基于迁移学习的无线传感器网络中人类行为识别的移动大数据分析

IF 0.5 Q4 COMPUTER SCIENCE, THEORY & METHODS JOURNAL OF INTERCONNECTION NETWORKS Pub Date : 2023-01-05 DOI:10.1142/s0219265922420038
Zhexiong Cui, J. Ren
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引用次数: 0

摘要

人类行为的大数据分析可以为各种场景的应用提供依据和支撑。利用传感器进行人体行为分析是一种有效的识别手段,具有十分重要的研究价值。针对传统人类行为识别(HBR)算法在复杂场景下识别精度低、识别效率低等问题,提出了一种基于改进迁移学习的无线传感器网络移动大数据分析HBR算法。首先融合不同的无线传感器获取人体行为移动大数据,然后通过分析人体行为特征(HBF)的重要性,计算HBF提取阈值的动态变化参数。其次,结合阈值的动态变化参数,提取复杂场景的HBF;最后,利用复杂场景中HBF的分类函数,得到复杂场景中人类行为的最佳分类函数。根据特征集中的HBF对复杂场景中的人类行为进行分类。利用改进的迁移学习网络设计了HBR算法,实现了复杂场景下人类行为的识别。结果表明,该算法可以准确识别多达22个HBF点,并将HBR时间控制在2 s以内。人类行为对杂项场景的错误识别率小于10%。识别速度在10/s以上,召回率可达98%以上,提高了复杂场景的HBR能力。
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Mobile Big Data Analytics for Human Behavior Recognition in Wireless Sensor Network Based on Transfer Learning
Big data analysis of human behavior can provide the basis and support for the application of various scenarios. Using sensors for human behavior analysis is an effective means of identification method, which is very valuable for research. To address the problems of low recognition accuracy, low recognition efficiency of traditional human behavior recognition (HBR) algorithms in complex scenes, in this paper, we propose an HBR algorithm for Mobile Big data analytics in wireless sensor network using improved transfer learning. First, different wireless sensors are fused to obtain human behavior mobile big data, and then by analyzing the importance of human behavior features (HBF), the dynamic change parameters of HBF extraction threshold are calculated. Second, combined with the dynamic change parameters of threshold, the HBF of complex scenes are extracted. Finally, the best classification function of human behavior in complex scenes is obtained by using the classification function of HBF in complex scenes. Human behavior in complex scenes is classified according to the HBF in the feature set. The HBR algorithm is designed by using the improved transfer learning network to realize the recognition of human behavior in complex scenes. The results show that the proposed algorithm can accurately recognize up to 22 HBF points, and can control the HBR time within 2 s. The human behavior false recognition rate of miscellaneous scenes is less than 10%. The recognition speed is above 10/s, and the recall rate can reach more than 98%, which improves the HBR ability of complex scenes.
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来源期刊
JOURNAL OF INTERCONNECTION NETWORKS
JOURNAL OF INTERCONNECTION NETWORKS COMPUTER SCIENCE, THEORY & METHODS-
自引率
14.30%
发文量
121
期刊介绍: The Journal of Interconnection Networks (JOIN) is an international scientific journal dedicated to advancing the state-of-the-art of interconnection networks. The journal addresses all aspects of interconnection networks including their theory, analysis, design, implementation and application, and corresponding issues of communication, computing and function arising from (or applied to) a variety of multifaceted networks. Interconnection problems occur at different levels in the hardware and software design of communicating entities in integrated circuits, multiprocessors, multicomputers, and communication networks as diverse as telephone systems, cable network systems, computer networks, mobile communication networks, satellite network systems, the Internet and biological systems.
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