Inverting Black-Box Face Recognition Systems via Zero-Order Optimization in Eigenface Space
Inverting Black-Box Face Recognition Systems via Zero-Order Optimization in Eigenface Space
Reconstructing facial images from black-box recognition models poses a significant privacy threat. While many methods require access to embeddings, we address the more challenging scenario of model inversion using only similarity scores. This paper introduces DarkerBB, a novel approach that reconstructs color faces by performing zero-order optimization within a PCA-derived eigenface space. Despite this highly limited information, experiments on LFW, AgeDB-30, and CFP-FP benchmarks demonstrate that DarkerBB achieves state-of-the-art verification accuracies in the similarity-only setting, with competitive query efficiency.
Anton Razzhigaev、Matvey Mikhalchuk、Klim Kireev、Igor Udovichenko、Andrey Kuznetsov、Aleksandr Petiushko
计算技术、计算机技术
Anton Razzhigaev,Matvey Mikhalchuk,Klim Kireev,Igor Udovichenko,Andrey Kuznetsov,Aleksandr Petiushko.Inverting Black-Box Face Recognition Systems via Zero-Order Optimization in Eigenface Space[EB/OL].(2025-06-11)[2025-06-23].https://arxiv.org/abs/2506.09777.点此复制
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