Joint Attribute and Model Generalization Learning for Privacy-Preserving Action Recognition

Neural Information Processing Systems 

Privacy-Preserving Action Recognition (PPAR) aims to transform raw videos into anonymous ones to prevent privacy leakage while maintaining action clues, which is an increasingly important problem in intelligent vision applications. Despite recent efforts in this task, it is still challenging to deal with novel privacy attributes and novel privacy attack models that are unavailable during the training phase. In this paper, from the perspective of meta-learning (learning to learn), we propose a novel Meta Privacy-Preserving Action Recognition (MPPAR) framework to improve both generalization abilities above (i.e., generalize to and) in a unified manner. Concretely, we simulate train/test task shifts by constructing disjoint support/query sets w.r.t.