Advanced background elimination in digital holographic microscopy

L. Orzó, A. Fehér, S. Tõkés
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引用次数: 2

Abstract

Background estimation and elimination is an indispensable step of hologram processing. Its application ensures that the fix pattern noise caused by the deposits, dirt and other impurities of the measuring chamber and the optical system do not contaminate the reconstructed holograms and improves the efficiency of the object segmentation. It is conventionally solved by averaging large number of holograms with altering objects within the flow-through cell. Due to the possible illumination changes the background should be updated incessantly during the hologram measuring process. Here we introduce an improved background estimation method where the holographic contributions of the segmented and reconstructed objects are excluded from the running average. The applied segmentation is based on the 3D positions of the objects within the flow-through measuring chamber. Therefore the objects can be distinguished from the impurities and deposits, which customary located at the walls of the measuring chamber. This way, an elevated speed, more adaptive background estimation becomes achievable with reduced noise. The applied object segmentation and hologram subtraction methods are presented also. To accelerate the processing of the measured holograms the application of some parallel computing implementation seems essential. Using stream processors (GPU) we were able to increase the algorithm speed considerably, without perceptible reconstruction accuracy loss.
先进的背景消除数码全息显微镜
背景估计和消除是全息图处理中不可缺少的步骤。它的应用保证了由测量室和光学系统的沉积物、污垢等杂质引起的固定图案噪声不会污染重建的全息图,提高了物体分割的效率。传统的解决方法是对大量的全息图进行平均,并在流动单元内改变物体。在全息图测量过程中,由于光照可能发生变化,需要不断地更新背景。本文介绍了一种改进的背景估计方法,该方法将分割和重建目标的全息贡献从运行平均值中排除。所应用的分割是基于流动测量室内物体的三维位置。因此,可以将物体与通常位于测量室壁上的杂质和沉积物区分开来。这样,在降低噪声的情况下,可以实现更高的速度,更自适应的背景估计。给出了应用的目标分割和全息图减法方法。为了加快测量全息图的处理速度,一些并行计算实现的应用显得至关重要。使用流处理器(GPU),我们能够大大提高算法速度,没有明显的重建精度损失。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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