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Accurate and practical feature extraction from noisy holograms

机译:从嘈杂全息图提取准确和实用的特点

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摘要

Quantitative phase imaging using holographic microscopy is a powerful and non-invasive imaging method, ideal for studying cells and quantifying their features such as size, thickness, and dry mass. However, biological materials scatter little light, and the resulting low signal-to-noise ratio in holograms complicates any downstream feature extraction and hence applications. More specifically, unwrapping phase maps from noisy holograms often fails or requires extensive computational resources. We present a strategy for overcoming the noise limitation: rather than a traditional phase-unwrapping method, we extract the continuous phase values from holograms by using a phase-generation technique based on conditional generative adversarial networks employing a Pix2Pix architecture. We demonstrate that a network trained on random surfaces can accurately generate phase maps for test objects such as dumbbells, spheres, and biconcave discoids. Furthermore, we show that even a rapidly trained network can generate faithful phase maps when trained on related objects. We are able to accurately extract both morphological and quantitative features fromthe noisy phase maps of humanleukemia (HL-60) cells, where traditional phase unwrapping algorithms fail. We conclude that deep learning can decouple noise from signal, expanding potential applications to real-world systems that may be noisy. (C) 2021 Optical Society of America
机译:使用全息显微镜进行定量相位成像是一种功能强大的非侵入性成像方法,非常适合研究细胞并量化其特征,如大小、厚度和干质量。然而,生物材料散射的光很少,全息图中产生的低信噪比使任何下游特征提取和应用变得复杂。更具体地说,从噪声全息图中展开相位图通常会失败或需要大量计算资源。我们提出了一种克服噪声限制的策略:与传统的相位展开方法不同,我们使用基于Pix2Pix结构的条件生成对抗网络的相位生成技术从全息图中提取连续相位值。我们证明了在随机表面上训练的网络可以准确地生成测试对象(如哑铃、球体和双凹面圆盘)的相位图。此外,我们还表明,即使是经过快速训练的网络,在对相关对象进行训练时也可以生成可靠的相位图。我们能够从人类白血病(HL-60)细胞的噪声相位图中准确地提取形态学和定量特征,而传统的相位解包裹算法在这方面是失败的。我们得出结论,深度学习可以将噪声与信号分离,将潜在的应用扩展到可能存在噪声的现实系统。(2021)美国光学学会

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  • 来源
    《Applied optics》 |2021年第16期|共8页
  • 作者

    Rawat Siddharth; Wang Anna;

  • 作者单位

    UNSW Sydney Sch Chem Sydney NSW 2052 Australia;

    UNSW Sydney Sch Chem Sydney NSW 2052 Australia;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 应用;
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