Wang Xue, Wang Sheng, Bi Daowei
Department of Precision Instruments and Mechanology, Institute of Instrument Science and Technology, State Key Laboratory of Precision Measurement Technology and Instruments, Tsinghua University, Beijing, China.
IEEE Trans Syst Man Cybern B Cybern. 2009 Oct;39(5):1134-46. doi: 10.1109/TSMCB.2009.2013196. Epub 2009 Mar 24.
A wireless sensor network (WSN) is a powerful unattended distributed measurement system, which is widely used in target surveillance because of its outstanding performance in distributed sensing and signal processing. This paper introduces a multiview visual-target-surveillance system in WSN, which can autonomously implement target classification and tracking with collaborative online learning and localization. The proposed system is a hybrid system of single-node and multinode fusion. It is constructed on a peer-to-peer (P2P)-based computing paradigm and consists of some simple but feasible methods for target detection and feature extraction. Importantly, a support-vector-machine-based semisupervised learning method is used to achieve online classifier learning with only unlabeled samples. To reduce the energy consumption and increase the accuracy, a novel progressive data-fusion paradigm is proposed for online learning and localization, where a feasible routing method is adopted to implement information transmission with the tradeoff between performance and cost. Experiment results verify that the proposed surveillance system is an effective, energy-efficient, and robust system for real-world application. Furthermore, the P2P-based progressive data-fusion paradigm can improve the energy efficiency and robustness of target surveillance.
无线传感器网络(WSN)是一种强大的无人值守分布式测量系统,因其在分布式传感和信号处理方面的出色性能而被广泛应用于目标监测。本文介绍了一种无线传感器网络中的多视图视觉目标监测系统,该系统可以通过协作式在线学习和定位自主实现目标分类与跟踪。所提出的系统是单节点和多节点融合的混合系统。它基于对等(P2P)计算范式构建,由一些简单但可行的目标检测和特征提取方法组成。重要的是,一种基于支持向量机的半监督学习方法被用于仅利用未标记样本实现在线分类器学习。为了降低能耗并提高准确性,提出了一种新颖的渐进式数据融合范式用于在线学习和定位,其中采用了一种可行的路由方法来在性能和成本之间进行权衡实现信息传输。实验结果验证了所提出的监测系统是一种适用于实际应用的有效、节能且稳健的系统。此外,基于P2P的渐进式数据融合范式可以提高目标监测的能量效率和稳健性。