基于蚁群优化的NLTV模型在遥感图像中的图像绘制

Manjinder Singh, H. Kaur
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引用次数: 0

摘要

在遥感图像的应用程序中,填充死像素或消除不需要的东西通常是首选的。本文提出了一种基于非局部全变分的有效图像绘制技术来解决这一缺陷。最初,遥感图像受到图像去噪、图像去噪等不适定逆问题的影响。因此,需要利用正则化技术,即NLTV方法,将非局部算子与全变分模型相结合,使这些问题具有良好的定常性。实际上,该方法可以利用纹理图像的非局部算子和彩色图像边缘保持的总变分方法的优点。为了优化所提出的变异模型,采用蚁群优化算法获得与原始图像的相似度。并将所提方法的效果与现有的基于预测的bregmanizeoperatsplit算法优化的MNLTV技术进行比较。对所有结果的调查证实了这一规则的有效性。
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Image inpainting in remotely sensed images by optimizing NLTV model by ant colony optimization
Filling dead pixels or eliminating unwanted things is typically preferred within the applications of remotely sensed images. In proposed article, a competent image inpainting technique is demonstrated to resolve this drawback, relied Nonlocal total variation. Initially remotely sensed images are effected by ill posed inverse problems i.e. image destripping, image denoising etc. So it is required to use regularization technique to makes these problems well posed i.e. NLTV method, which is the combination of nonlocal operators and total variation model. Actually this method can make use of the good features of non local operators for textured images and total variation method in edge preserving for color images. To optimize the proposed variation model, an Ant Colony Optimization algorithm is used in order to get similarity with the original image. And evaluate the outcomes of proposed technique with the existing technique i.e. MNLTV optimized by Bregmanized-operator-splitting algorithm which is a prediction based method. The investigation of all outcomes confirms the efficacy of this rule.
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