Wang Xue, Wang Sheng, Bi Daowei, Ding Liang
State Key Laboratory of Precision Measurement Technology and Instrument, Tsinghua University, Beijing 100084, P. R. China.
Sensors (Basel). 2007 Nov 13;7(11):2693-2722. doi: 10.3390/s7112693.
Wireless multimedia sensor networks (WMSN) have recently emerged as one ofthe most important technologies, driven by the powerful multimedia signal acquisition andprocessing abilities. Target classification is an important research issue addressed in WMSN,which has strict requirement in robustness, quickness and accuracy. This paper proposes acollaborative semi-supervised classifier learning algorithm to achieve durative onlinelearning for support vector machine (SVM) based robust target classification. The proposedalgorithm incrementally carries out the semi-supervised classifier learning process inhierarchical WMSN, with the collaboration of multiple sensor nodes in a hybrid computingparadigm. For decreasing the energy consumption and improving the performance, somemetrics are introduced to evaluate the effectiveness of the samples in specific sensor nodes,and a sensor node selection strategy is also proposed to reduce the impact of inevitablemissing detection and false detection. With the ant optimization routing, the learningprocess is implemented with the selected sensor nodes, which can decrease the energyconsumption. Experimental results demonstrate that the collaborative hybrid semi-supervised classifier learning algorithm can effectively implement target classification inhierarchical WMSN. It has outstanding performance in terms of energy efficiency and timecost, which verifies the effectiveness of the sensor nodes selection and ant optimizationrouting.
无线多媒体传感器网络(WMSN)最近已成为最重要的技术之一,这得益于其强大的多媒体信号采集和处理能力。目标分类是WMSN中一个重要的研究问题,对鲁棒性、快速性和准确性有严格要求。本文提出了一种协作半监督分类器学习算法,以实现基于支持向量机(SVM)的鲁棒目标分类的持续在线学习。该算法在分层WMSN中增量地执行半监督分类器学习过程,多个传感器节点在混合计算范式下进行协作。为了降低能耗并提高性能,引入了一些指标来评估特定传感器节点中样本的有效性,还提出了一种传感器节点选择策略,以减少不可避免的漏检和误检的影响。通过蚁群优化路由,利用选定的传感器节点实现学习过程,从而降低能耗。实验结果表明,协作混合半监督分类器学习算法能够有效地在分层WMSN中实现目标分类。它在能源效率和时间成本方面具有出色的性能,验证了传感器节点选择和蚁群优化路由的有效性。