April 18, 2024, 4:11 a.m. | Furkan Mumcu, Yasin Yilmaz

cs.CR updates on arXiv.org arxiv.org

arXiv:2404.10790v1 Announce Type: new
Abstract: Adversarial machine learning attacks on video action recognition models is a growing research area and many effective attacks were introduced in recent years. These attacks show that action recognition models can be breached in many ways. Hence using these models in practice raises significant security concerns. However, there are very few works which focus on defending against or detecting attacks. In this work, we propose a novel universal detection method which is compatible with any …

action adversarial area arxiv attack attacks breached can cs.ai cs.cr cs.cv cs.lg detection machine machine learning multimodal practice recognition research security security concerns video

Senior Security Engineer - Detection and Response

@ Fastly, Inc. | US (Remote)

Application Security Engineer

@ Solidigm | Zapopan, Mexico

Defensive Cyber Operations Engineer-Mid

@ ISYS Technologies | Aurora, CO, United States

Manager, Information Security GRC

@ OneTrust | Atlanta, Georgia

Senior Information Security Analyst | IAM

@ EBANX | Curitiba or São Paulo

Senior Information Security Engineer, Cloud Vulnerability Research

@ Google | New York City, USA; New York, USA