机译:最近,建议基于深度神经网络(DNN)的自适应光学系统来解决现有波前传感器(WFS)的像差校正技术的延迟问题。单独的Intensity图像足以使DNN模型用于计算必要的波前校正,从而消除对迭代过程的需要并允许实现实际的实时像差校正。具体地,我们利用基于DNN的系统生成所需的像差校正相简档,该系统输出一组系数的Zernike多项式的27个术语。我们在真正的物理湍流诱导的像差上使用空间光调制器(SLM)介绍了这种技术的实验性。我们在该实验室设置中报告了每秒20帧的像差校正速率,通过在图形处理单元上的并行化加速。与这种技术的实际实施有很多问题,我们突出了本文的突出显示和地址。

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