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Fractional derivative based Unsharp masking approach for enhancement of digital images

机译:基于分数基于衍生的Unsharp掩蔽方法,用于增强数字图像

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摘要

Image visual quality is severely degraded due to various environmental conditions, thus, leading to the loss in image details. Therefore, an image enhancement approach is required to improve the visual quality of images. In this paper, Unsharp Masking (UM) approach based on Riemann-Liouville (RL), Grunwald-Letnikov (GL), and Riesz fractional derivatives is proposed for the image enhancement. The fractional derivatives based UM approach sharpened the edges of an image while preserving its low and medium frequency details. Furthermore, the extra parameter of fractional derivative provides an additional degree of freedom, thus, increasing the effectiveness of the proposed approach. Extensive simulations carried out on several standard images of different sizes validated the performance of proposed approach in comparison to the existing techniques. The capability of the proposed approach is further confirmed by considering the test images with varying illumination conditions. Moreover, the comparative analysis performed in terms of quantitative measures such as Information Entropy (IE), Average Gradient (AG), Measure of Enhancement (EME), etc. confirmed that the proposed UM approach based on Riesz fractional derivative outperforms the existing state-of-the-art image enhancement techniques. Furthermore, the potential of the proposed approach is validated by considering its application in the medical images.
机译:由于各种环境条件,图像视觉质量严重降低,从而导致图像细节的损失。因此,需要一种图像增强方法来提高图像的视觉质量。在本文中,提出了基于Riemann-Liouville(RL),Grunwald-Letnocov(GL)和Riesz分数衍生物的Unsharp掩蔽(UM)方法,用于图像增强。基于衍生物的UM方法削尖了图像的边缘,同时保留其低频和中频细节。此外,分数衍生物的额外参数提供了额外的自由度,从而增加了所提出的方法的有效性。在不同尺寸的几种标准图像上进行的广泛模拟验证了与现有技术相比的提出方法的性能。通过考虑具有不同照明条件的测试图像,进一步确认所提出的方法的能力。此外,根据信息熵(IE),平均梯度(AG),增强量(EME)等的定量测量所进行的比较分析证实了基于RIESZ分数衍生物的提议的UM方法优于现有状态 - 艺术图像增强技术。此外,通过考虑其在医学图像中的应用,验证了所提出的方法的潜力。

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