Image Extrema Analysis and Blur Detection with Identification

R. M. Chong, Toshihisa Tanaka
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引用次数: 18

Abstract

In real image processing applications, images may be blurred or not. When blur is present, the type and degree of degradation vary from one image to another. The process of restoring these images are usually computationally demanding so that there is a need to first detect blurs. If an image is not blurred then it need not undergo the restoration process. In this work, a novel algorithm that simultaneously detects and identifies blurs, is proposed. This method is based on the analysis of extrema values in an image. The extrema histograms are first constructed then analyzed in order to extract feature values. The distinctness of these values in the presence of blur is used. It is computationally simple and fast thereby making it suitable for preprocessing especially in practical imaging applications. Experimental results on natural images and its synthetically blurred versions show the validity of the proposed method.
图像极值分析与模糊检测与识别
在实际的图像处理应用中,图像可能会模糊或不模糊。当模糊存在时,退化的类型和程度因图像而异。恢复这些图像的过程通常需要计算,因此需要首先检测模糊。如果图像没有模糊,那么它就不需要进行恢复过程。在这项工作中,提出了一种同时检测和识别模糊的新算法。该方法基于对图像极值的分析。首先构造极值直方图,然后对极值直方图进行分析,提取特征值。在存在模糊的情况下使用这些值的明显性。它计算简单,速度快,因此适合于预处理,特别是在实际成像应用中。在自然图像及其综合模糊图像上的实验结果表明了该方法的有效性。
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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