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Enhancement of low quality reconstructed digital hologram images based on frequency extrapolation of large objects under the diffraction limit

机译:基于衍射限制的大物体频率外推的低质量重建数字全息图图像的增强

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During the reconstruction of a digital hologram, the reconstructed image is usually degraded by speckle noise, which makes it hard to observe the original object pattern. In this paper, a new reconstructed image enhancement method is proposed, which first reduces the speckle noise using an adaptive Gaussian filter, then calculates the high frequencies that belong to the object pattern based on a frequency extrapolation strategy. The proposed frequency extrapolation first calculates the frequency spectrum of the Fourier-filtered image, which is originally reconstructed from the +1 order of the hologram, and then gives the initial parameters for an iterative solution. The analytic iteration is implemented by continuous gradient threshold convergence to estimate the image level and vertical gradient information. The predicted spectrum is acquired through the analytical iteration of the original spectrum and gradient spectrum analysis. Finally, the reconstructed spectrum of the restoration image is acquired from the synthetic correction of the original spectrum using the predicted gradient spectrum. We conducted our experiment very close to the diffraction limit and used low quality equipment to prove the feasibility of our method. Detailed analysis and figure demonstrations are presented in the paper.
机译:在重建数字全息图期间,重建的图像通常通过散斑噪声降低,这使得难以观察原始对象模式。在本文中,提出了一种新的重建图像增强方法,其首先使用自适应高斯滤波器降低散斑噪声,然后基于频率外推策略计算属于对象模式的高频。所提出的频率外推首先计算傅里叶滤波图像的频谱,其最初从全息图的+1级重建,然后给出迭代解决方案的初始参数。通过连续梯度阈值会聚来实现分析迭代以估计图像级别和垂直梯度信息。通过原始频谱和梯度谱分析的分析迭代来获取预测的频谱。最后,使用预测的梯度频谱从原始频谱的合成校正获取恢复图像的重建频谱。我们对我们的实验进行了非常接近衍射限制,并使用低质量的设备来证明我们方法的可行性。本文提出了详细分析和图形演示。

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