Extension of no-reference deblurring methods through image fusion

M. Ferris, Erik P. Blasen, Michel McLaughlin
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引用次数: 6

Abstract

Extracting an optimal amount of information from a blurred image without a reference image for comparison is an pressing issue in image quality enhancement. Most studies have approached deblurring by using iterative algorithms in an attempt to deconvolve the blurred image into the ideal image. Deconvolution is difficult due to the need to estimate a point spread function for the blur after each iteration, which can be computationally expensive for many iterations which often causes some amount of distortion or "ringing" in the deblurred image. However, image fusion may provide a solution. By deblurring a no-reference image, then fusing it with the blurred image, it is possible to extract additional salient information from the fused image; however the deblurring process causes some degree of information loss. The act of fixing one section of the image can cause distortion in another section of the image. Hence, by fusing the blurred and deblurred images together, it is critical to retain important information from the blurred image and reduce the "ringing" in the deblurred image. To evaluate the fusion process, three different evaluation metrics are used: Mutual Information (MI), Mean Square Error (MSE), and Peak Signal to Noise Ratio (PSNR). This paper details an extension of the no-reference image deblurring process and the initial results indicate that image fusion has the potential to be a useful tool in recovering information in a blurred image.
通过图像融合扩展无参考去模糊方法
在没有参考图像的情况下,从模糊图像中提取最优信息量是图像质量增强中的一个紧迫问题。大多数研究都是通过使用迭代算法来尝试将模糊图像反卷积到理想图像中。反卷积是困难的,因为每次迭代后需要估计模糊的点扩展函数,这对于许多迭代来说可能是计算昂贵的,这通常会在去模糊的图像中导致一定程度的失真或“响”。然而,图像融合可能提供一个解决方案。通过去模糊无参考图像,然后将其与模糊图像融合,可以从融合图像中提取额外的显著信息;然而,去模糊过程会造成一定程度的信息丢失。固定图像的一部分的行为会导致图像的另一部分失真。因此,通过将模糊图像和去模糊图像融合在一起,保留模糊图像中的重要信息并减少去模糊图像中的“振铃”是至关重要的。为了评估融合过程,使用了三种不同的评估指标:互信息(MI)、均方误差(MSE)和峰值信噪比(PSNR)。本文详细介绍了无参考图像去模糊过程的扩展,初步结果表明,图像融合有可能成为恢复模糊图像中信息的有用工具。
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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