At a Glance: Holding Secrets Accountable: Auditing Privacy-Preserving Machine Learning Hidde Lycklama, ETH Zurich; Alexander Viand, Intel ... Rethinking the Invisible Protection against Unauthorized Image Usage in Stable Diffusion Shengwei An, Lu Yan, Siyuan Cheng, ...
Usenix Security 24 Exploring Covert 10963 -
Holding Secrets Accountable: Auditing Privacy-Preserving Machine Learning Hidde Lycklama, ETH Zurich; Alexander Viand, Intel ... Rethinking the Invisible Protection against Unauthorized Image Usage in Stable Diffusion Shengwei An, Lu Yan, Siyuan Cheng, ... Practical Data-Only Attack Generation Brian Johannesmeyer, Asia Slowinska, Herbert Bos, and Cristiano Giuffrida, Vrije ...
Important details found
- Holding Secrets Accountable: Auditing Privacy-Preserving Machine Learning Hidde Lycklama, ETH Zurich; Alexander Viand, Intel ...
- Rethinking the Invisible Protection against Unauthorized Image Usage in Stable Diffusion Shengwei An, Lu Yan, Siyuan Cheng, ...
- Practical Data-Only Attack Generation Brian Johannesmeyer, Asia Slowinska, Herbert Bos, and Cristiano Giuffrida, Vrije ...
- The Unpatchables: Why Municipalities Persist in Running Vulnerable Hosts Aksel Ethembabaoglu, Rolf van Wegberg, Yury ...
- SoK: All You Need to Know About On-Device ML Model Extraction - The Gap Between Research and Practice Tushar Nayan, ...
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