使用PFF和LGG方法检测图像的相似性和差异性

N. Bourbakis
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引用次数: 3

摘要

本文提出了两种用于图像比较和评估由于隐藏信息、变化或噪声而产生的伪像的可见性的方法。第一种方法是基于像素流函数(PFF),能够通过垂直、水平和对角线投影像素值来检测图像的变化。这些投影创建了与水平、垂直和对角线汇总的像素平均值相关的“函数”。这些函数表示图像签名。图像签名的比较定义了图像之间的差异。第二种方法是基于启发式图模型,称为局部全局图(LGG),用于评估数字图像中修改的可见性。LGG基于分割和比较片段,同时对其属性的差异设置阈值。在c++中实现了这些方法,并给出了它们的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting similarities and differences in images using the PFF and LGG approaches
This paper presents two methods for comparison of images and evaluation of visibility of artifacts due to hidden information, changes or noise. The first method is based on pixel flow functions (PFF) able to detect changes in images by projecting the pixel values vertically, horizontally and diagonally. These projections create "functions" related with the average values of pixels summarized horizontally, vertically and diagonally. These functions represent image signatures. The comparison of image signatures defines differences in images. The second method is based on a heuristic graph model, known as local-global graph (LGG), for evaluating visibility of modifications in digital images. The LGG is based on segmentation and comparing the segments while thresholding the differences in their attributes. The methods have been implemented in C++ and their performance is presented.
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