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Real-time imaging through moving scattering layers via a two-step deep learning strategy

机译:通过两步深度学习策略通过移动散射层进行实时成像

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Many methods have been demonstrated that it is possible to reconstruct an object hidden scattering layers. However, it is still a big challenge when suffer from dynamic and/or time-variant scattering media. Speckle correlation is a breakthrough technique which can noninvasively retrieve the image of object from a single-shot captured pattern but it does not allow for imaging in real time as the complicated iteration process. Recently, deep learning has attracted great attention in scattering imaging but they usually employ end-to-end mode so that the scattering medium must be fixed during the training and testing process. Here, we develop a two-step deep learning strategy for imaging through moving scattering layers. In our proposed scheme, speckle autocorrelation de-noising and object image reconstruction from autocorrelation are trained respectively by using two convolution neural network. Optical experiments show that our proposed scheme has outstanding performance for real-time imaging through moving scattering layers.
机译:已经证明了许多方法可以重建物体隐藏的散射层。然而,当遭受动态和/或随时间变化的散射介质时,这仍然是一个很大的挑战。散斑相关技术是一项突破性技术,可以无创地从单次捕获的图像中检索对象的图像,但由于复杂的迭代过程,因此无法进行实时成像。最近,深度学习在散射成像中引起了极大的关注,但是它们通常采用端到端模式,因此在训练和测试过程中必须固定散射介质。在这里,我们开发了通过移动散射层成像的两步式深度学习策略。在我们提出的方案中,使用两个卷积神经网络分别训练散斑自相关去噪和从自相关重建对象图像。光学实验表明,我们提出的方案在通过移动散射层进行实时成像方面具有出色的性能。

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