SimAC: A Simple Anti-Customization Method for Protecting Face Privacy against Text-to-Image Synthesis of Diffusion Models
Feifei Wang, Zhentao Tan, Tianyi Wei, Yue Wu, Qidong Huang

TL;DR
This paper introduces SimAC, an anti-customization method that enhances face privacy protection against diffusion model-based text-to-image synthesis by leveraging internal diffusion properties and feature-based optimization.
Contribution
It proposes a novel adaptive time step selection and feature-based optimization framework to improve anti-customization effectiveness in diffusion models.
Findings
Significantly increases identity disruption in facial images.
Enhances privacy and copyright protection.
Outperforms existing anti-customization methods.
Abstract
Despite the success of diffusion-based customization methods on visual content creation, increasing concerns have been raised about such techniques from both privacy and political perspectives. To tackle this issue, several anti-customization methods have been proposed in very recent months, predominantly grounded in adversarial attacks. Unfortunately, most of these methods adopt straightforward designs, such as end-to-end optimization with a focus on adversarially maximizing the original training loss, thereby neglecting nuanced internal properties intrinsic to the diffusion model, and even leading to ineffective optimization in some diffusion time steps.In this paper, we strive to bridge this gap by undertaking a comprehensive exploration of these inherent properties, to boost the performance of current anti-customization approaches. Two aspects of properties are investigated: 1) We…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Advanced Steganography and Watermarking Techniques · Digital Media Forensic Detection
MethodsFocus · Diffusion
