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Penalized-likelihood image reconstruction for digital holography

机译:数字全息的惩罚似然图像重建

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Conventional numerical reconstruction for digital holography using a filter applied in the spatial-frequency domain to extract the primary image may yield suboptimal image quality because of the loss in high-frequency components and interference from other undesirable terms of a hologram. We propose a new numerical reconstruction approach using a statistical technique. This approach reconstructs the complex field of the object from the real-valued hologram intensity data. Because holographic image reconstruction is an ill-posed problem, our statistical technique is based on penalized-likelihood estimation. We develop a Poisson statistical model for this problem and derive an optimization transfer algorithm that monotonically decreases the cost function at each iteration. Simulation results show that our statistical technique has the potential to improve image quality in digital holography relative to conventional reconstruction techniques.
机译:使用在空间频域中应用的滤波器来提取主图像的数字全息术的常规数值重构可能会产生次优的图像质量,这是因为高频分量的损失以及来自全息图其他不期望项的干扰。我们提出了一种使用统计技术的新的数值重建方法。该方法从实值全息图强度数据重建对象的复杂场。由于全息图像重建是一个不适定的问题,因此我们的统计技术基于惩罚似然估计。我们针对此问题开发了一个Poisson统计模型,并推导了一种优化转移算法,该算法在每次迭代时单调降低了成本函数。仿真结果表明,相对于传统的重建技术,我们的统计技术具有改善数字全息术中图像质量的潜力。

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