Membership inference (MI) determines if a sample was part of a victim model training set. Recent development of MI attacks focus on record-level membership inference which limits their application in many real-world scenarios. For example, in the person re-identification task, the attacker (or investigator) is interested in determining if a user's images have been used during training or not. However, the exact training images might not be accessible to the attacker. In this paper, we develop a user-level MI attack where the goal is to find if any sample from the target user has been used during training even when no exact training sample is available to the attacker. We focus on metric embedding learning due to its dominance in person re-identification, where user-level MI attack is more sensible. We conduct an extensive evaluation on several datasets and show that our approach achieves high accuracy on user-level MI task.
翻译:成员推断( MI) 确定一个样本是否属于受害者示范培训组的一部分。 最近MI攻击的开发侧重于记录级成员推论,这限制了其在许多真实世界情景中的应用。 例如, 在个人再识别任务中, 攻击者( 或调查员) 有兴趣确定一个用户的图像是否在培训期间被使用。 但是, 攻击者可能无法获得确切的培训图像。 本文中, 我们开发了一个用户级MI攻击, 目标是在培训期间找到目标用户的任何样本是否被使用过, 即使攻击者没有确切的培训样本。 我们侧重于由于在个人再识别中的主导地位, 用户一级MI攻击更为明智, 因而进行衡量嵌入学习。 我们对几个数据集进行广泛评估, 并表明我们的方法在用户一级MI任务上达到了高度精确性。