Image Spam Filtering Using Visual Information

B. Biggio, G. Fumera, I. Pillai, F. Roli
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引用次数: 54

Abstract

We address the problem of recognizing the so-called image spam, which consists in embedding the spam message into attached images to defeat techniques based on the analysis of e-mails' body text, and in using content obscuring techniques to defeat OCR tools. We propose an approach to recognize image spam based on detecting the presence of content obscuring techniques, and describe a possible implementation based on two low-level image features aimed at detecting obscuring techniques whose consequence is to compromise the OCR effectiveness resulting in character breaking or merging, or in the presence of noise interfering with characters in the binarized image. A preliminary experimental investigation of this approach is reported on a personal data set of spam images.
使用视觉信息过滤图像垃圾邮件
我们解决了识别所谓的图像垃圾邮件的问题,这包括将垃圾邮件嵌入到附加图像中,以击败基于电子邮件正文分析的技术,并使用内容模糊技术来击败OCR工具。我们提出了一种基于检测内容模糊技术存在的识别图像垃圾的方法,并描述了一种基于两个低级图像特征的可能实现,旨在检测模糊技术,其后果是损害OCR有效性,导致字符破坏或合并,或者存在干扰二值化图像中字符的噪声。本文在一个垃圾图片的个人数据集上对该方法进行了初步实验研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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