Regularization super-resolution image fusion considering inaccurate image registration and observation noise

Hua Yan, Ju Liu, Jiande Sun, Xiuhua Ji
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引用次数: 2

Abstract

In this paper, a kind of super-resolution image fusion algorithm is proposed to regularize the distortion of the reconstructed high-resolution (HR) image caused by the inaccurate image registration and the observation noise. For this purpose, the registration error, caused by inaccurate image registration, is considered as the noise mean added in the observation noise known as additive white Gaussian noise (AWGN). Based on this consideration, two constraints are regulated pixel by pixel within the framework of Millerpsilas regularization, and combined with regularization parameters to construct one cost function. The regularization parameters are adaptively estimated in each pixel in terms of the registration error, as well as in each observation channel in terms of the AWGN. Simulation shows that the proposed regularized SR algorithm can fuse the information from multiple LR images effectively and achieve the reconstructed HR images with much sharper edges and higher PSNR.
考虑图像配准不准确和观测噪声的正则化超分辨率图像融合
本文提出了一种超分辨率图像融合算法,用于校正由于图像配准不准确和观测噪声造成的重构高分辨率图像畸变。为此,将图像配准不准确引起的配准误差视为加在观测噪声中的噪声均值,称为加性高斯白噪声(AWGN)。基于这一考虑,在Millerpsilas正则化框架内逐像素调节两个约束,并结合正则化参数构造一个代价函数。根据配准误差自适应估计每个像素的正则化参数,并根据AWGN自适应估计每个观测通道的正则化参数。仿真结果表明,该算法能够有效地融合多幅LR图像信息,重构出边缘更清晰、PSNR更高的HR图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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