计算机显微镜的学习方法

L. Tian, Yujia Xue, Yunzhe Li, Shiyi Cheng
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摘要

新兴的基于深度学习的计算显微镜技术有望提供超越传统技术的新型成像能力。在这次演讲中,我将讨论两种显微镜的应用。首先,高空间带宽产品显微镜通常需要大量的测量。我将提出一种新的物理辅助深度学习(DL)框架,用于大空间带宽产品(SBP)相位成像,1能够显著减少所需的测量,开辟实时应用。在这项技术中,我们设计了非对称编码照明模式,以在宽视场范围内编码高分辨率相位信息。然后,我们开发了一种匹配DL算法来提供大sbp相位估计。我们在静态和动态生物样本上展示了这种技术,并表明它可以在4倍视场上可靠地实现5倍的分辨率增强,仅使用5次多路复用测量。此外,我们开发了一个不确定性学习框架,为深度学习预测的可靠性提供预测性评估。我们表明,预测的不确定性映射可以用作真实误差的替代。通过对模型不确定性的分析,验证了该方法的鲁棒性。我们通过评估数据不确定性来量化噪声、模型误差、不完整训练数据和“分布外”测试数据的影响。我们进一步证明,预测的可信度图允许识别空间和时间罕见的生物事件。我们的技术使可扩展的dl增强大sbp相位成像具有可靠的预测。其次,我将转向散射介质中普遍存在的成像问题。我将讨论一种新的基于深度学习的技术,这种技术具有高度的通用性,并且对散射介质的统计变化具有弹性我们开发了一种统计“一对所有”深度学习技术,该技术封装了广泛的统计变化,使模型能够适应散斑去相关。具体来说,我们开发了一个卷积神经网络(CNN),它能够学习包含在一组具有相同宏观参数的扩散器上捕获的散斑强度模式中的统计信息。然后,我们证明训练后的CNN能够通过同一类的完全不同的扩散器集进行泛化和高质量的对象预测。我们的工作为通过散射介质进行成像的高度可扩展的深度学习方法铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning approach to computational microscopy
Emerging deep learning based computational microscopy techniques promise novel imaging capabilities beyond traditional techniques. In this talk, I will discuss two microscopy applications. First, high space-bandwidth product microscopy typically requires a large number of measurements. I will present a novel physics-assisted deep learning (DL) framework for large space-bandwidth product (SBP) phase imaging,1 enabling significant reduction of the required measurements, opening up real-time applications. In this technique, we design asymmetric coded illumination patterns to encode high-resolution phase information across a wide field-of-view. We then develop a matching DL algorithm to provide large-SBP phase estimation. We demonstrate this technique on both static and dynamic biological samples, and show that it can reliably achieve 5x resolution enhancement across 4x FOVs using only five multiplexed measurements. In addition, we develop an uncertainty learning framework to provide predictive assessment to the reliability of the DL prediction. We show that the predicted uncertainty maps can be used as a surrogate to the true error. We validate the robustness of our technique by analyzing the model uncertainty. We quantify the effect of noise, model errors, incomplete training data, and “out-of-distribution” testing data by assessing the data uncertainty. We further demonstrate that the predicted credibility maps allow identifying spatially and temporally rare biological events. Our technique enables scalable DL-augmented large-SBP phase imaging with reliable predictions. Second, I will turn to the pervasive problem of imaging in scattering media. I will discuss a new deep learning- based technique that is highly generalizable and resilient to statistical variations of the scattering media.2 We develop a statistical ‘one-to-all’ deep learning technique that encapsulates a wide range of statistical variations for the model to be resilient to speckle decorrelations. Specifically, we develop a convolutional neural network (CNN) that is able to learn the statistical information contained in the speckle intensity patterns captured on a set of diffusers having the same macroscopic parameter. We then show that the trained CNN is able to generalize and make high-quality object predictions through an entirely different set of diffusers of the same class. Our work paves the way to a highly scalable deep learning approach for imaging through scattering media.
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