Younas Nazish, Riaz Shazia, Ali Saqib, Khan Rafiullah, Ali Farman, Kwak Daehan
Department of Computer Science, University of Agriculture Faisalabad, Faisalabad, Pakistan.
Department of Computer Science, Government College Women University, Faisalabad, Faisalabad, Pakistan.
PeerJ Comput Sci. 2025 Apr 4;11:e2727. doi: 10.7717/peerj-cs.2727. eCollection 2025.
Malware presents a significant threat to computer networks and devices that lack robust defense mechanisms, despite the widespread use of anti-malware solutions. The rapid growth of the Internet has led to an increase in malicious code attacks, making them one of the most critical challenges in network security. Accurate identification and classification of malware variants are crucial for preventing data theft, security breaches, and other cyber risks. However, existing malware detection methods are often inefficient or inaccurate. Prior research has explored converting malicious code into grayscale images, but these approaches are often computationally intensive, especially in binary form. To address these challenges, we propose the Malware Variants Detection System (MVDS), a novel technique that transforms malicious code into color images, enhancing malware detection capabilities compared to traditional methods. Our approach leverages the richer information in color images to achieve higher classification accuracy than grayscale-based methods. We further improve the detection process by employing transfer learning to automatically identify and classify malware images based on their distinctive features. Empirical results demonstrate that MVDS achieves 97.98% accuracy with high detection speed, highlighting its potential for practical implementation in strengthening network security.
尽管反恶意软件解决方案被广泛使用,但恶意软件对缺乏强大防御机制的计算机网络和设备构成了重大威胁。互联网的迅速发展导致恶意代码攻击增加,使其成为网络安全中最关键的挑战之一。准确识别和分类恶意软件变体对于防止数据盗窃、安全漏洞和其他网络风险至关重要。然而,现有的恶意软件检测方法往往效率低下或不准确。先前的研究探索了将恶意代码转换为灰度图像,但这些方法通常计算量很大,尤其是在二进制形式下。为了应对这些挑战,我们提出了恶意软件变体检测系统(MVDS),这是一种将恶意代码转换为彩色图像的新技术,与传统方法相比,增强了恶意软件检测能力。我们的方法利用彩色图像中更丰富的信息,以实现比基于灰度的方法更高的分类准确率。我们通过采用迁移学习来根据恶意软件图像的独特特征自动识别和分类,进一步改进了检测过程。实证结果表明,MVDS在高检测速度下实现了97.98%的准确率,突出了其在加强网络安全方面实际应用的潜力。