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DeepFense: Online Accelerated Defense Against Adversarial Deep Learning

机译:DeepFense:针对对抗式深度学习的在线加速防御

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Recent advances in adversarial Deep Learning (DL) have opened up a largely unexplored surface for malicious attacks jeopardizing the integrity of autonomous DL systems. With the wide-spread usage of DL in critical and time-sensitive applications, including unmanned vehicles, drones, and video surveillance systems, online detection of malicious inputs is of utmost importance. We propose DeepFense, the first end-to-end automated framework that simultaneously enables efficient and safe execution of DL models. DeepFense formalizes the goal of thwarting adversarial attacks as an optimization problem that minimizes the rarely observed regions in the latent feature space spanned by a DL network. To solve the aforementioned minimization problem, a set of complementary but disjoint modular redundancies are trained to validate the legitimacy of the input samples in parallel with the victim DL model. DeepFense leverages hardware/software/algorithm co-design and customized acceleration to achieve just-in-time performance in resource-constrained settings. The proposed countermeasure is unsupervised, meaning that no adversarial sample is leveraged to train modular redundancies. We further provide an accompanying API to reduce the non-recurring engineering cost and ensure automated adaptation to various platforms. Extensive evaluations on FPGAs and GPUs demonstrate up to two orders of magnitude performance improvement while enabling online adversarial sample detection.
机译:对抗式深度学习(DL)的最新进展为恶意攻击打开了一个很大程度上未开发的表面,从而危害了自主DL系统的完整性。随着DL在关键和对时间敏感的应用程序(包括无人驾驶车辆,无人机和视频监控系统)中的广泛使用,在线检测恶意输入至关重要。我们提出了DeepFense,这是第一个可以同时有效且安全地执行DL模型的端到端自动化框架。 DeepFense将阻止对抗性攻击的目标形式化为一个优化问题,该优化问题将DL网络所跨越的潜在特征空间中鲜为人知的区域最小化。为了解决上述最小化问题,训练了一组互补但不相交的模块化冗余,以与受害者DL模型并行地验证输入样本的合法性。 DeepFense利用硬件/软件/算法的协同设计和自定义的加速功能,在资源受限的环境中实现即时性能。拟议的对策是无监督的,这意味着不会利用对抗性样本来训练模块冗余。我们还提供了一个随附的API,以减少非经常性的工程成本并确保自动适应各种平台。对FPGA和GPU的广泛评估表明,在实现在线对抗性样本检测的同时,性能最多提高了两个数量级。

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