Forgery Detection For High-Resolution Digital Images Using FCM And PBFOAAlgorithm

S. Kaur, Nidhi Bhatla
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Abstract

Image forgery detection is the area of research in the field of biometric and forensics. Digital pictures are the resource of data. In the present world of technology, image processing software tools have developed to generate and modify digital images from one location to another. With the current technology, it is simple to establish image forgery by addition and subtraction of the components from the pictures that lead to image interfering. Copy-move image forgery is created by copying and pasting the element in a similar image. Hence, copy-move forgery has become an area of research in the image forensic unit. Various methods have been implemented to detect digital image forgery. Some issues still required to resolve like time complexity, fake, and blurred image. In existing research, the block and feature-based approach used to remove a forged area from the image using SIFT and RANSAC algorithm. The forgery dataset of the 80 pictures collected to achieve accuracy of up to 95%. In the research work, the PBFOA method has been implemented to optimize and extract the features using the component analysis method. FCM is used for image segmentation in the input image. PBFOA is based on an optimization process to select valuable features based on the calculation of the fitness function. In this method, two steps are used to re-verify the instance, features (i) Slower and faster condition. BFOA steps are described in detail in this research paper. Initial steps, Spread the feature set in the whole system. In the rapid condition selected and to eliminate the valuable features one at a time, then reproduction phase is implemented with the help of the fitness function to recover the feature values and detect the forgery information in the uploaded image. The simulation setup using MATLAB 2016a version and improve the accuracy rate and image quality parameter. Performance analysis depends on the proposed metrics FAR, FRR, ACC, Precision, Recall, and compared with the existing methods.
基于FCM和pbfoa算法的高分辨率数字图像伪造检测
图像伪造检测是生物识别和法医学领域的一个研究领域。数码图片是数据的源泉。在当今的技术世界中,图像处理软件工具已经发展到从一个位置到另一个位置生成和修改数字图像。在现有的技术条件下,通过对图像中引起图像干扰的成分进行加减处理,可以很容易地实现图像伪造。复制-移动图像伪造是通过复制和粘贴类似图像中的元素来创建的。因此,复制-移动伪造已成为图像法医单位的一个研究领域。各种检测数字图像伪造的方法已经实现。一些问题仍然需要解决,如时间复杂性,虚假和模糊的图像。在现有的研究中,基于块和特征的方法采用SIFT和RANSAC算法从图像中去除伪造区域。该伪造数据集收集了80张图片,准确率达到95%以上。在研究工作中,实现了PBFOA方法,利用成分分析法对特征进行优化和提取。FCM用于输入图像的图像分割。PBFOA是一种基于适应度函数计算的优化过程来选择有价值的特征。在该方法中,使用两个步骤来重新验证实例,特征(i)较慢和较快的条件。本文对BFOA的步骤进行了详细的描述。初始步骤,将功能集扩展到整个系统。在快速选择的条件下,每次剔除一个有价值的特征,然后利用适应度函数实现复制阶段,恢复特征值,检测上传图像中的伪造信息。利用MATLAB 2016a版进行仿真设置,提高了准确率和图像质量参数。性能分析取决于所提出的指标FAR, FRR, ACC, Precision, Recall,并与现有方法进行比较。
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