社交媒体应用中拼接图像的检测

Munera A. Jabaar, S. N. Alsaad
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引用次数: 0

摘要

在当今科技时代,社交媒体在人们的日常生活中扮演着重要的角色。每天都有数十万张图片在WhatsApp、Instagram、Twitter、Facebook和Snapchat等社交媒体应用程序上传播。照片是用户在社交媒体上分享的最流行的媒体类型之一。小团体甚至个人很容易在很短的时间内大规模地编辑和操纵这些图像,从而威胁到这些图像的可信度。本文实现了一种对社交媒体图片内容进行验证和分类的检测系统。该系统采用基于卷积神经网络(CNN)的深度学习来检测WhatsApp上的拼接图像。CASIA v2数据集中的图像(转换为适用于WhatsApp)用于训练和测试。结果表明,训练准确率为99.19%,测试准确率为87.438%。
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Detection of Spliced Images in Social Media Application
Social media in the current technological era plays a major role in people's daily lives. Every day hundreds of thousands of images are circulated on social media applications such as WhatsApp, Instagram, Twitter, Facebook, and Snapchat. Photo is one of the most popular types of media that is shared among users on social media. It has become easy for small groups and even for individuals to edit and manipulate these images on a large scale in a very short time in such a way threatening the credibility of these images. In this paper, a detection system is implemented for verifying and classifying the content of social media images. The system adopted Deep Learning based on a convolutional neural network (CNN) to detect spliced images on WhatsApp. The images in dataset CASIA v2 (transformed to be appropriate for WhatsApp) are used for training and testing. The results point to an accuracy of 99.19% of training and 87.438% of testing.
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