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Deep Learning Based Proactive Caching for Effective WSN-Enabled Vision Applications

机译:基于深度学习的主动缓存,用于有效的WSN的愿景应用

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Wireless Sensor Networks (WSNs) have a wide range of applications scenarios in computer vision, from pedestrian detection to robotic visual navigation. In response to the growing visual data services in WSNs, we propose a proactive caching strategy based on Stacked Sparse Autoencoder (SSAE) to predict content popularity (PCDS2AW). Firstly, based on Software Defined Network (SDN) and Network Function Virtualization (NFV) technologies, a distributed deep learning network SSAE is constructed in the sink nodes and control nodes of the WSN network. Then, the SSAE network structure parameters and network model parameters are optimized through training. The proactive cache strategy implementation procedure is divided into four steps. (1) The SDN controller is responsible for dynamically collecting user request data package information in the WSNs network. (2) The SSAEs predicts the packet popularity based on the SDN controller obtaining user request data. (3) The SDN controller generates a corresponding proactive cache strategy according to the popularity prediction result. (4) Implement the proactive caching strategy at the WSNs cache node. In the simulation, we compare the influence of spatiotemporal data on the SSAE network structure. Compared with the classic caching strategy Hash + LRU, Betw + LRU, and classic prediction algorithms SVM and BPNN, the proposed PCDS2AW proactive caching strategy can significantly improve WSN performance.
机译:无线传感器网络(WSNS)在计算机视觉中具有广泛的应用方案,从行人检测到机械手视觉导航。为了响应WSN中的越来越多的视觉数据服务,我们提出了一种基于堆叠的稀疏AutoEncoder(SSAE)的主动缓存策略,以预测内容流行度(PCDS2AW)。首先,基于软件定义的网络(SDN)和网络功能虚拟化(NFV)技术,在WSN网络的宿节点和控制节点中构造了分布式深度学习网络SSAE。然后,通过训练优化SSAE网络结构参数和网络模型参数。主动缓存策略实现程序分为四个步骤。 (1)SDN控制器负责在WSN网络中动态收集用户请求数据包信息。 (2)SSAE基于获取用户请求数据的SDN控制器预测数据包人气。 (3)SDN控制器根据受欢迎的预测结果生成相应的主动缓存策略。 (4)在WSNS缓存节点上实现主动缓存策略。在模拟中,我们比较了时空数据对SSAE网络结构的影响。与经典缓存策略散列+ LRU相比,Betw + LRU和经典预测算法SVM和BPNN,所提出的PCDS2AW主动缓存策略可以显着提高WSN性能。

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