Multimodal Learning 相关度: 9/10

Authorize-on-Demand: Dynamic Authorization with Legality-Aware Intellectual Property Protection for VLMs

Lianyu Wang, Meng Wang, Huazhu Fu, Daoqiang Zhang
arXiv: 2603.04896v1 发布: 2026-03-05 更新: 2026-03-05

AI 摘要

提出了一种新的动态授权与合法性感知的VLM知识产权保护框架,支持按需授权和自适应部署。

主要贡献

  • 提出AoD-IP框架,实现VLM的动态授权
  • 引入双路径推理机制,联合预测输入合法性和任务特定输出
  • 支持用户控制的授权,适应动态环境

方法论

设计动态授权模块,允许用户在部署时指定或切换授权域;构建双路径推理机制,实现合法性感知。

原文摘要

The rapid adoption of vision-language models (VLMs) has heightened the demand for robust intellectual property (IP) protection of these high-value pretrained models. Effective IP protection should proactively confine model deployment within authorized domains and prevent unauthorized transfers. However, existing methods rely on static training-time definitions, limiting flexibility in dynamic environments and often producing opaque responses to unauthorized inputs. To address these limitations, we propose a novel dynamic authorization with legality-aware intellectual property protection (AoD-IP) for VLMs, a framework that supports authorize-on-demand and legality-aware assessment. AoD-IP introduces a lightweight dynamic authorization module that enables flexible, user-controlled authorization, allowing users to actively specify or switch authorized domains on demand at deployment time. This enables the model to adapt seamlessly as application scenarios evolve and provides substantially greater extensibility than existing static-domain approaches. In addition, AoD-IP incorporates a dual-path inference mechanism that jointly predicts input legality-aware and task-specific outputs. Comprehensive experimental results on multiple cross-domain benchmarks demonstrate that AoD-IP maintains strong authorized-domain performance and reliable unauthorized detection, while supporting user-controlled authorization for adaptive deployment in dynamic environments.

标签

VLM 知识产权保护 动态授权 多模态学习

arXiv 分类

cs.AI