Multimodal Learning 相关度: 8/10

AMIF: Authorizable Medical Image Fusion Model with Built-in Authentication

Jie Song, Jun Jia, Wei Sun, Wangqiu Zhou, Tao Tan, Guangtao Zhai
arXiv: 2603.24296v1 发布: 2026-03-25 更新: 2026-03-25

AI 摘要

AMIF提出一种可授权的医学图像融合模型,内置认证机制,保护知识产权,防止模型泄露。

主要贡献

  • 提出AMIF模型,内置认证机制
  • 融合目标中加入授权访问控制
  • 未经授权时,融合结果嵌入版权标识

方法论

通过密钥认证进行授权访问控制,未授权则嵌入可见的版权标识,保护模型。

原文摘要

Multimodal image fusion enables precise lesion localization and characterization for accurate diagnosis, thereby strengthening clinical decision-making and driving its growing prominence in medical imaging research. A powerful multimodal image fusion model relies on high-quality, clinically representative multimodal training data and a rigorously engineered model architecture. Therefore, the development of such professional radiomics models represents a collaborative achievement grounded in standardized acquisition, clinical-specific expertise, and algorithmic design proficiency, which necessitates protection of associated intellectual property rights. However, current multimodal image fusion models generate fused outputs without built-in mechanisms to safeguard intellectual property rights, inadvertently exposing proprietary model knowledge and sensitive training data through inference leakage. For example, malicious users can exploit fusion outputs and model distillation or other inference-based reverse engineering techniques to approximate the fusion performance of proprietary models. To address this issue, we propose AMIF, the first Authorizable Medical Image Fusion model with built-in authentication, which integrates authorization access control into the image fusion objective. For unauthorized usage, AMIF embeds explicit and visible copyright identifiers into fusion results. In contrast, high-quality fusion results are accessible upon successful key-based authentication.

标签

医学图像融合 知识产权保护 模型认证 水印

arXiv 分类

cs.CV