Singh Anand, Sajid Mohammad, Tiwari Naveen Kumar, Shukla Anurag
Department of Electrical Engineering (Cyber Physical Systems), Indian Institute of Technology Jodhpur, Jodhpur, India.
Department of Mechanical Engineering, College of Engineering, Qassim University, Buraydah, Saudi Arabia.
PLoS One. 2025 May 21;20(5):e0319990. doi: 10.1371/journal.pone.0319990. eCollection 2025.
The current research uses the Grünwald-Letnikov (GL) fractional differential mask to improve satellite and medical images. One of the important image enhancement methods in digital image processing is texture enhancement. A fractional differential-based two-dimensional discrete gradient operator is based on the definition of Grünwald-Letnikov (GL) interpretation of fractional calculus, which is extended from a one-dimensional operator through the analysis of its spectrum to improve the image texture. Which then extracts more subtle texture information, and gets around the lack of a classical gradient operator. Based on the GL fractional differential, an approximate two-dimensional isotropic gradient operator mask was created using the GL fractional derivative, the technique generates [Formula: see text] and [Formula: see text] pixel-sized masks that preserve the correlation between neighboring pixels. The strength of the mask, which was a variable and non-linear filter, could be changed by varying the intensity factor to enhance the image. Experimental results show that the operator may emphasize the texture and obtain more complex information. Compared to the conventional classical methods, the suggested way has an excellent promotional effect on texture enhancement compared to the previous method on grayscale images.
当前的研究使用 Grünwald-Letnikov(GL)分数阶微分掩码来改善卫星图像和医学图像。纹理增强是数字图像处理中重要的图像增强方法之一。基于分数阶微分的二维离散梯度算子是基于 Grünwald-Letnikov(GL)对分数阶微积分的解释定义的,它通过对其一维算子的频谱分析从一维算子扩展而来,以改善图像纹理。这样就能提取出更细微的纹理信息,并克服经典梯度算子的不足。基于 GL 分数阶微分,使用 GL 分数阶导数创建了一个近似二维各向同性梯度算子掩码,该技术生成了大小为[公式:见文本]和[公式:见文本]像素的掩码,保留了相邻像素之间的相关性。该掩码的强度是一个可变的非线性滤波器,可以通过改变强度因子来增强图像。实验结果表明,该算子可以突出纹理并获得更复杂的信息。与传统的经典方法相比,与之前对灰度图像的方法相比,所提出的方法在纹理增强方面具有出色的促进效果。