Authors
Bedeuro Kim, Alsharif Abuadbba, Yansong Gao, Yifeng Zheng, Muhammad Ejaz Ahmed, Surya Nepal, Hyoungshick Kim
Publication date
2021/6/21
Conference
2021 51st Annual IEEE/IFIP International Conference on Dependable Systems and Networks (DSN)
Pages
63-74
Publisher
IEEE
Description
Image-scaling is a typical operation that processes the input image before feeding it into convolutional neural network models. However, it is vulnerable to the newly revealed image-scaling attack. This work presents an image-scaling attack detection framework, Decamouflage, consisting of three independent detection methods: scaling, filtering, and steganalysis, to detect the attack through examining distinct image characteristics. Decamouflage has a pre-determined detection threshold that is generic. More precisely, as we have validated, the threshold determined from one dataset is also applicable to other different datasets. Extensive experiments show that Decamouflage achieves detection accuracy of 99.9% and 98.5% in the white-box and the black-box settings, respectively. We also measured its running time overhead on a PC with an Intel i5 CPU and 8GB RAM. The experimental results show that image …
Total citations
20212022202320241345
Scholar articles
B Kim, A Abuadbba, Y Gao, Y Zheng, ME Ahmed… - 2021 51st Annual IEEE/IFIP International Conference …, 2021
B Kim, A Abuadbba, Y Gao, Y Zheng, ME Ahmed… - arXiv preprint arXiv:2010.03735, 2020