Enhancing PE Malware Detection: A Comparative Study of Feature-Based and Image-Based Representations
Selvaganapathy Shymala Gowri (),
Vinayakumar Ravi () and
S. Sowmya ()
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Selvaganapathy Shymala Gowri: PSG College of Technology, Department of Information Technology
Vinayakumar Ravi: Center for Artificial Intelligence, Prince Mohammad Bin Fahd University
S. Sowmya: PSG College of Technology, Department of Information Technology
A chapter in Reliability in Cyber-Physical Systems: The Human Factor Perspective, 2026, pp 229-240 from Springer
Abstract:
Abstract Windows Portable Executable (PE) files are a common format for software applications and so they are also a primary target for malware authors. The increasing complexity of malicious software in the form of polymorphic and obfuscated malware, poses a challenge for traditional detection systems that are solely based on static or dynamic analysis. For enhancing the detection accuracy and resilience, this study explores a hybrid malware classification framework. It combines the conventional machine learning models trained on static features with image-based deep learning techniques which transform the metadata into visual representations from the features. Models such as Random Forest, CNN, and MLP are trained on PE file features that are JSON-extracted and a fine-tuned MobileNetV2 model is used for classifying malware and benign files based on their image equivalents. The proposed approach aims to use the strengths of both the structured and spatial representations to for improving the generalization and robustness in detection of malware.
Keywords: Malware classification; Windows PE; Image-based malware detection; Static and dynamic malware analysis; Transfer learning (search for similar items in EconPapers)
Date: 2026
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Persistent link: https://EconPapers.repec.org/RePEc:spr:ssrchp:978-3-032-09917-4_15
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DOI: 10.1007/978-3-032-09917-4_15
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