使用对抗网络保护视觉秘密

Nisarg Raval, Ashwin Machanavajjhala, Landon P. Cox
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引用次数: 61

摘要

由于不断监控我们周围环境的摄像机的普及,保护视觉秘密是一个重要的问题。这个问题的任何可行的解决方案都应该尽量减少对使用映像的应用程序的影响。在这项工作中,我们以现有的对抗性学习工作为基础,设计了一种共同优化隐私和效用目标的扰动机制。我们对所提出的机制进行了可行性研究,并提出了基于对抗性摄动机制开发隐私框架的想法。
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Protecting Visual Secrets Using Adversarial Nets
Protecting visual secrets is an important problem due to the prevalence of cameras that continuously monitor our surroundings. Any viable solution to this problem should also minimize the impact on the utility of applications that use images. In this work, we build on the existing work of adversarial learning to design a perturbation mechanism that jointly optimizes privacy and utility objectives. We provide a feasibility study of the proposed mechanism and present ideas on developing a privacy framework based on the adversarial perturbation mechanism.
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