通过内在模型指纹实现无损版权保护 / Lossless Copyright Protection via Intrinsic Model Fingerprinting
1️⃣ 一句话总结
这篇论文提出了一种名为TrajPrint的新方法,它无需修改模型或进行额外训练,就能通过分析模型生成图像的独特内在路径来提取‘指纹’,从而在不影响模型性能的前提下,有效验证扩散模型的版权归属,尤其适用于无法获取内部信息的黑盒场景。
The exceptional performance of diffusion models establishes them as high-value intellectual property but exposes them to unauthorized replication. Existing protection methods either modify the model to embed watermarks, which impairs performance, or extract model fingerprints by manipulating the denoising process, rendering them incompatible with black-box APIs. In this paper, we propose TrajPrint, a completely lossless and training-free framework that verifies model copyright by extracting unique manifold fingerprints formed during deterministic generation. Specifically, we first utilize a watermarked image as an anchor and exactly trace the path back to its trajectory origin, effectively locking the model fingerprint mapped by this path. Subsequently, we implement a joint optimization strategy that employs dual-end anchoring to synthesize a specific fingerprint noise, which strictly adheres to the target manifold for robust watermark recovery. As input, it enables the protected target model to recover the watermarked image, while failing on non-target models. Finally, we achieved verification via atomic inference and statistical hypothesis testing. Extensive experiments demonstrate that TrajPrint achieves lossless verification in black-box API scenarios with superior robustness against model modifications.
通过内在模型指纹实现无损版权保护 / Lossless Copyright Protection via Intrinsic Model Fingerprinting
这篇论文提出了一种名为TrajPrint的新方法,它无需修改模型或进行额外训练,就能通过分析模型生成图像的独特内在路径来提取‘指纹’,从而在不影响模型性能的前提下,有效验证扩散模型的版权归属,尤其适用于无法获取内部信息的黑盒场景。
源自 arXiv: 2601.21252