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VEDRANDO: A Novel Way to Reveal Stealthy Attack Steps on Android through Memory Forensics.

Authors :
Bellizzi, Jennifer
Losiouk, Eleonora
Conti, Mauro
Colombo, Christian
Vella, Mark
Source :
Journal of Cybersecurity & Privacy; Sep2023, Vol. 3 Issue 3, p364-395, 32p
Publication Year :
2023

Abstract

The ubiquity of Android smartphones makes them targets of sophisticated malware, which maintain long-term stealth, particularly by offloading attack steps to benign apps. Such malware leaves little to no trace in logs, and the attack steps become difficult to discern from benign app functionality. Endpoint detection and response (EDR) systems provide live forensic capabilities that enable anomaly detection techniques to detect anomalous behavior in application logs after an app hijack. However, this presents a challenge, as state-of-the-art EDRs rely on device and third-party application logs, which may not include evidence of attack steps, thus prohibiting anomaly detection techniques from exposing anomalous behavior. While, theoretically, all the evidence resides in volatile memory, its ephemerality necessitates timely collection, and its extraction requires device rooting or app repackaging. We present VEDRANDO, an enhanced EDR for Android that accomplishes (i) the challenge of timely collection of volatile memory artefacts and (ii) the detection of a class of stealthy attacks that hijack benign applications. VEDRANDO leverages memory forensics and app virtualization techniques to collect timely evidence from memory, which allows uncovering attack steps currently uncollected by the state-of-the-art EDRs. The results showed that, with less than 5% CPU overhead compared to normal usage, VEDRANDO could uniquely collect and fully reconstruct the stealthy attack steps of ten realistic messaging hijack attacks using standard anomaly detection techniques, without requiring device or app modification. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
2624800X
Volume :
3
Issue :
3
Database :
Complementary Index
Journal :
Journal of Cybersecurity & Privacy
Publication Type :
Academic Journal
Accession number :
172394321
Full Text :
https://doi.org/10.3390/jcp3030019