TL;DR
This paper evaluates the vulnerability of deep neural networks used for COVID-19 detection from chest X-ray images to universal adversarial attacks, revealing significant susceptibility and proposing fine-tuning strategies to enhance robustness.
Contribution
It is the first comprehensive assessment of DNN vulnerability to universal adversarial perturbations in COVID-19 X-ray diagnosis, highlighting security concerns and mitigation approaches.
Findings
Models are highly vulnerable to small UAPs with over 85% success rate.
Nontargeted UAPs cause misclassification as COVID-19 in most images.
Iterative fine-tuning improves DNN robustness against UAPs.
Abstract
Under the epidemic of the novel coronavirus disease 2019 (COVID-19), chest X-ray computed tomography imaging is being used for effectively screening COVID-19 patients. The development of computer-aided systems based on deep neural networks (DNNs) has been advanced, to rapidly and accurately detect COVID-19 cases, because the need for expert radiologists, who are limited in number, forms a bottleneck for the screening. However, so far, the vulnerability of DNN-based systems has been poorly evaluated, although DNNs are vulnerable to a single perturbation, called universal adversarial perturbation (UAP), which can induce DNN failure in most classification tasks. Thus, we focus on representative DNN models for detecting COVID-19 cases from chest X-ray images and evaluate their vulnerability to UAPs generated using simple iterative algorithms. We consider nontargeted UAPs, which cause a task…
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