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A new construction of a fractional derivative mask for image edge analysis based on Riemann-Liouville fractional derivative

机译:基于Riemann-Liouville分数导数的图像边缘分析分数导数掩模的新构造

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摘要

We present a new way of constructing a fractional-based convolution mask with an application to image edge analysis. The mask was constructed based on the Riemann-Liouville fractional derivative which is a special form of the Srivastava-Owa operator. This operator is generally known to be robust in solving a range of differential equations due to its inherent property of memory effect. However, its application in constructing a convolution mask can be devastating if not carefully constructed. In this paper, we show another effective way of constructing a fractional-based convolution mask that is able to find edges in detail quite significantly. The resulting mask can trap both local discontinuities in intensity and its derivatives as well as locating Dirac edges. The experiments conducted on the mask were done using some selected well known synthetic and Medical images with realistic geometry. Using visual perception and performing both mean square error and peak signal-to-noise ratios analysis, the method demonstrated significant advantages over other known methods.
机译:我们提出了一种构建基于分数的卷积蒙版的新方法,并将其应用于图像边缘分析。该蒙版基于Riemann-Liouville分数导数构造而成,该分数导数是Srivastava-Owa算子的一种特殊形式。众所周知,该算子由于具有内在的记忆效应,因此在求解一系列微分方程时具有较强的鲁棒性。但是,如果不仔细构造,其在构造卷积蒙版中的应用将是毁灭性的。在本文中,我们展示了构造基于分数的卷积蒙版的另一种有效方法,该方法能够相当详细地找到边缘。生成的蒙版既可以捕获强度的局部不连续性及其派生形式,也可以定位Dirac边缘。使用一些选定的,具有逼真的几何形状的众所周知的合成图像和医学图像,对掩模进行了实验。使用视觉感知并执行均方误差和峰值信噪比分析,该方法比其他已知方法具有明显的优势。

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