集成卷积神经网络的可靠分类

Zhen Gao, Han Zhang, Xiaohui Wei, Tong Yan, Kangkang Guo, Wenshuo Li, Yu Wang, P. Reviriego
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引用次数: 2

摘要

卷积神经网络(cnn)在计算机视觉和自然语言处理中有着广泛的应用。由于计算量大,在fpga上实现cnn成为一种流行的选择。随着cnn被用于安全关键应用,可靠性成为优先考虑的问题。这带来了挑战,因为fpga容易遭受软错误。传统的基于模块化冗余的容错技术引入了较大的开销,这对于许多资源有限的嵌入式系统来说可能是不可接受的。本文探讨了使用cnn集合来构建可靠的分类器。其思想是将几个“弱”分类器组合起来以获得一个“强”分类器,这样,如果其中一个分类器失效,分类器仍然可以可靠地工作。与传统的集成学习寻找分类器来相互补充不同,在我们的案例中,相似性对于实现容错也很重要。为了评估使用集成实现容错cnn的潜力,对ResNets进行了初步研究。结果表明,相对于单个深层ResNet,浅层ResNet的集合可以提供类似的分类结果,同时在有限的开销下提供有效的错误保护。
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Reliable Classification with Ensemble Convolutional Neural Networks
Convolutional Neural Networks (CNNs) are widely used in computer vision and natural language processing. Due to large computational requirements, implementation of CNNs on FPGAs becomes an popular option. As CNNs being used in safety critical applications, reliability become a priority. This poses challenges as FPGAs are prone to suffer soft errors. Traditional fault tolerant techniques based on modular redundancy introduce a large overhead, which may not be acceptable for many resources-limited embedded system. This paper explores the use of an ensemble of CNNs to build reliable classifiers. The idea is to combine several “weak” classifiers to obtain a “strong” one, so that the classifier can still work reliably if one of its members fails. Differently from traditional ensemble learning that looks for the classifiers to complement each other, in our case similarity is also important to achieve fault tolerance. To evaluate the potential of using ensembles to implement fault tolerant CNNs, an initial study is done on ResNets. The results show that, relative to a single deep ResNet, an ensemble of shallow ResNets could provide similar classification results while providing an effective protection against errors with limited overhead.
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