Directed Acyclic Graph-based Neural Networks for Tunable Low-Power Computer Vision

Abhinav Goel, Caleb Tung, Nick Eliopoulos, Xiao Hu, G. Thiruvathukal, James C. Davis, Yung-Hsiang Lu
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引用次数: 2

Abstract

Processing visual data on mobile devices has many applications, e.g., emergency response and tracking. State-of-the-art computer vision techniques rely on large Deep Neural Networks (DNNs) that are usually too power-hungry to be deployed on resource-constrained edge devices. Many techniques improve DNN efficiency of DNNs by compromising accuracy. However, the accuracy and efficiency of these techniques cannot be adapted for diverse edge applications with different hardware constraints and accuracy requirements. This paper demonstrates that a recent, efficient tree-based DNN architecture, called the hierarchical DNN, can be converted into a Directed Acyclic Graph-based (DAG) architecture to provide tunable accuracy-efficiency tradeoff options. We propose a systematic method that identifies the connections that must be added to convert the tree to a DAG to improve accuracy. We conduct experiments on popular edge devices and show that increasing the connectivity of the DAG improves the accuracy to within 1% of the existing high accuracy techniques. Our approach requires 93% less memory, 43% less energy, and 49% fewer operations than the high accuracy techniques, thus providing more accuracy-efficiency configurations.
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面向可调低功耗计算机视觉的有向无环图神经网络
在移动设备上处理可视数据有许多应用,例如,应急响应和跟踪。最先进的计算机视觉技术依赖于大型深度神经网络(dnn),这些网络通常过于耗电,无法部署在资源受限的边缘设备上。许多技术通过牺牲精度来提高深度神经网络的效率。然而,这些技术的精度和效率不能适应具有不同硬件约束和精度要求的各种边缘应用。本文证明了一种最新的,高效的基于树的深度神经网络架构,称为分层深度神经网络,可以转换为基于有向无环图(DAG)的架构,以提供可调的精度-效率权衡选项。我们提出了一种系统的方法来识别必须添加的连接,以将树转换为DAG以提高准确性。我们在流行的边缘设备上进行了实验,结果表明,增加DAG的连通性可以将精度提高到现有高精度技术的1%以内。与高精度技术相比,我们的方法需要减少93%的内存、43%的能量和49%的操作,从而提供更高的精度效率配置。
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