Edge-Based Video Surveillance With Graph-Assisted Reinforcement Learning in Smart Construction

被引:16
作者
Ming, Zhongxing [1 ]
Chen, Jinshen [1 ]
Cui, Laizhong [1 ,2 ]
Yang, Shu [1 ]
Pan, Yi [3 ]
Xiao, Wei [4 ]
Zhou, Lixin [5 ]
机构
[1] Shenzhen Univ, Coll Comp Sci & Software Engn, Shenzhen 518000, Peoples R China
[2] Peng Cheng Lab, Shenzhen 518060, Guangdong, Peoples R China
[3] Chinese Acad Sci, Fac Comp Sci & Control Engn, Shenzhen Inst Adv Technol, Shenzhen 518053, Peoples R China
[4] Tsinghua Univ, Res Inst, Shenzhen 518057, Peoples R China
[5] China Resources Construct Corp, Shenzhen 518052, Peoples R China
基金
中国国家自然科学基金;
关键词
Adaptive configuration (AC); graph neural network; reinforcement learning; smart construction; task scheduling (TS); INTERNET; SYSTEM;
D O I
10.1109/JIOT.2021.3090513
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The smart construction site is developing rapidly with the intelligentization of industrial management. Intelligent devices are being widely deployed in construction industry to support artificial intelligence applications. Video surveillance is a core function of smart construction, which demands both high accuracy and low latency. The challenge is that the computation and networking resources in a construction site are often limited, and the inefficient scheduling policies create congestions in the network and bring additional delay that is unbearable to realtime surveillance. Adaptive video configuration and edge computing have been proposed to improve accuracy and reduce latency with limited resources. However, optimizing the video configuration and task scheduling in edge computing involves several factors that often interfere with each other, which significantly decreases the performance of video surveillance. In this article, we present an edge-based solution of video surveillance in the smart construction site assisted by a graph neural network. It leverages the distributed computing model to realize flexible allocation of resources. A graph-assisted hierarchical reinforcement learning algorithm is developed to illustrate the feature of the mobile-edge network and optimize the scheduling policy by the Deep- $Q$ Network. We implement and test the proposed solution in the commercial residential buildings of a fortune global 500 real estate company and observe that the proposed algorithm is efficient to maintain a reliable accuracy and keep lower delay. We further conduct a case study to demonstrate the superiority of the proposed solution by comparing it with traditional mechanisms.
引用
收藏
页码:9249 / 9265
页数:17
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