Yoo Jaehyun, Kim Hyoun Jin
Department of Mechanical and Aerospace Engineering, Seoul National University, 599 Gwanangno, Gwanak-gu, Seoul KS013, Korea.
Sensors (Basel). 2014 Dec 11;14(12):23871-84. doi: 10.3390/s141223871.
Tracking the locations and identities of moving targets in the surveillance area of wireless sensor networks is studied. In order to not rely on high-cost sensors that have been used in previous researches, we propose the integrated localization and classification based on semi-supervised learning, which uses both labeled and unlabeled data obtained from low-cost distributed sensor network. In our setting, labeled data are obtained by seismic and PIR sensors that contain information about the types of the targets. Unlabeled data are generated from the RF signal strength by applying Gaussian process, which represents the probability of predicted target locations. Finally, by using classified unlabeled data produced by semi-supervised learning, identities and locations of multiple targets are estimated. In addition, we consider a case when the labeled data are absent, which can happen due to fault or lack of the deployed sensor nodes and communication failure. We overcome this situation by defining artificial labeled data utilizing characteristics of support vector machine, which provides information on the importance of each training data point. Experimental results demonstrate the accuracy of the proposed tracking algorithm and its robustness to the absence of the labeled data thanks to the artificial labeled data.
研究了在无线传感器网络监测区域中跟踪移动目标的位置和身份。为了不依赖先前研究中使用的高成本传感器,我们提出了基于半监督学习的集成定位与分类方法,该方法使用从低成本分布式传感器网络获得的有标签和无标签数据。在我们的设置中,有标签数据由包含目标类型信息的地震传感器和被动红外传感器获取。无标签数据通过应用高斯过程从射频信号强度生成,高斯过程表示预测目标位置的概率。最后,通过使用半监督学习产生的分类无标签数据,估计多个目标的身份和位置。此外,我们考虑了无标签数据的情况,这可能由于部署的传感器节点故障或缺乏以及通信故障而发生。我们通过利用支持向量机的特性定义人工有标签数据来克服这种情况,支持向量机提供了每个训练数据点重要性的信息。实验结果证明了所提出跟踪算法的准确性及其对无标签数据缺失的鲁棒性,这得益于人工有标签数据。