Computer vision has witnessed several advances in recent years, with unprecedented performance provided by deep representation learning research. Image formats thus appear attractive to other fields such as malware detection, where deep learning on images alleviates the need for comprehensively hand-crafted features generalising to different malware variants. We postulate that this research direction could become the next frontier in Android malware detection, and therefore requires a clear roadmap to ensure that new approaches indeed bring novel contributions. We contribute with a first building block by developing and assessing a baseline pipeline for image-based malware detection with straightforward steps. We propose DexRay, which converts the bytecode of the app DEX files into grey-scale "vector" images and feeds them to a 1-dimensional Convolutional Neural Network model. We view DexRay as foundational due to the exceedingly basic nature of the design choices, allowing to infer what could be a minimal performance that can be obtained with image-based learning in malware detection. The performance of DexRay evaluated on over 158k apps demonstrates that, while simple, our approach is effective with a high detection rate(F1-score= 0.96). Finally, we investigate the impact of time decay and image-resizing on the performance of DexRay and assess its resilience to obfuscation. This work-in-progress paper contributes to the domain of Deep Learning based Malware detection by providing a sound, simple, yet effective approach (with available artefacts) that can be the basis to scope the many profound questions that will need to be investigated to fully develop this domain.
翻译:近年来,计算机愿景取得了若干进步,通过深层演示研究提供了前所未有的业绩。因此,图像格式对恶意软件检测等其他领域似乎具有吸引力,因为通过对图像的深层学习,可以减轻全面手工制作功能对不同恶意软件变异的概括性需求。我们假设,这一研究方向可以成为安卓恶意软件检测的下一个前沿,因此需要一个清晰的路线图,以确保新办法确实带来新的贡献。我们的第一个基石是开发和评估基于图像的恶意软件检测基线管道,采取直接步骤。我们提议DexRay,将App DEX文件的字码转换为灰度“Vector”图像,并将其输入到一个一维化的驱动器神经网络模型。我们认为,DexRay是基础,因为设计选择具有极其基本的性质,因此可以推断出在以图像为基础对恶意检测进行学习后可以取得的最起码的性能。DexRay的绩效评估(对超过158k Apps ) 的绩效评估表明,我们的方法虽然简单,但以高的深度检测率(F1-VC)将图像转换成灰质的深度“Veral-road roadal roadalalalalal road road as) roadal laxal lax lax lax lax lax lax lax lax