ThreatVisionAI: A Hybrid CNN-ViT Framework for Image-Based Malware Classification
摘要
Traditional malware detection methods struggle to generalize to obfuscated or previously unseen threats. This paper introduces ThreatVisionAI, a hybrid malware family classification framework that integrates a raw-image CNN, a wavelet-based CNN, and a Vision Transformer (ViT) to capture complementary spatial, frequency-domain, and global relational features in malware images. The wavelet-based CNN captures multi-scale frequency information that helps distinguish closely related families, while the ViT branch models long-range dependencies across the image. Evaluated on the Malimg dataset, ThreatVisionAI achieves 98.01% accuracy and a weighted F1 score of 0.9742, with wavelet-domain features providing measurable gains on minority and visually similar families. These results confirm that frequency-aware and transformer-based representations improve image-based malware family classification.
引用
@article{arxiv.2607.03653,
title = {ThreatVisionAI: A Hybrid CNN-ViT Framework for Image-Based Malware Classification},
author = {Allyson Taylor and Prashanth BusiReddyGari},
journal= {arXiv preprint arXiv:2607.03653},
year = {2026}
}
备注
Proceedings of the IEEE AIIoT World Congress Conference, 2026