Deblurring of grayscale images using inverse and Wiener filter

P. Sankhe, M. Patil, M. Margaret
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引用次数: 17

Abstract

Images are produced to record or display useful information. Due to imperfections in the imaging and capturing process, however, the recorded image invariably represents a degraded version of the original scene. The field of image restoration (sometimes referred to as image deblurring or image deconvolution) is concerned with the reconstruction or estimation of the uncorrupted image from a blurred and noisy one. The purpose of image restoration is to produce best estimate of source image, given the recorded data and some apriori knowledge. In this paper, technique is presented which attempts to use two algorithms for image restorations: Wiener filter and Fourier inverse filter including further work as implementation of Lucy Richardson algorithm. Inverse filtering is the process of recovering the degraded image. Inverse filters are useful for precorrecting an input signal in anticipation of the degradations caused by the system. This approach also suffers from problems that in most cases produce unacceptable results, assumes no noise, only blurring. The preferred approach is therefore to use methods based on least squares. The so-called Wiener filter is the classic solution to the problem of minimizing the mean squared restoration error, the difference between the original and restored images.
利用逆滤波和维纳滤波对灰度图像进行去模糊
产生图像是为了记录或显示有用的信息。然而,由于成像和捕捉过程中的缺陷,记录的图像总是代表原始场景的降级版本。图像恢复领域(有时称为图像去模糊或图像反卷积)涉及从模糊和噪声的图像中重建或估计未损坏的图像。图像恢复的目的是在给定记录数据和一些先验知识的情况下对源图像进行最佳估计。本文提出了一种尝试使用两种算法进行图像恢复的技术:维纳滤波和傅立叶反滤波,包括Lucy Richardson算法的进一步实现。反滤波是恢复退化图像的过程。逆滤波器用于预校正由系统引起的退化的输入信号。这种方法也存在一些问题,在大多数情况下会产生不可接受的结果,假设没有噪声,只有模糊。因此,首选的方法是使用基于最小二乘的方法。所谓的维纳滤波是最小化均方恢复误差问题的经典解决方案,即原始图像与恢复图像之间的差异。
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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