Acceleration of Statistical Detection of Zero-day Malware in the Memory Dump Using CUDA-enabled GPU Hardware
This paper focuses on the anticipatory enhancement of methods of detecting stealth software. Cyber security detection tools are insufficiently powerful to reveal the most recent cyber-attacks which use malware. In this paper, we will present first an idea of the highest stealth malware, as this is t...
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Zusammenfassung: | This paper focuses on the anticipatory enhancement of methods of detecting
stealth software. Cyber security detection tools are insufficiently powerful to
reveal the most recent cyber-attacks which use malware. In this paper, we will
present first an idea of the highest stealth malware, as this is the most
complicated scenario for detection because it combines both existing
anti-forensic techniques together with their potential improvements. Second, we
present new detection methods, which are resilient to this hidden prototype. To
help solve this detection challenge, we have analyzed Windows memory content
using a new method of Shannon Entropy calculation; methods of digital
photogrammetry; the Zipf Mandelbrot law, as well as by disassembling the memory
content and analyzing the output. Finally, we present an idea and architecture
of the software tool, which uses CUDA enabled GPU hardware to speed-up memory
forensics. All three ideas are currently a work in progress. |
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DOI: | 10.48550/arxiv.1606.04662 |