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High-precision piston detection method for segments based on a single convolutional neural network

机译:基于单个卷积神经网络的段高精度活塞检测方法

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High-precision detection of piston error is one of the key technologies for high-resolution large-aperture segmented telescopes. Most piston detection methods based on neural networks are difficult to achieve high accuracy. In this Letter, we propose a high-precision piston error detection method based on convolutional neural networks (CNN). A system with six sub-mirrors is used, and one of the sub-mirrors is set as the reference mirror. The network can simultaneously extract the piston information of the remaining five sub-mirrors to be tested from the point spread function (PSF). In the training phase, five sub-mirrors are set with 10,000 groups of random piston values with a range slightly less than one wavelength, and PSF images can be acquired accordingly. Then, 10,000 PSF images with corresponding piston errors are used to train the network. After training, we only need to input a PSF image into the pre-trained network, and the piston can be obtained directly. It is verified by simulation that the average piston's measurement error of five submirrors is just 0.0089λ RMS (λ=632nm). In addition, this end-to-end method based on deep learning extremely reduces the complexity of the optical system, and just need to set a mask with a sparse multi-subaperture configuration in the conjugate plane of the segmented mirror. This method is accurate and fast, and can be widely used to detect the piston in phasing telescope arrays or segmented mirrors.
机译:活塞误差的高精度检测是高分辨率大孔径分段望远镜的关键技术之一。基于神经网络的大多数活塞检测方法难以实现高精度。在这封信中,我们提出了一种基于卷积神经网络(CNN)的高精度活塞误差检测方法。使用具有六个子镜子的系统,并且将其中一个子镜子设置为参考镜。网络可以同时提取剩余的五个子镜的活塞信息以从点扩展功能(PSF)测试。在训练阶段中,将五个子镜设置有10,000组随机活塞值,其范围略小于一个波长,并且可以相应地获取PSF图像。然后,使用具有相应活塞误差的10,000个PSF图像来训练网络。在训练之后,我们只需要将PSF图像输入到预训练的网络中,并且可以直接获得活塞。通过模拟验证,即五个子镜镜的平均活塞的测量误差仅为0.0089λrms(λ= 632nm)。此外,基于深度学习的这种端到端方法极大地降低了光学系统的复杂性,并且只需要在分段镜的共轭平面中设置具有稀疏多子射流配置的掩模。该方法是准确的,快速,并且可以广泛用于检测分阶段望远镜阵列或分段镜中的活塞。

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