LGCRCVAug 31, 2025

AMCR: A Framework for Assessing and Mitigating Copyright Risks in Generative Models

arXiv:2509.00641v16 citationsh-index: 17ECAI
Originality Incremental advance
AI Analysis

This addresses legal and ethical challenges for deploying generative models in real-world applications, offering a practical solution for mitigating subtle copyright risks.

The paper tackles the problem of generative models unintentionally replicating copyrighted elements in text-to-image tasks, introducing the AMCR framework that reduces copyright violations while maintaining image quality, with extensive experiments validating its effectiveness.

Generative models have achieved impressive results in text to image tasks, significantly advancing visual content creation. However, this progress comes at a cost, as such models rely heavily on large-scale training data and may unintentionally replicate copyrighted elements, creating serious legal and ethical challenges for real-world deployment. To address these concerns, researchers have proposed various strategies to mitigate copyright risks, most of which are prompt based methods that filter or rewrite user inputs to prevent explicit infringement. While effective in handling obvious cases, these approaches often fall short in more subtle situations, where seemingly benign prompts can still lead to infringing outputs. To address these limitations, this paper introduces Assessing and Mitigating Copyright Risks (AMCR), a comprehensive framework which i) builds upon prompt-based strategies by systematically restructuring risky prompts into safe and non-sensitive forms, ii) detects partial infringements through attention-based similarity analysis, and iii) adaptively mitigates risks during generation to reduce copyright violations without compromising image quality. Extensive experiments validate the effectiveness of AMCR in revealing and mitigating latent copyright risks, offering practical insights and benchmarks for the safer deployment of generative models.

Foundations

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