A Non-Content based Optimized Approach for Image Spam Detection

Anuraj Singh, Anurag Srivastava, Evi Agarwal
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Abstract

Image spam is a form of email spam that gained popularity in the last decade. Spammers have introduced the technique of image spam to bypass the traditional text-based spam filters. In this research, two novel techniques for image spam detection have been proposed and developed that are efficient as well have low computational complexity. The proposed techniques are non-content based. The first technique extracts low-level and high-level image properties and then feed these features into Random Forest classifier to perform classification. The second technique uses a Convolutional Neural Network where the raw image is directly fed into the CNN model to perform the classification between spam and non-spam images. This approach will remove the need for manual feature extraction thus reduce computational complexity. A comparative analysis is then performed between the two approaches.
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一种非内容的图像垃圾检测优化方法
图片垃圾邮件是一种电子邮件垃圾邮件,在过去十年中越来越流行。垃圾邮件发送者引入了图像垃圾邮件技术来绕过传统的基于文本的垃圾邮件过滤器。本研究提出并发展了两种高效且计算复杂度低的图像垃圾检测新技术。所建议的技术是非基于内容的。第一种技术提取低级和高级图像属性,然后将这些特征输入随机森林分类器进行分类。第二种技术使用卷积神经网络,将原始图像直接馈送到CNN模型中,以执行垃圾邮件和非垃圾邮件图像之间的分类。这种方法将消除人工特征提取的需要,从而降低计算复杂度。然后对两种方法进行比较分析。
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