智能家居应用中的高效稀疏处理

Rishikanth Chandrasekaran, Yunhui Guo, Anthony Thomas, M. Menarini, M. Ostertag, Yeseong Kim, T. Simunic
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引用次数: 0

摘要

近年来,智能家居技术在各种应用中变得越来越普遍和重要。典型的智能家居系统由传感节点组成,该节点将原始数据发送到云服务器,云服务器使用离线训练的机器学习(ML)模型进行推理。这种方法的缺点是能源和通信成本高,还会引起隐私问题。为了解决这些问题,研究人员提出了层次感知模型,该模型将推理计算分布在传感器网络中,每个节点处理一部分推理。虽然分层模型显着降低了这些开销,但它们在资源受限的设备上运行是计算密集型的,这是智能家居部署的典型特点。在这项工作中,我们提出了一种将层次感知神经网络(HNN)与变分dropout技术相结合的新方法,以生成具有低计算开销的稀疏模型,使其能够在资源有限的边缘设备上运行。我们使用由多个边缘设备组成的广泛的现实世界智能家居部署来评估我们的方法。对不同设备的测量表明,在没有明显精度损失的情况下,能耗可以比最先进的技术降低35%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Sparse Processing in Smart Home Applications
In recent years, smart home technology has become prevalant and important for various applications. A typical smart home system consists of sensing nodes sending raw data to a cloud server which performs inference using a Machine Learning (ML) model trained offline. This approach suffers from high energy and communication costs and raises privacy concerns. To address these issues researchers proposed hierarchy aware models which distributes the inference computations across the sensor network with each node processing a part of the inference. While hierarchical models reduce these overheads significantly they are computationally intensive to run on resource constrained devices which are typical to smart home deployments. In this work we present a novel approach combining Hierarchy aware Neural Networks (HNN) with variational dropout technique to generate sparse models which have low computational overhead allowing them to be run on edge devices with limited resources. We evaluate our approach using an extensive real-world smart home deployment consisting of several edge devices. Measurements across different devices show that without significant loss of accuracy, energy consumption can be reduced by up to 35% over state-of-the-art.
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