No-reference multi-scale blur metric

K. Harrity, Soundararajan Ezekiel, M. Ferris, Maria Cornacchia, Erik Blasch
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引用次数: 5

Abstract

In recent years, digital cameras have been widely used for image capturing. These devices are equipped in cell phones, laptops, tablets, webcams, etc. Image quality is an important characteristic for any digital image analysis. Historically, techniques to assess image quality for these mobile products require a standard image to be used as a reference image. In this case, Root Mean Square Error and Peak Signal to Noise Ratio can be employed to measure the quality of the images. However, these methods are not valid if there is no reference image. Recent studies show that a Contourlet is a multi-scale transformation - which is an extension of two dimensional wavelet transformations - that can operate on an image at different noise levels without a reference image. In this paper, we develop a no-reference blur metric for digital images based on edges and noises in images. In our approach, a Contourlet transformation is applied to the blurred image, which applies a Laplacian Pyramid and Directional Filter Banks to get various image representations. The Laplacian Pyramid is a difference of Gaussian Pyramids between two consecutive levels. At each level in the Gaussian Pyramid, an image is smoothed with two Gaussians of different sizes then subtracted, subsampled and the input image is decomposed into directional sub-bands of images. Directional filter banks are designed to capture high frequency components representing directionality of the images which is similar to detailed coefficient in wavelet transformation. We focus on blur-measuring for each level and directions at the finest level of images to assess the image quality. Using the ratio of blur pixels to total pixels, we compare our results, which require no reference image, to standard full-reference image statistics. The results demonstrate that our proposed no reference metric has an increasing relationship with the blurriness of an image and is more sensitive to blur than the correlation full-reference metric.
无参考多尺度模糊度量
近年来,数码相机被广泛用于图像捕捉。这些设备装备在手机、笔记本电脑、平板电脑、网络摄像头等。图像质量是任何数字图像分析的一个重要特征。从历史上看,评估这些移动产品图像质量的技术需要使用标准图像作为参考图像。在这种情况下,可以使用均方根误差和峰值信噪比来衡量图像的质量。然而,如果没有参考图像,这些方法是无效的。近年来的研究表明,Contourlet变换是一种多尺度变换,是二维小波变换的扩展,它可以在没有参考图像的情况下对不同噪声水平的图像进行处理。本文提出了一种基于图像边缘和噪声的数字图像无参考模糊度量。在我们的方法中,对模糊图像应用Contourlet变换,该变换应用拉普拉斯金字塔和方向滤波器组来获得各种图像表示。拉普拉斯金字塔是高斯金字塔在两个连续层次之间的差值。在高斯金字塔的每一层,用两个不同大小的高斯信号对图像进行平滑,然后进行相减、次采样,将输入图像分解为图像的方向子带。方向滤波器组用于捕获代表图像方向性的高频分量,类似于小波变换中的细节系数。我们专注于在图像的最佳水平上对每个级别和方向进行模糊测量,以评估图像质量。使用模糊像素与总像素的比率,我们将不需要参考图像的结果与标准的全参考图像统计进行比较。结果表明,我们提出的无参考度量与图像模糊度的关系越来越大,并且比相关全参考度量对模糊更敏感。
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