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ReD-CaNe: A Systematic Methodology for Resilience Analysis and Design of Capsule Networks under Approximations

机译:ReD-CaNe:近似条件下胶囊网络的弹性分析和设计的系统方法

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Recent advances in Capsule Networks (CapsNets) have shown their superior learning capability, compared to the traditional Convolutional Neural Networks (CNNs). However, the extremely high complexity of CapsNets limits their fast deployment in real-world applications. Moreover, while the resilience of CNNs have been extensively investigated to enable their energy-efficient implementations, the analysis of CapsNets’ resilience is a largely unexplored area, that can provide a strong foundation to investigate techniques to overcome the CapsNets’ complexity challenge.Following the trend of Approximate Computing to enable energy-efficient designs, we perform an extensive resilience analysis of the CapsNets inference subjected to the approximation errors. Our methodology models the errors arising from the approximate components (like multipliers), and analyze their impact on the classification accuracy of CapsNets. This enables the selection of approximate components based on the resilience of each operation of the CapsNet inference. We modify the TensorFlow framework to simulate the injection of approximation noise (based on the models of the approximate components) at different computational operations of the CapsNet inference. Our results show that the CapsNets are more resilient to the errors injected in the computations that occur during the dynamic routing (the softmax and the update of the coefficients), rather than other stages like convolutions and activation functions. Our analysis is extremely useful towards designing efficient CapsNet hardware accelerators with approximate components. To the best of our knowledge, this is the first proof-of-concept for employing approximations on the specialized CapsNet hardware.
机译:与传统的卷积神经网络(CNN)相比,胶囊网络(CapsNets)的最新发展已显示出其卓越的学习能力。但是,CapsNets的极高复杂性限制了它们在实际应用中的快速部署。此外,尽管已经对CNN的弹性进行了广泛研究以实现其高能效的实现,但CapsNets的弹性分析仍是一个尚未探索的领域,可以为研究克服CapsNets的复杂性挑战的技术提供坚实的基础。为了实现节能设计,在近似计算的趋势下,我们对CapsNets推论进行了广泛的弹性分析,该推论受到近似误差的影响。我们的方法对由近似分量(如乘数)引起的误差进行建模,并分析其对CapsNets分类精度的影响。这样就可以根据CapsNet推断每个操作的弹性来选择近似组件。我们修改了TensorFlow框架,以在CapsNet推断的不同计算操作下模拟近似噪声的注入(基于近似组件的模型)。我们的结果表明,CapsNets对动态路由(softmax和系数的更新)过程中发生的计算中注入的错误更具弹性,而不是卷积和激活函数之类的其他阶段。我们的分析对于设计具有近似组件的高效CapsNet硬件加速器非常有用。据我们所知,这是在专用CapsNet硬件上采用近似值的第一个概念验证。

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