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Understanding the Optics to Aid Microscopy Image Segmentation

机译:了解光学技术以帮助显微镜图像分割

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摘要

Image segmentation is essential for many automated microscopy image analysis systems. Rather than treating microscopy images as general natural images and rushing into the image processing warehouse for solutions, we propose to study a microscope's optical properties to model its image formation process first using phase contrast microscopy as an exemplar. It turns out that the phase contrast imaging system can be relatively well explained by a linear imaging model. Using this model, we formulate a quadratic optimization function with sparseness and smoothness regularizations to restore the "authentic" phase contrast images that directly correspond to specimen's optical path length without phase contrast artifacts such as halo and shade-off. With artifacts removed, high quality segmentation can be achieved by simply thresholding the restored images. The imaging model and restoration method are quantitatively evaluated on two sequences with thousands of cells captured over several days.
机译:图像分割对于许多自动化显微镜图像分析系统至关重要。我们建议不要使用显微镜图像作为一般的自然图像并将其冲入图像处理仓库中以寻求解决方案,而是建议首先使用相差显微镜作为示例来研究显微镜的光学特性,以对其图像形成过程进行建模。事实证明,可以通过线性成像模型相对很好地解释相衬成像系统。使用此模型,我们制定了具有稀疏度和平滑度正则化的二次优化函数,以还原“真实的”相位对比图像,该图像直接对应于标本的光程长度,而没有诸如光晕和阴影之类的相位对比伪像。去除伪影后,只需对恢复的图像进行阈值处理就可以实现高质量的分割。在几天内捕获了成千上万个细胞的两个序列上,对成像模型和恢复方法进行了定量评估。

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