遥感图像的条纹噪声去除

P. Satya, Samudrala Jagadish, V. Satyanarayana, Maneesh Kumar Singh
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引用次数: 0

摘要

遥感图像在地理、军事、城市规划和环境监测等领域得到广泛应用,但由于附加的条纹噪声,在一定程度上限制了遥感图像的应用。在大多数现有的流降噪算法中,可以很容易地预测条纹图像的清晰图像,而不考虑导致结构破坏的条纹噪声的潜在特征。因此,本研究从图像分解的角度提出了一种新的策略。同时考虑了条带噪声的固有特性和图像的特性。建议的方法将正则化、组规则和电视正则化结合在一个图像分解框架中,形成一个(TV)。前两项用于通过统计分析来执行条纹噪声质量,TV的正则化应该评估无条纹图像的平滑结构部分。此外,提出了一种有效的交替最小化方法来求解图像分解模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stripe Noise Removal from Remote Sensing Images
Remote sensing images are in many domains used, including geographic, military, urban planning and environmental surveillance, but they are somewhat limiting their application due of additional stripe noise. Clear images from stripe pictures may be easily predicted in most existing stream noise reduction algorithms without considering the underlying characteristics of strip noise that cause the structure to be destroyed. Thus a new strategy was suggested in this study from the point of view of the image breakdown. The inherent qualities of strip noise and image properties are taken into consideration. The suggested methodology combines regularization, group regulation and television regularization in a framework for picture decomposition, into a (TV). The first two terms are used to execute stripe noise qualities through statistical analyses and regularization of the TV should evaluate the portions of the smooth structures of the stripe-free image. In addition, an effective alternating minimization methodology is proposed to solve the picture decomposition model.
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