Adversarial hujum usullari yordamida obyektlarni aniqlash modellarini chalg‘itish va ularning barqarorligini baholash

Avtorlar

Gilt sózler: FGSM, YOLOv5, PGD, Faster R-CNN, ResNet18, CNN

Annotaciya

In this study, object detection systems based on convolutional neural networks were investigated, particularly the effectiveness of adversarial attacks against the YOLOv5 model. As attack methods, the Fast Gradient Sign Method (FGSM) and its improved variants (Iterative FGSM and PGD) were applied. Adversarial perturbations generated using the ResNet18 model were used to compare the object detection results of the original image and the attacked image. The results demonstrated that even a small amount of noise can significantly mislead an object detection model. Adversarial attacks represent one of the major vulnerabilities of artificial intelligence models, especially deep learning– based image recognition systems. Attacks such as FGSM and PGD modify the model input with small perturbations, forcing the model to produce incorrect classifications.

Paydalanılǵan ádebiyatlar

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