Enhanced CNN Security based on Adversarial FGSM Attack Learning: Medical Image Classification

Lazhar Khriji*, Seifeddine Messaoud, Soulef Bouaafia, Ahmed Chiheb Ammari, Mohsen Machhout

*المؤلف المقابل لهذا العمل

نتاج البحث: Conference contribution

ملخص

Convolutional Neural Networks (CNNs) have grown in popularity for clinical image processing applications like as Covid and cancer detection. A new study, however, shows that hostile attacks with modest, unnoticeable disruptions can damage deep healthcare learning systems. This creates safety issues about using these technologies in healthcare situations. In this study, we will look at the approaches used to fight adversarial attacks on medical imaging. Next, we intend to investigate the resilience of pre-trained CNN architectures, as well as LeNet5 and MobileNetV1 models against Fast Gradient Sign Method (FGSM) attacks in a medical healthcare application-based chest X-ray dataset. We discover that pre-trained CNN models are much more sensitive to antagonistic assaults than other models, due to key feature discrepancies between them and regular models. Finally, we propose to improve the CNN' models security by investigating adversarial training. According to the numerical results, models with lower computational complexity and restricted layers are much more safe against malicious attacks than bigger models which are commonly utilized in medical healthcare systems.

اللغة الأصليةEnglish
عنوان منشور المضيف2023 20th International Multi-Conference on Systems, Signals and Devices, SSD 2023
ناشرInstitute of Electrical and Electronics Engineers Inc.
الصفحات360-365
عدد الصفحات6
رقم المعيار الدولي للكتب (الإلكتروني)9798350332568
المعرِّفات الرقمية للأشياء
حالة النشرPublished - 2023
الحدث20th International Multi-Conference on Systems, Signals and Devices, SSD 2023 - Mahdia, Tunisia
المدة: فبراير ٢٠ ٢٠٢٣فبراير ٢٣ ٢٠٢٣

سلسلة المنشورات

الاسم2023 20th International Multi-Conference on Systems, Signals and Devices, SSD 2023

Conference

Conference20th International Multi-Conference on Systems, Signals and Devices, SSD 2023
الدولة/الإقليمTunisia
المدينةMahdia
المدة٢/٢٠/٢٣٢/٢٣/٢٣

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