Robust scareware image detection
- Christian Seifert ,
- Jack W. Stokes ,
- Christina Colcernian ,
- John Platt ,
- Long Lu
2013 International Conference on Acoustics, Speech, and Signal Processing |
Published by IEEE
In this paper, we propose an image-based detection method to identify web-based scareware attacks that is robust to evasion techniques. We evaluate the method on a large-scale data set that resulted in an equal error rate of 0.018%. Conceptually, false positives may occur when a visual element, such as a red shield, is embedded in a benign page. We suggest including additional orthogonal features or employing graders to mitigate this risk. A novel visualization technique is presented demonstrating the acquired classifier knowledge on a classified screenshot.