利用对抗性示例消耗移动深度学习系统的计算资源

Han Gao, Yulong Tian, Rongchun Yao, Fengyuan Xu, Xinyi Fu, Sheng Zhong
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引用次数: 1

摘要

为了在任何地方执行深度学习任务,已经提出了许多优化来解决像物联网这样的移动系统的资源限制。其中一个关键方法是根据输入特征动态调整深度学习推理的计算资源。例如,一种流行的优化方法是根据每个输入的推理难度选择合适的计算组合。然而,我们发现这种计算的“动态路由”可能被利用来消耗/浪费移动深度学习系统上的宝贵资源。在这项工作中,我们引入了一个新的深度学习攻击维度,即计算资源枯竭,并在一种可能的攻击方式中证明了它的可行性,即输入数据的对抗性示例。我们描述了如何构建针对资源消耗的特殊对抗示例,并通过两个实验数据集证明了这些有毒输入能够有意地增加计算负荷。我们希望我们的发现能够为提高移动深度学习优化的鲁棒性指明道路。
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Exploiting Adversarial Examples to Drain Computational Resources on Mobile Deep Learning Systems
In order to perform deep learning tasks everywhere, many optimizations have been proposed to address the resource limitations on mobile systems like IoTs. A key approach among others is to dynamically adjust computational resources of the deep learning inference according to the characteristics of incoming inputs. For example, one of popular optimizations is to pick for each input a suitable combination of computations with respect to its inference difficulty. However, we find out that such “dynamic routing” of computations could be exploited to drain/waste precious resources on mobile deep learning systems. In this work, we introduce a new deep learning attack dimension, the computational resources draining, and demonstrate its feasibility in one of possible attack manners, the adversarial examples of input data. We describe how to construct our special adversarial examples aiming to the resource draining, and show that these poisoned inputs are able to increase the computation loads on purpose with two experiment datasets. We hope that our findings can shed light on the path of improving the robustness of mobile deep learning optimizations.
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