基于卷积神经网络的恶意图像检测

Ahsan Iqbal, Samabia Tehsin, Sumaira Kausar, Nayab Mishal
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引用次数: 0

摘要

由于JPEG标头隐藏在恶意的有效载荷中,图像已经成为对系统和网络安全的威胁。JPEG的标头有许多段,可以用可执行代码操纵,为恶意软件攻击做准备。图像通常被用户认为是无害的、无风险的,因此成为网络攻击的焦点。系统和网络中的安全威胁是由恶意图像引起的,需要通过引入一种检测技术来最小化,这种技术可能涉及标头的特征。在我们提出的方法中,JPEG标题被转换成灰度图像来进行分类。提出了一种基于卷积神经网络的恶意图像检测模型。我们使用了从巴利亚大学CRC安装的不同蜜罐中收集的jpeg数据集。数据集包含1100张恶意图像和1100张良性图像,采用基于深度学习的检测方法。我们达到了96%的准确率。我们的恶意图像检测方法可以帮助每个人防止通过图像进行的恶意软件攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Malicious Image Detection Using Convolutional Neural Network
Images have become a threat to the security of the systems and networks since JPEG headers are concealed with malicious payloads. Header in a JPEG has many segments which can be manipulated with executable codes to prepare for malware attack. Images are usually perceived as harmless and non-risky by the users so they have become the focus of attention for carrying the cyber-attacks. Security threats in systems and networks which are caused by malicious images, are needed to be minimized by introducing a detection technique, a technique which can involve features of headers. In our proposed method JPEG headers are transformed into grayscale images to employ classification. Convolutional Neural Network based model is proposed which aims the detection of malicious images. We have used a dataset of JPEGs which was collected from different honeypots installed by CRC of Bahria University. Dataset contains 1100 malicious and 1100 benign images to employ the detection method based on deep learning. We have achieved 96% accuracy. Our method of malicious image detection would help everyone to prevent the malware attacks which are carried through images.
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