基于神经网络的垃圾图像分类统计特征提取

M. Soranamageswari, C. Meena
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引用次数: 42

摘要

当电子邮件的使用继续时,未经请求的大量电子邮件也继续增长。此类垃圾邮件占用服务器存储空间,占用大量网络带宽。为了克服这个严重的问题,反垃圾邮件过滤器成为互联网安全的一个常见组成部分。Image spamming是近年来出现的一种将文字嵌入到图片或图像文件中的新型垃圾邮件发送方式。识别和防止垃圾邮件是互联网世界面临的最大挑战之一。文献中已经建立了许多识别垃圾图像的方法。人工神经网络是解决特征提取问题的有效分类方法。本文提出了一种基于统计图像特征直方图和图像块均值的垃圾图像分类实验系统。本文对基于颜色直方图和均值的图像分类进行了比较研究。实验结果表明了该系统的性能,并以最小的假阳性达到了最佳效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical Feature Extraction for Classification of Image Spam Using Artificial Neural Networks
When the usages of electronic mail continue, unsolicited bulk email also continues to grow. These unsolicited bulk emails occupies server storage space and consumes large amount of network bandwidth. To overcome this serious problem, Anti-spam filters become a common component of internet security. Recently, Image spamming is a new kind of method of email spamming in which the text is embedded in image or picture files. Identifying and preventing spam is one of the top challenges in the internet world. Many approaches for identifying image spam have been established in literature. The artificial neural network is an effective classification method for solving feature extraction problems. In this paper we present an experimental system for the classification of image spam by considering statistical image feature histogram and mean value of an block of image. A comparative study of image classification based on color histogram and mean value is presented in this paper. The experimental result shows the performance of the proposed system and it achieves best results with minimum false positive.
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