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Distributed Convolutional Neural Networks for Human Activity Recognition in Wearable Robotics

机译:可穿戴机器人中的人类活动识别分布式卷积神经网络

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We investigate distributing convolutional neural networks (CNNs) for human activity recognition across computing nodes collocated with sensors at specific regions (body, arms and legs) on the wearer. We compare four CNN architectures. A distributed CNN is implemented on a network of Intel Edison nodes, demonstrating the capability of performing real-time classification. Two use a centralized, monolithic approach, and two are distributed across a number of computing nodes. While the accuracy of the distributed approaches are slightly worse than those of the monolithic CNNs, exploiting the hierarchy of the problem turns out to require much less memory - and therefore computation - than the monolithic CNNs, and only modest communication rates between nodes in the model, making the approach viable for a wide range of distributed systems ranging from wearable robots to multi-robot swarms.
机译:我们调查分布卷积神经网络(CNNS)在佩戴者上的特定区域(身体,臂和腿)上的传感器划分的计算节点上的人类活动识别。我们比较四个CNN架构。分布式CNN在Intel Evison节点的网络上实现,展示执行实时分类的能力。两个使用集中式,单片方法,两个分布在许多计算节点上。虽然分布式方法的准确性略差于单片CNNS,但利用问题的层次问题,以便需要更少的内存 - 因此计算 - 而不是单片CNN,并且在模型中的节点之间的纯粹通信速率,采用可行的分布式系统可行的方法,从可穿戴机器人到多机器人群。

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