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Application of Fast Non-Local Means Algorithm for Noise Reduction Using Separable Color Channels in Light Microscopy Images

机译:在光学显微镜图像中使用可分离颜色通道的快速非局部方式算法的应用

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摘要

The purpose of this study is to evaluate the various control parameters of a modeled fast non-local means (FNLM) noise reduction algorithm which can separate color channels in light microscopy (LM) images. To achieve this objective, the tendency of image characteristics with changes in parameters, such as smoothing factors and kernel and search window sizes for the FNLM algorithm, was analyzed. To quantitatively assess image characteristics, the coefficient of variation (COV), blind/referenceless image spatial quality evaluator (BRISQUE), and natural image quality evaluator (NIQE) were employed. When high smoothing factors and large search window sizes were applied, excellent COV and unsatisfactory BRISQUE and NIQE results were obtained. In addition, all three evaluation parameters improved as the kernel size increased. However, the kernel and search window sizes of the FNLM algorithm were shown to be dependent on the image processing time (time resolution). In conclusion, this work has demonstrated that the FNLM algorithm can effectively reduce noise in LM images, and parameter optimization is important to achieve the algorithm’s appropriate application.
机译:本研究的目的是评估建模的快速非局部装置(FNLM)降噪算法的各种控制参数,其可以在光学显微镜(LM)图像中分离颜色通道。为了实现这一目标,分析了与FNLM算法的参数变化的图像特征的趋势,例如平滑因素和内核和搜索窗口尺寸。为了定量评估图像特征,采用变形系数(COV),盲/转印图像空间质量评估器(BRISQUE)和自然图像质量评估器(NIQE)。当应用高平滑因素和大型搜索窗口尺寸时,获得了优异的COV和不令人满意的简洁和NIQE结果。此外,所有三个评估参数随着内核尺寸的提高而改善。但是,核心和搜索窗口尺寸的核心算法的尺寸被显示为取决于图像处理时间(时间分辨率)。总之,这项工作表明,FNLM算法可以有效地降低LM图像中的噪声,并且参数优化对于实现算法适当的应用是重要的。

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