AdvIRL: Reinforcement Learning-Based Adversarial Attacks on 3D NeRF Models
Tommy Nguyen, Mehmet Ergezer, Christian Green

TL;DR
AdvIRL introduces a reinforcement learning framework to craft robust adversarial attacks on 3D NeRF models, highlighting vulnerabilities and potential for improving model robustness.
Contribution
This work presents the first reinforcement learning-based method for generating adversarial NeRF models that are robust under 3D transformations.
Findings
High-confidence targeted misclassifications achieved
Adversarial noise remains effective under rotations and scaling
Method validated across diverse scenes
Abstract
The increasing deployment of AI models in critical applications has exposed them to significant risks from adversarial attacks. While adversarial vulnerabilities in 2D vision models have been extensively studied, the threat landscape for 3D generative models, such as Neural Radiance Fields (NeRF), remains underexplored. This work introduces \textit{AdvIRL}, a novel framework for crafting adversarial NeRF models using Instant Neural Graphics Primitives (Instant-NGP) and Reinforcement Learning. Unlike prior methods, \textit{AdvIRL} generates adversarial noise that remains robust under diverse 3D transformations, including rotations and scaling, enabling effective black-box attacks in real-world scenarios. Our approach is validated across a wide range of scenes, from small objects (e.g., bananas) to large environments (e.g., lighthouses). Notably, targeted attacks achieved high-confidence…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Medical Imaging Techniques and Applications
