Copy-Move Forgery Detection Using an Equilibrium Optimization Algorithm (CMFDEOA)

Ehsan Amiri, Ahmad Mosallanejad, Amir Sheikhahmadi
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Abstract

Image forgery detection is a new challenge. One type of image forgery is a copy-move forgery. In this method, part of the image is copied and placed at the most similar point. Given the existing algorithms and processing software, identifying forgery areas is difficult and has created challenges in various applications. The proposed method based on the Equilibrium Optimization Algorithm (EOA) helps image forgery detection by finding forgery areas. The proposed method includes feature detection, image segmentation, and detection of forgery areas using the EOA algorithm. In the first step, the image converts to a grayscale. Then, with the help of a discrete cosine transform (DCT) algorithm, it is taken to the signal domain. With the help of discrete wavelet transform (DWT), its appropriate properties are introduced. In the next step, the image is divided into blocks of equal size. Then the similarity search is performed with the help of an equilibrium optimization algorithm and a suitable proportion function. Copy-move forgery detection using the Equilibrium Optimization Algorithm (CMFDEOA) can find areas of forgery with an accuracy of about 86.21% for the IMD data set and about 83.98% for the MICC-F600 data set.
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基于平衡优化算法(CMFDEOA)的复制移动伪造检测
图像伪造检测是一个新的挑战。一种图像伪造是复制-移动伪造。在这种方法中,部分图像被复制并放置在最相似的点上。鉴于现有的算法和处理软件,识别伪造区域是困难的,并在各种应用中创造了挑战。该方法基于平衡优化算法(EOA),通过查找伪造区域来实现图像伪造检测。该方法包括特征检测、图像分割和使用EOA算法检测伪造区域。在第一步中,图像转换为灰度。然后,在离散余弦变换(DCT)算法的帮助下,将其带到信号域。借助离散小波变换(DWT),介绍了其相应的性质。在下一步中,图像被分成大小相等的块。然后利用平衡优化算法和合适的比例函数进行相似度搜索。使用平衡优化算法(CMFDEOA)的复制-移动伪造检测可以在IMD数据集上找到伪造区域,准确率约为86.21%,在MICC-F600数据集上准确率约为83.98%。
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