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Feature Point Detection for Repacked Android Apps

Mohd Abdul Rahim Khan, Manoj Jain

2020Intelligent Automation & Soft Computing13 citationsDOIOpen Access PDF

Abstract

Repacked mobile applications and obfuscation attacks constitute a significant threat to the Android technological ecosystem. A novel method using the Constant Key Point Selection and Limited Binary Pattern Feature (CKPS: LBP) extraction-based Hashing has been proposed to identify repacked Android applications in previous works. Although the approach was efficient in detecting the repacked Android apps, it was not suitable for detecting obfuscation attacks. Additionally, the time complexity needed improvement. This paper presents an optimization technique using Scalable Bivariant Feature Transformation extract optimum feature-points extraction, and the Harris method applied for optimized image hashing. The experiments produced better results than the CKPS: LBP method in terms of execution time. Further, the proposed method is extended to detect obfuscation of malware attacks by detecting the packed executables, which is the initial step in obfuscation attack detection.

Topics & Concepts

Computer scienceObfuscationAndroid (operating system)MalwareScalabilityFeature selectionFeature extractionArtificial intelligenceData miningComputer securityDatabaseOperating systemAdvanced Malware Detection TechniquesSoftware Testing and Debugging TechniquesDigital and Cyber Forensics
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