Published October 14, 2024 | Version V0
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PhySense: Defending Physically Realizable Attacks for Autonomous Systems via Consistency Reasoning

  • 1. ROR icon Washington University in St. Louis

Description

 
PhySense is a defense-in-depth system against physical realizable adversarial attacks. The key approach relies on reasoning, empowered by statistical modeling, robust physical rules, and pipelining techniques to ensure reliable and timely defense. PhySense not only detects malicious objects but also provides the potential true labels to correct misclassifications.
 
If you find our project useful, please cite us at:
@inproceedings{yu2024physense,
  title={PhySense: Defending Physically Realizable Attacks for Autonomous Systems via Consistency Reasoning},
  author={Yu, Zhiyuan and Li, Ao and Wen, Ruoyao and Chen, Yijia and Zhang, Ning},
  booktitle={Proceedings of the 2024 ACM SIGSAC Conference on Computer and Communications Security},
  year={2024}
}

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Additional details

Dates

Accepted
2024-08-23