图像增强使用e样条函数

M. Fahmy, G. Fahmy, O. Fahmy
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引用次数: 0

摘要

指数样条多项式(e样条)表示连续域和离散域之间的最佳平滑过渡。由于它们是由指数段的卷积构造的,因此有许多自由度来选择最方便的e样条,适合于特定的应用。本文对这些e样条参数进行了优化选择,以提高图像去噪性能和图像缩放方案。该方法基于最小化基于e样条的小波分解细节系数的总变分函数。在图像去噪方案中,除了e样条参数估计外,还对其细节系数的阈值水平进行了优化选择。在缩放应用中,通过对插值图像应用ICA技术,进一步提高和锐化插值图像的质量,以消除任何依赖性。通过与现有方法的比较,验证了所提出的电子样条方案的图像增强效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image enhancement using E-spline functions
Exponential spline polynomials (E-splines) represent the best smooth transition between continuous and discrete domains. As they are constructed from convolution of exponential segments, there are many degrees of freedom to optimally choose the most convenient E-spline, suitable for a specific application. In this paper, the parameters of these E-splines were optimally chosen, to enhance the performance of image de-noising as well as image zooming schemes. The proposed technique is based on minimizing the total variation function of the detail coefficients of the E-spline based wavelet decomposition. In image de-noising schemes, apart from E-spline parameter estimations, the thresholding levels of their detail coefficients, are also optimally chosen. In zooming applications, the quality of interpolated images are further improved and sharpened by applying ICA technique to them, in order to remove any dependency. Illustrative examples are given to verify image enhancement of the proposed e-spline scheme, when compared with the existing approaches.
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