Copy Move Image Forgery Detection using Multi-Level Local Binary Pattern Algorithm

IF 1.7 Q2 ENGINEERING, MULTIDISCIPLINARY
Marwa Emad Mahdi, Nada Hussein M Ali
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引用次数: 0

Abstract

Digital image manipulation has become increasingly prevalent due to the widespread availability of sophisticated image editing tools. In copy-move forgery, a portion of an image is copied and pasted into another area within the same image. The proposed methodology begins with extracting the image's Local Binary Pattern (LBP) algorithm features. Two main statistical functions, Stander Deviation (STD) and Angler Second Moment (ASM), are computed for each LBP feature, capturing additional statistical information about the local textures. Next, a multi-level LBP feature selection is applied to select the most relevant features. This process involves performing LBP computation at multiple scales or levels, capturing textures at different resolutions. By considering features from multiple levels, the detection algorithm can better capture both global and local characteristics of the manipulated regions, enhancing the accuracy of forgery detection. To achieve a high accuracy rate, this paper presents a variety of scenarios based on a machine-learning approach. In Copy-Move detection, artifacts and their properties are used as image features and support Vector Machine (SVM) to determine whether an image is tampered with. The dataset is manipulated to train and test each classifier; the target is to learn the discriminative patterns that detect instances of copy-move forgery. Media Integration and Call Center Forgery (MICC-F2000) were utilized in this paper. Experimental evaluations demonstrate the effectiveness of the proposed methodology in detecting copy-move. The implementation phases in the proposed work have produced encouraging outcomes. In the case of the best-implemented scenario involving multiple trials, the detection stage achieved a copy-move accuracy of 97.8 %. 
利用多级局部二进制模式算法进行复制移动图像伪造检测
由于复杂图像编辑工具的普及,数字图像篡改变得越来越普遍。在复制移动伪造中,图像的一部分被复制并粘贴到同一图像的另一个区域。所提出的方法首先是提取图像的局部二进制模式(LBP)算法特征。针对每个 LBP 特征计算两个主要统计函数,即 Stander Deviation (STD) 和 Angler Second Moment (ASM),以捕捉有关局部纹理的其他统计信息。接下来,应用多级 LBP 特征选择来选出最相关的特征。这一过程包括在多个尺度或级别上进行 LBP 计算,捕捉不同分辨率下的纹理。通过考虑多个层次的特征,检测算法可以更好地捕捉被处理区域的全局和局部特征,从而提高伪造检测的准确性。为了实现高准确率,本文介绍了基于机器学习方法的多种应用场景。在复制移动检测中,人工痕迹及其属性被用作图像特征和支持向量机(SVM)来判断图像是否被篡改。对数据集进行处理以训练和测试每个分类器;目标是学习检测复制移动伪造实例的判别模式。本文使用了媒体集成和呼叫中心伪造数据集(MICC-F2000)。实验评估证明了所提出的方法在检测复制移动方面的有效性。建议工作的实施阶段取得了令人鼓舞的成果。在涉及多次试验的最佳实施方案中,检测阶段的复制移动准确率达到了 97.8%。
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来源期刊
Journal of Engineering
Journal of Engineering ENGINEERING, MULTIDISCIPLINARY-
CiteScore
4.20
自引率
0.00%
发文量
68
期刊介绍: Journal of Engineering is a peer-reviewed, Open Access journal that publishes original research articles as well as review articles in several areas of engineering. The subject areas covered by the journal are: - Chemical Engineering - Civil Engineering - Computer Engineering - Electrical Engineering - Industrial Engineering - Mechanical Engineering
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