New Filter Based Unsupervised Rules for Boolean Blur Metric

P. Shivakumara, S. Noushath, G. Kumar
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引用次数: 5

Abstract

This paper presents a simple and novel no reference filter based rules for Boolean blur metric (FBBM) to classify the blurred images from the database of home photos. Our primary goal of this paper is to classify the blurred images rather than measuring degree of blurness in the image or deblur an image. Thus the name given to this approach is Boolean blur metric (BBM). The proposed approach explores new rules based on establishing the unique relationship between the arithmetic mean filter, geometric mean filter and median filter of given image with the help of canny edge detector. The metric uses the disadvantage of arithmetic mean filter and advantage of geometric mean filter and median filers to define Boolean rule. Further, we have shown that the number of canny edge components in filtered images makes difference in defining rule. Finally, the proposed approach is compared with the well known existing no reference perceptual blur metrics to show that existing metrics are not suitable for classification. In addition, the experimental results revealed that the proposed method works even for rotated and scaled images
基于滤波的布尔模糊度量新无监督规则
提出了一种基于无参考滤波器的布尔模糊度量(FBBM)规则,用于对家庭照片数据库中的模糊图像进行分类。本文的主要目的是对模糊图像进行分类,而不是测量图像中的模糊程度或去除图像的模糊。因此,这种方法被称为布尔模糊度量(BBM)。该方法利用canny边缘检测器建立给定图像的算术平均滤波器、几何平均滤波器和中值滤波器之间的唯一关系,探索新的规则。该度量利用了算术平均滤波器的缺点和几何平均滤波器和中值滤波器的优点来定义布尔规则。此外,我们已经证明,在滤波图像中,狡猾的边缘成分的数量对规则的定义有不同的影响。最后,将该方法与现有的无参考感知模糊度量进行比较,表明现有度量不适合分类。此外,实验结果表明,该方法即使对旋转和缩放的图像也有效
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