Frontiers of Data and Computing ›› 2025, Vol. 7 ›› Issue (6): 77-91.

CSTR: 32002.14.jfdc.CN10-1649/TP.2025.06.008

doi: 10.11871/jfdc.issn.2096-742X.2025.06.008

• Special Issue: Call for Papers for the 40th National Conference on Computer Security • Previous Articles     Next Articles

Multi-Feature Fusion-Based Detection and Classification of Portable Executable Malware

LINGHU Rongwei1(),ZHANG Yu1,*(),SHI Yuanquan2,YANG Yujun3   

  1. 1. College of Cybersecurity, Guangdong Polytechnic Normal University, Guangzhou, Guangdong 510665, China
    2. School of Computer Science, Hunan First Normal University, Changsha, Hunan 410205, China
    3. School of Computer and Artificial Intelligence, Huaihua University, Huaihua, Hunan 418000, China
  • Received:2025-08-04 Online:2025-12-20 Published:2025-12-17
  • Contact: ZHANG Yu E-mail:Linghu@gpnu.edu.cn;bullzhangyu@gpnu.edu.cn

Abstract:

[Objective] This paper is to address the limitations of traditional static malware analysis methods which heavily rely on disassembly technology and involve time-consuming feature extraction. [Methods] Unlike prior work that depends on disassembly or dynamic analysis, this method directly extracts entropy, third-order Markov matrices, and import/export-table features from the raw binaries, fusing the three into a unified three-dimensional tensor. Bilinear interpolation is then applied for size normalization, producing fixed-size visualized images that are fed into a convolutional neural network for classification. [Results] The proposed method significantly reduces feature-extraction time while preserving robustness against complex variants. Experiments conducted on the BODMAS dataset demonstrate that the proposed method achieves a high classification accuracy of 97.06%. [Conclusions] The results validate the effectiveness and robustness of the proposed method..

Key words: malicious code, visualization, feature extraction, feature fusion, deep learning