论文标题
通过后门水印的黑盒数据集所有权验证
Black-box Dataset Ownership Verification via Backdoor Watermarking
论文作者
论文摘要
深度学习,尤其是深度神经网络(DNNS),已在许多关键应用中广泛地采用了其高效和效率。 DNNS的快速发展受益于某些高质量数据集(例如$,ImageNet)的存在,这些数据集(例如$,Imagenet)使研究人员和开发人员可以轻松验证其方法的性能。当前,几乎所有现有的已发布数据集都要求它们只能在未经许可的情况下才能用于学术或教育目的,而不是商业目的。但是,仍然没有很好的方法来确保这一点。在本文中,我们制定了对发布数据集的保护,以验证它们是否被用于培训(可疑)第三方模型,在该模型中,防守者只能查询模型,而没有有关其参数和培训细节的信息。基于此公式,我们建议通过后门水印来嵌入外部模式,以保护它们以保护它们。我们的方法包含两个主要部分,包括数据集水印和数据集验证。具体来说,我们利用毒药的后门攻击(例如$,badnets)用于数据集水印和设计一种假设检验引导的数据集验证方法。我们还提供了我们方法的一些理论分析。在多个基准数据集上进行了不同任务的实验,以验证我们方法的有效性。复制主实验的代码可在\ url {https://github.com/thuyimingli/dvbw}上获得。
Deep learning, especially deep neural networks (DNNs), has been widely and successfully adopted in many critical applications for its high effectiveness and efficiency. The rapid development of DNNs has benefited from the existence of some high-quality datasets ($e.g.$, ImageNet), which allow researchers and developers to easily verify the performance of their methods. Currently, almost all existing released datasets require that they can only be adopted for academic or educational purposes rather than commercial purposes without permission. However, there is still no good way to ensure that. In this paper, we formulate the protection of released datasets as verifying whether they are adopted for training a (suspicious) third-party model, where defenders can only query the model while having no information about its parameters and training details. Based on this formulation, we propose to embed external patterns via backdoor watermarking for the ownership verification to protect them. Our method contains two main parts, including dataset watermarking and dataset verification. Specifically, we exploit poison-only backdoor attacks ($e.g.$, BadNets) for dataset watermarking and design a hypothesis-test-guided method for dataset verification. We also provide some theoretical analyses of our methods. Experiments on multiple benchmark datasets of different tasks are conducted, which verify the effectiveness of our method. The code for reproducing main experiments is available at \url{https://github.com/THUYimingLi/DVBW}.