Detecting Malicious Concepts without Image Generation in AI-Generated Content (AIGC)
Kun Xu, Wenying Wen, Shuren Qi, Tao Wang, Yushu Zhang, Yuming Fang

TL;DR
This paper introduces Concept QuickLook, a novel approach to detect malicious concepts in AI-generated content platforms without relying on image generation, using concept files alone.
Contribution
It is the first systematic method for malicious concept detection that operates solely on concept files, offering a faster and resource-efficient solution.
Findings
Effective detection of malicious concepts demonstrated in experiments
Two operational modes: concept matching and fuzzy detection
Robustness validated through additional experiments
Abstract
The task of text-to-image generation has achieved tremendous success in practice, with emerging concept generation models capable of producing highly personalized and customized content. Fervor for concept generation is increasing rapidly among users, and platforms for concept sharing have sprung up. The concept owners may upload malicious concepts and disguise them with non-malicious text descriptions and example images to deceive users into downloading and generating malicious content. The platform needs a quick method to determine whether a concept is malicious to prevent the spread of malicious concepts. However, simply relying on concept image generation to judge whether a concept is malicious requires time and computational resources. Especially, as the number of concepts uploaded and downloaded on the platform continues to increase, this approach becomes impractical and poses a…
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