Recovery algorithm to correct silent data corruption of synaptic storage in convolutional neural networks

A. Roy, Simone A. Ludwig
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Abstract

With the surge of computational power and efficient energy consumption management on embedded devices, embedded processing has grown exponentially during the last decade. In particular, computer vision has become prevalent in real-time embedded systems, which have always been a victim of transient fault due to its pervasive presence in harsh environments. Convolutional Neural Networks (CNN) are popular in the domain of embedded vision (computer vision in embedded systems) given the success they have shown. One problem encountered is that a pre-trained CNN on embedded devices is vastly affected by Silent Data Corruption (SDC). SDC refers to undetected data corruption that causes errors in data without any indication that the data is incorrect, and thus goes undetected. In this paper, we propose a software-based approach to recover the corrupted bits of a pre-trained CNN due to SDC. Our approach uses a rule-mining algorithm and we conduct experiments on the propagation of error through the topology of the CNN in order to detect the association of the bits for the weights of the pre-trained CNN. This approach increases the robustness of safety-critical embedded vision applications in volatile conditions. A proof of concept has been conducted for a combination of a CNN and a vision data set. We have successfully established the effectiveness of this approach for a very high level of SDC. The proposed approach can further be extended to other networks and data sets.
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修正卷积神经网络突触存储沉默数据损坏的恢复算法
随着嵌入式设备的计算能力和高效能耗管理的激增,嵌入式处理在过去十年中呈指数级增长。特别是,计算机视觉已经在实时嵌入式系统中变得普遍,由于它在恶劣环境中的普遍存在,它一直是瞬态故障的受害者。卷积神经网络(CNN)在嵌入式视觉(嵌入式系统中的计算机视觉)领域很受欢迎,因为它们已经取得了成功。遇到的一个问题是,嵌入式设备上预训练的CNN受到无声数据损坏(SDC)的极大影响。SDC是指未检测到的数据损坏,在没有任何数据错误的指示的情况下导致数据错误,因此未被检测到。在本文中,我们提出了一种基于软件的方法来恢复由于SDC而导致的预训练CNN的损坏位。我们的方法使用规则挖掘算法,并通过CNN的拓扑对误差传播进行实验,以检测预训练CNN权重的比特的关联。这种方法增加了安全关键型嵌入式视觉应用在不稳定条件下的鲁棒性。对CNN和视觉数据集的组合进行了概念验证。我们已经成功地确立了这种方法对非常高水平的SDC的有效性。所提出的方法可以进一步扩展到其他网络和数据集。
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