论文标题

用于分布式图像分类的安全指纹框架

A Secure Fingerprinting Framework for Distributed Image Classification

论文作者

Xu, Guowen, Han, Xingshuo, Zhang, Anguo, Zhang, Tianwei

论文摘要

在许多情况下,例如面部识别和可疑跟踪,深度学习(DL)技术已被广泛用于图像分类。如此高度商业化的应用已引起其DL模型的知识产权保护。为了解决这个问题,主流方法是在训练过程中将独特的水印嵌入到目标模型中。但是,现有的努力着重于检测给定模型的版权侵权,而很少考虑叛徒跟踪的问题。此外,水印嵌入过程可能会以分布式的方式为培训数据引起隐私问题。在本文中,我们提出了SecureMark-DL,这是一个新型的指纹框架,以解决分布式学习环境中的上述两个问题。它将独特的指纹嵌入到每个客户的目标模型中,一旦发生争议,可以从任何可疑模型中提取和验证。此外,它在培训过程中采用了新的隐私分区技术来保护培训数据隐私。广泛的实验表明,即使将长位(304位)指纹嵌入到输入图像中,即使其高分类精度(> 95%),证券emark-DL对各种攻击的鲁棒性。

The deep learning (DL) technology has been widely used for image classification in many scenarios, e.g., face recognition and suspect tracking. Such a highly commercialized application has given rise to intellectual property protection of its DL model. To combat that, the mainstream method is to embed a unique watermark into the target model during the training process. However, existing efforts focus on detecting copyright infringement for a given model, while rarely consider the problem of traitors tracking. Moreover, the watermark embedding process can incur privacy issues for the training data in a distributed manner. In this paper, we propose SECUREMARK-DL, a novel fingerprinting framework to address the above two problems in a distributed learning environment. It embeds a unique fingerprint into the target model for each customer, which can be extracted and verified from any suspicious model once a dispute arises. In addition, it adopts a new privacy partitioning technique in the training process to protect the training data privacy. Extensive experiments demonstrate the robustness of SECUREMARK-DL against various attacks, and its high classification accuracy (> 95%) even if a long-bit (304-bit) fingerprint is embedded into an input image.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源