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Copy-Move Forgery Detection Based on Automatic Threshold Estimation

机译:基于自动阈值估计的复制移动伪造检测

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摘要

Recently, users and news followers across websites face many fabricated images. Moreover, it goes far beyond that to the point of defaming or imprisoning a person. Hence, image authentication has become a significant issue. One of the most common tampering techniques is copy-move. Keypoint-based methods are considered as an effective method for detecting copy-move forgeries. In such methods, the feature extraction process is followed by applying a clustering technique to group spatially close keypoints. Most clustering techniques highly depend on the existence of a specific threshold to terminate the clustering. Determination of the most suitable threshold requires a huge amount of experiments. In this article, a copy-move forgery detection method is proposed. The proposed method is based on automatic estimation of the clustering threshold. The cutoff threshold of hierarchical clustering is estimated automatically based on clustering evaluation measures. Experimental results tested on various datasets show that the proposed method outperforms other relevant state-of-the-art methods.
机译:最近,网站上的用户和新闻追随者面临着许多伪造的图像。而且,它远远超出了诽谤或监禁个人的范围。因此,图像认证已经成为重要的问题。复制移动是最常见的篡改技术之一。基于关键点的方法被认为是检测复制移动伪造的有效方法。在这样的方法中,特征提取过程之后是应用聚类技术对空间上接近的关键点进行分组。大多数聚类技术高度依赖于终止聚类的特定阈值的存在。确定最合适的阈值需要大量的实验。本文提出了一种复制移动伪造检测方法。所提出的方法基于聚类阈值的自动估计。层次聚类的临界阈值是根据聚类评估方法自动估算的。在各种数据集上测试的实验结果表明,提出的方法优于其他相关的最新技术。

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