GLEAN: Generative Learning for Eliminating Adversarial Noise

Justin Lyu Kim, Kyoungwan Woo
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Abstract

In the age of powerful diffusion models such as DALL-E and Stable Diffusion, many in the digital art community have suffered style mimicry attacks due to fine-tuning these models on their works. The ability to mimic an artist's style via text-to-image diffusion models raises serious ethical issues, especially without explicit consent. Glaze, a tool that applies various ranges of perturbations to digital art, has shown significant success in preventing style mimicry attacks, at the cost of artifacts ranging from imperceptible noise to severe quality degradation. The release of Glaze has sparked further discussions regarding the effectiveness of similar protection methods. In this paper, we propose GLEAN- applying I2I generative networks to strip perturbations from Glazed images, evaluating the performance of style mimicry attacks before and after GLEAN on the results of Glaze. GLEAN aims to support and enhance Glaze by highlighting its limitations and encouraging further development.
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GLEAN:消除对抗性噪音的生成学习
在强大的扩散模型(如 DALL-E 和 Stable Diffusion)时代,数字艺术界的许多人由于在自己的作品上微调这些模型而遭受了风格模仿攻击。通过文本到图像扩散模型模拟艺术家风格的能力引发了严重的伦理问题,尤其是在未经明确同意的情况下。Glaze 是一种能对数字艺术作品进行各种干扰的工具,它在防止风格模仿攻击方面取得了显著的成功,但代价是产生了从难以察觉的噪音到严重质量下降的各种人工痕迹。Glaze 的发布引发了人们对类似保护方法有效性的进一步讨论。在本文中,我们提出了 GLEAN--应用 I2I 生成网络从 Glazed 图像中剥离干扰,评估 GLEAN 前后风格模仿攻击对 Glaze 结果的影响。GLEAN 的目的是通过强调 Glaze 的局限性和鼓励进一步开发来支持和增强 Glaze。
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