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Pruning deep convolutional neural networks for efficient edge computing in condition assessment of infrastructures

机译:修剪基础设施条件评估中有效边缘计算的深度卷积神经网络

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Health monitoring of civil infrastructures is a key application of Internet of things (IoT), while edge computing is an important component of IoT. In this context, swarms of autonomous inspection robots, which can replace current manual inspections, are examples of edge devices. Incorporation of pretrained deep learning algorithms into these robots for autonomous damage detection is a challenging problem since these devices are typically limited in computing and memory resources. This study introduces a solution based on network pruning using Taylor expansion to utilize pretrained deep convolutional neural networks for efficient edge computing and incorporation into inspection robots. Results from comprehensive experiments on two pretrained networks (i.e., VGG16 and ResNet18) and two types of prevalent surface defects (i.e., crack and corrosion) are presented and discussed in detail with respect to performance, memory demands, and the inference time for damage detection. It is shown that the proposed approach significantly enhances resource efficiency without decreasing damage detection performance.
机译:民事基础设施的健康监测是物联网(物联网)的关键应用,而优先级计算是IOT的重要组成部分。在这种情况下,可以更换当前手动检查的自主检查机器人的群体是边缘设备的示例。将预先训练的深度学习算法纳入这些机器人以进行自主损伤检测是一个具有挑战性的问题,因为这些设备通常限制在计算和内存资源中。本研究介绍了一种基于网络修剪的解决方案,采用泰勒拓展利用预染色的深卷积神经网络,以实现高效的边缘计算和融入检查机器人。在两个预磨平网络(即VGG16和Reset18)上的综合实验结果和两种类型的普遍存在的表面缺陷(即,裂缝和腐蚀),并详细讨论了性能,存储器需求,并对损坏检测的推理时间进行了详细讨论。结果表明,该方法显着提高了资源效率而不会降低损坏检测性能。

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