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A nonnegative sparsity induced similarity measure with application to cluster analysis of spam images

机译:非负稀疏性相似度度量及其在垃圾邮件图像聚类分析中的应用

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Image spam is an email spam that embeds text content into graphical images to bypass traditional spam filters. The majority of previous approaches focus on filtering image spam from client side. To effectively detect the attack activities of the spammers and fast trace back the spam sources, it is also essential to employ cluster analysis to comprehensively filter the image emails on the server side. In this paper, we present a nonnegative sparsity induced similarity measure for cluster analysis of spam images. This similarity measure is based on an assumption that a spam image should be represented well by the nonnegative linear combination of a small number of spam images in the same cluster. It is due to the observation that spammers generate large number of varieties from a single image source with different image processing and manipulation techniques. Experiments on a spam image dataset collected from our department email server demonstrated the advantages of the proposed approach.
机译:图片垃圾邮件是一种电子邮件垃圾邮件,它将文本内容嵌入图形图像中,从而绕过了传统的垃圾邮件过滤器。以前的大多数方法都集中于从客户端过滤图像垃圾邮件。为了有效地检测垃圾邮件发送者的攻击活动并快速追溯垃圾邮件源,使用群集分析来全面过滤服务器端的图像电子邮件也很重要。在本文中,我们提出了一种用于垃圾邮件图像聚类分析的非负稀疏性相似度度量。此相似性度量基于以下假设:垃圾邮件图像应由同一群集中少量垃圾邮件图像的非负线性组合很好地表示。由于观察到,垃圾邮件发送者使用不同的图像处理和处理技术从单个图像源生成大量变体。从我们部门电子邮件服务器收集的垃圾邮件图像数据集中进行的实验证明了该方法的优势。

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