Fall Leaf Adversarial Attack on Traffic Sign Classification
Anthony Etim, Jakub Szefer

TL;DR
This paper introduces a novel adversarial attack method on traffic sign classification using naturally occurring fall leaves, demonstrating high success rates and implications for autonomous vehicle safety.
Contribution
The work presents a new class of adversarial attacks leveraging natural artifacts, specifically fall leaves, to cause misclassification in traffic sign recognition systems.
Findings
High success rate of misclassification using fall leaves
Analysis of leaf parameters affecting attack success
Impact of leaves on edge detection in image algorithms
Abstract
Adversarial input image perturbation attacks have emerged as a significant threat to machine learning algorithms, particularly in image classification setting. These attacks involve subtle perturbations to input images that cause neural networks to misclassify the input images, even though the images remain easily recognizable to humans. One critical area where adversarial attacks have been demonstrated is in automotive systems where traffic sign classification and recognition is critical, and where misclassified images can cause autonomous systems to take wrong actions. This work presents a new class of adversarial attacks. Unlike existing work that has focused on adversarial perturbations that leverage human-made artifacts to cause the perturbations, such as adding stickers, paint, or shining flashlights at traffic signs, this work leverages nature-made artifacts: tree leaves. By…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning
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