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训练样本的光谱预调制提高了相位提取神经网络(PhENN)的空间分辨率。

Spectral pre-modulation of training examples enhances the spatial resolution of the phase extraction neural network (PhENN).

作者信息

Li Shuai, Barbastathis George

出版信息

Opt Express. 2018 Oct 29;26(22):29340-29352. doi: 10.1364/OE.26.029340.

DOI:10.1364/OE.26.029340
PMID:30470099
Abstract

The phase extraction neural network (PhENN) [Optica 4, 1117 (2017)] is a computational architecture, based on deep machine learning, for lens-less quantitative phase retrieval from raw intensity data. PhENN is a deep convolutional neural network trained through examples consisting of pairs of true phase objects and their corresponding intensity diffraction patterns; thereafter, given a test raw intensity pattern, PhENN is capable of reconstructing the original phase object robustly, in many cases even for objects outside the database where the training examples were drawn from. Here, we show that the spatial frequency content of the training examples is an important factor limiting PhENN's spatial frequency response. For example, if the training database is relatively sparse in high spatial frequencies, as most natural scenes are, PhENN's ability to resolve fine spatial features in test patterns will be correspondingly limited. To combat this issue, we propose "flattening" the power spectral density of the training examples before presenting them to PhENN. For phase objects following the statistics of natural scenes, we demonstrate experimentally that the spectral pre-modulation method enhances the spatial resolution of PhENN by a factor of 2.

摘要

相位提取神经网络(PhENN)[《Optica》4, 1117 (2017)] 是一种基于深度机器学习的计算架构,用于从原始强度数据中进行无透镜定量相位检索。PhENN 是一个深度卷积神经网络,通过由真实相位物体及其相应强度衍射图案对组成的示例进行训练;此后,给定一个测试原始强度图案,PhENN 能够稳健地重建原始相位物体,在许多情况下,即使对于来自训练示例数据库之外的物体也是如此。在这里,我们表明训练示例的空间频率内容是限制 PhENN 空间频率响应的一个重要因素。例如,如果训练数据库在高空间频率方面相对稀疏,就像大多数自然场景那样,PhENN 在测试图案中分辨精细空间特征的能力将相应受到限制。为了解决这个问题,我们提出在将训练示例呈现给 PhENN 之前对其功率谱密度进行“扁平化”处理。对于遵循自然场景统计规律的相位物体,我们通过实验证明,频谱预调制方法将 PhENN 的空间分辨率提高了两倍。

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