基于深度学习的模糊 C 均值算法在数字图像处理中的应用对复制移动伪造检测过程的分析

V. P. Nampoothiri, Sugitha N
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引用次数: 0

摘要

- 数码照片的普及得益于数码环境中的技术进步。由于有了功能强大、使用方便的照片编辑软件程序,图像修改变得更加容易管理。因此,有效地检测图像的伪造部分是一个先决条件。因此,这项工作强调对通过复制移动方法篡改的图像进行被动伪造识别,即所谓的复制移动伪造检测(CMFD)。复制移动伪造(CMF)的基本原理是通过粘贴类似图片的某些区域来覆盖或重复图片中的某个区域。最初,输入的数字图像经过高斯滤波器预处理,以模糊图片,减少噪声。预处理完成后,进行多核模糊 C-Means 聚类(MKFCM),将图像分成多个聚类,利用 SIFT 方法提取基于独特属性的特征。最后,利用深度学习技术检测出图像中的伪造部分。实验分析表明,该方法能够高效、稳健地识别数字图像中的伪造部分,并在大量伪造图片上证明了所提策略的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Copy Move Forgery Detection Process by Applying Fuzzy C Means Algorithm Based on Deep Learning in Digital Image Processing
- The popularity of digital photos has developed due to technological advancements in the digital environment. Image alteration has become more manageable thanks to powerful and user-friendly photo editing software programs. Therefore, there was a prerequisite to detect the forged part of the image efficiently. Hence, this work emphasizes passive forgery recognition on images tampered by the copy move method, better called Copy Move Forgery Detection (CMFD). Copy Move Forgery (CMF) was fundamentally concerned with covering or repeating one area in a picture by pasting certain regions of a similar picture. Initially, the input digital images were preprocessed through a Gaussian filter to blur the picture to decrease noise. After preprocessing, Multi-Kernel Fuzzy C-Means clustering (MKFCM) was performed to divide the images into numerous clusters to extract the features based on distinctive attributes using the SIFT method. Lastly, with the deep learning technique, the forged parts of the images were detected. The experimental analysis demonstrates that the method was efficient and robust in identifying the forged part of the digital picture, and the performance of the proposed strategy was established on numerous forged pictures.
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