May 6, 2024, 4:42 a.m. | Firuz Juraev, Mohammed Abuhamad, Simon S. Woo, George K Thiruvathukal, Tamer Abuhmed

cs.LG updates on arXiv.org arxiv.org

arXiv:2405.01934v1 Announce Type: cross
Abstract: Rapid advancements of deep learning are accelerating adoption in a wide variety of applications, including safety-critical applications such as self-driving vehicles, drones, robots, and surveillance systems. These advancements include applying variations of sophisticated techniques that improve the performance of models. However, such models are not immune to adversarial manipulations, which can cause the system to misbehave and remain unnoticed by experts. The frequency of modifications to existing deep learning models necessitates thorough analysis to determine …

abstract adoption adversarial applications arxiv cs.ai cs.cr cs.cv cs.lg deep learning driving drones however impact performance robots robustness safety safety-critical self-driving self-driving vehicles surveillance systems type vehicles

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