Recent Customized Portrait Generation (CPG) methods, taking a facial image
and a textual prompt as inputs, have attracted substantial attention. Although
these methods generate high-fidelity portraits, they fail to prevent the
generated portraits from being tracked and misused by malicious face
recognition systems. To address this, this paper proposes a Customized Portrait
Generation framework with facial Adversarial attacks (Adv-CPG). Specifically,
to achieve facial privacy protection, we devise a lightweight local ID
encryptor and an encryption enhancer. They implement progressive double-layer
encryption protection by directly injecting the target identity and adding
additional identity guidance, respectively. Furthermore, to accomplish
fine-grained and personalized portrait generation, we develop a multi-modal
image customizer capable of generating controlled fine-grained facial features.
To the best of our knowledge, Adv-CPG is the first study that introduces facial
adversarial attacks into CPG. Extensive experiments demonstrate the superiority
of Adv-CPG, e.g., the average attack success rate of the proposed Adv-CPG is
28.1% and 2.86% higher compared to the SOTA noise-based attack methods and
unconstrained attack methods, respectively.