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Removal of the twin image artifact in holographic lens-free imaging by sparse dictionary learning and coding

机译:通过稀疏词典学习和编码消除无全息镜头成像中的双像伪影

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Mitigating the effects of the twin image artifact is one of the key challenges in holographic lens-free microscopy. This artifact arises due to the fact that imaging detectors can only record the magnitude of the hologram wavefront but not the phase. Prior work addresses this problem by attempting to simultaneously estimate the missing phase and reconstruct an image of the object specimen. Here we explore a fundamentally different approach based on post-processing the reconstructed image using sparse dictionary learning and coding techniques originally developed for processing conventional images. First, a dictionary of atoms representing characteristics from either the true image of the specimen or the twin image are learned from a collection of patches of the observed images. Then, by expressing each patch of the observed image as a sparse linear combination of the dictionary atoms, the observed image is decomposed into a component that corresponds to the true image and another one that corresponds to the twin image artifact. Experiments on counting red blood cells demonstrate the effectiveness of the proposed approach.
机译:减轻双像伪影的影响是无全息镜头显微技术的主要挑战之一。这种伪影的出现是由于成像检测器只能记录全息图波前的幅度,而不能记录相位。先前的工作通过尝试同时估计丢失的相位并重建对象标本的图像来解决该问题。在这里,我们探索一种根本不同的方法,该方法基于使用稀疏词典学习和编码技术对原始图像进行后处理来对重建图像进行后处理,而稀疏字典学习和编码技术最初是为处理常规图像而开发的。首先,从样本的真实图像或双胞胎图像中获取代表特征的原子词典,这是从观察到的图像斑块集合中学习的。然后,通过将观察图像的每个斑块表示为字典原子的稀疏线性组合,将观察图像分解为与真实图像相对应的分量和与双图像伪像相对应的另一分量。对红细胞计数的实验证明了该方法的有效性。

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