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Webshell detection with byte-level features based on deep learning

机译:基于深度学习的字节级别特征WebShell检测

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摘要

A webshell is a common tool for network intrusion. It has the characteristics of considerable threat and good concealment. An attacker obtains the management authority of web services through the webshell to penetrate and control web applications smoothly. Because webshell and common web page features are almost identical, it can evade detection by traditional firewalls and anti-virus software. Moreover, with the application of various anti-detection feature hiding techniques to the webshell, it is difficult to detect new patterns in time based on the traditional signature matching method. Webshell detection has been proposed based on deep learning. First, a dataset is opcoded, and the source code and opcode code features are fused. Second, the processed dataset is reduced using the SRNN and an attention mechanism, and the capsule network improves complete predictions for unknown pages. Experiments prove that the algorithm has higher detection efficiency and accuracy than traditional webshell detection methods, and it can also detect new types of webshell with a certain probability.
机译:webshell是网络入侵的常用工具。它具有威胁性大、隐蔽性好的特点。攻击者通过webshell获得web服务的管理权限,以顺利渗透和控制web应用程序。由于webshell和常见网页功能几乎相同,因此它可以逃避传统防火墙和防病毒软件的检测。此外,随着各种反检测特征隐藏技术在webshell中的应用,传统的特征匹配方法很难及时检测到新的模式。基于深度学习的Webshell检测技术已经被提出。首先,对数据集进行操作编码,并融合源代码和操作代码特征。其次,使用SRNN和注意机制减少处理后的数据集,胶囊网络改进了对未知页面的完整预测。实验证明,该算法比传统的webshell检测方法具有更高的检测效率和准确率,并能以一定的概率检测出新类型的webshell。

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