首页> 外文会议>Conference on Automatic Target Recognition >Multi-source feature extraction and target recognition in wireless sensor networks based on adaptive, distributed wavelet compression algorithms
【24h】

Multi-source feature extraction and target recognition in wireless sensor networks based on adaptive, distributed wavelet compression algorithms

机译:基于自适应分布式小波压缩算法的无线传感器网络多源特征提取与目标识别

获取原文

摘要

Proposed distributed wavelet-based algorithms are a means to compress sensor data received at the nodes forming a wireless sensor network (WSN) by exchanging information between neighboring sensor nodes. Local collaboration among nodes compacts the measurements, yielding a reduced fused set with equivalent information at far fewer nodes. Nodes may be equipped with multiple sensor types, each capable of sensing distinct phenomena: thermal, humidity, chemical, voltage, or image signals with low or no frequency content as well as audio, seismic or video signals within defined frequency ranges. Compression of the multi-source data through wavelet-based methods, distributed at active nodes, reduces downstream processing and storage requirements along the paths to sink nodes; it also enables noise suppression and more energy-efficient query routing within the WSN. Targets are first detected by the multiple sensors; then wavelet compression and data fusion are applied to the target returns, followed by feature extraction from the reduced data; feature data are input to target recognition/classification routines; targets are tracked during their sojourns through the area monitored by the WSN. Algorithms to perform these tasks are implemented in a distributed manner, based on a partition of the WSN into clusters of nodes. In this work, a scheme of collaborative processing is applied for hierarchical data aggregation and decorrelation, based on the sensor data itself and any redundant information, enabled by a distributed, in-cluster wavelet transform with lifting that allows multiple levels of resolution. The wavelet-based compression algorithm significantly decreases RF bandwidth and other resource use in target processing tasks. Following wavelet compression, features are extracted. The objective of feature extraction is to maximize the probabilities of correct target classification based on multi-source sensor measurements, while minimizing the resource expenditures at participating nodes. Therefore, the feature-extraction method based on the Haar DWT is presented that employs a maximum-entropy measure to determine significant wavelet coefficients. Features are formed by calculating the energy of coefficients grouped around the competing clusters. A DWT-based feature extraction algorithm used for vehicle classification in WSNs can be enhanced by an added rule for selecting the optimal number of resolution levels to improve the correct classification rate and reduce energy consumption expended in local algorithm computations.Published field trial data for vehicular ground targets, measured with multiple sensor types, are used to evaluate the wavelet-assisted algorithms. Extracted features are used in established target recognition routines, e.g., the Bayesian minimum-error-rate classifier, to compare the effects on the classification performance of the wavelet compression. Simulations of feature sets and recognition routines at different resolution levels in target scenarios indicate the impact on classification rates, while formulas are provided to estimate reduction in resource use due to distributed compression.
机译:提出的基于分布式小波的算法是一种通过在相邻传感器节点之间交换信息来压缩在形成无线传感器网络(WSN)的节点处接收到的传感器数据的方法。节点之间的本地协作会压缩测量结果,从而在更少的节点上产生具有等效信息的精简融合集。节点可以配备多种传感器类型,每种类型都可以感知不同的现象:具有低或无频率含量的热,湿度,化学,电压或图像信号,以及定义频率范围内的音频,地震或视频信号。通过基于小波的方法压缩多源数据,这些方法分布在活动节点上,从而减少了到宿节点路径上的下游处理和存储需求;它还可以在WSN中实现噪声抑制和更节能的查询路由。首先由多个传感器检测目标。然后将小波压缩和数据融合应用于目标收益,然后从缩减后的数据中提取特征;特征数据被输入到目标识别/分类程序中;在通过WSN监视的区域停留期间跟踪目标。基于将WSN划分为节点集群,以分布式方式实现执行这些任务的算法。在这项工作中,基于传感器数据本身和任何冗余信息,将协作处理方案应用于分层数据聚合和去相关,该冗余信息由具有允许多个分辨率级别的提升的分布式集群内小波变换实现。基于小波的压缩算法可显着减少目标处理任务中的RF带宽和其他资源使用。小波压缩后,提取特征。特征提取的目的是使基于多源传感器测量的正确目标分类的概率最大化,同时使参与节点的资源支出最小化。因此,提出了一种基于Haar DWT的特征提取方法,该方法采用最大熵测度来确定有效的小波系数。通过计算围绕竞争集群分组的系数的能量来形成特征。可以通过添加规则来增强WSN中用于车辆分类的基于DWT的特征提取算法,该规则用于选择最佳分辨率级别数以提高正确的分类率并减少本地算法计算中消耗的能量。用多种传感器类型测量的地面目标可用于评估小波辅助算法。所提取的特征被用于已建立的目标识别例程中,例如贝叶斯最小错误率分类器,以比较对小波压缩的分类性能的影响。目标场景中不同分辨率级别的功能集和识别例程的仿真表明了对分类率的影响,同时提供了一些公式来估算由于分布式压缩而导致的资源使用减少。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号