Image Disguising for Protecting Data and Model Confidentiality in Outsourced Deep Learning

Q1 Computer Science
Sagar Sharma, A. Alam, Keke Chen
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引用次数: 7

Abstract

Large training data and expensive model tweaking are common features of deep learning development for images. As a result, data owners often utilize cloud resources or machine learning service providers for developing large-scale complex models. This practice, however, raises serious privacy concerns. Existing solutions are either too expensive to be practical, or do not sufficiently protect the confidentiality of data and model. In this paper, we aim to achieve a better trade-off among the level of protection for outsourced DNN model training, the expenses, and the utility of data, using novel image disguising mechanisms. We design a suite of image disguising methods that are efficient to implement and then analyze them to understand multiple levels of tradeoffs between data utility and protection of confidentiality. The experimental evaluation shows the surprising ability of DNN modeling methods in discovering patterns in disguised images and the flexibility of these image disguising mechanisms in achieving different levels of resilience to attacks.
外包深度学习中保护数据和模型机密性的图像伪装
大量的训练数据和昂贵的模型调整是图像深度学习开发的共同特征。因此,数据所有者经常利用云资源或机器学习服务提供商来开发大规模复杂模型。然而,这种做法引发了严重的隐私问题。现有的解决方案要么太昂贵而不实用,要么不能充分保护数据和模型的机密性。在本文中,我们的目标是通过使用新的图像伪装机制,在外包DNN模型训练的保护水平、费用和数据效用之间实现更好的权衡。我们设计了一套有效实现的图像伪装方法,然后对它们进行分析,以了解数据实用性和机密性保护之间的多重权衡。实验评估显示了DNN建模方法在发现伪装图像模式方面的惊人能力,以及这些图像伪装机制在实现不同程度的攻击弹性方面的灵活性。
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来源期刊
IEEE Cloud Computing
IEEE Cloud Computing Computer Science-Computer Networks and Communications
CiteScore
11.20
自引率
0.00%
发文量
0
期刊介绍: Cessation. IEEE Cloud Computing is committed to the timely publication of peer-reviewed articles that provide innovative research ideas, applications results, and case studies in all areas of cloud computing. Topics relating to novel theory, algorithms, performance analyses and applications of techniques are covered. More specifically: Cloud software, Cloud security, Trade-offs between privacy and utility of cloud, Cloud in the business environment, Cloud economics, Cloud governance, Migrating to the cloud, Cloud standards, Development tools, Backup and recovery, Interoperability, Applications management, Data analytics, Communications protocols, Mobile cloud, Private clouds, Liability issues for data loss on clouds, Data integration, Big data, Cloud education, Cloud skill sets, Cloud energy consumption, The architecture of cloud computing, Applications in commerce, education, and industry, Infrastructure as a Service (IaaS), Platform as a Service (PaaS), Software as a Service (SaaS), Business Process as a Service (BPaaS)
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