Real-Time Multi-Modal Subcomponent-Level Measurements for Trustworthy System Monitoring and Malware Detection
Farshad Khorrami, Ramesh Karri, Prashanth Krishnamurthy

TL;DR
This paper introduces a novel multi-modal subcomponent-level measurement approach for real-time system monitoring and malware detection, enhancing security even when the main processor is compromised.
Contribution
It proposes a new method to collect and fuse subcomponent measurements for anomaly detection, overcoming limitations of traditional main processor-based approaches.
Findings
Effective detection of malware even when main processor is compromised
Real-time monitoring of multiple subcomponents
Improved robustness against sophisticated cyber-attacks
Abstract
With increasingly sophisticated cyber-adversaries able to access a wider repertoire of mechanisms to implant malware such as ransomware, CPU/GPU keyloggers, and stealthy kernel rootkits, there is an urgent need for techniques to detect and mitigate such attacks. While state of the art relies on digital and analog side channel measurements assuming trustworthiness of measurements obtained on the main processor, such an approach has limitations since processor-based side channel measurements are potentially untrustworthy. Sophisticated adversaries (especially in late stage cyber attacks when they have breached the computer and network security systems such as firewalls and antivirus and penetrated the computer's OS) can compromise user-space and kernel-space measurements. To address this key limitation of state of the art, we propose a "subcomponent-level" approach to collect side channel…
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Taxonomy
TopicsAdvanced Malware Detection Techniques · Anomaly Detection Techniques and Applications · Network Security and Intrusion Detection
