分布式传感器网络中的自适应删节单元平均CFAR检测

Panzhi Liu, Chongzhao Han, Ming Lei, Zengguo Sun
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引用次数: 2

摘要

提出了一种基于自适应截尾细胞平均CFAR技术的分布式恒虚警率检测器。在该方案中,单个检测器的每一个局部决策都取0或1,这是由其在测试单元中的样本与其参考样本的杂波功率电平估计值的比较得出的。在局部处理器中,利用CCA-CFAR(删节单元平均)技术得到局部决策,然后融合中心根据从各个局部传感器传输的局部决策总数做出全局决策。根据“k/N”融合规则,在数据融合中心得到总体决策为0或1。结果表明,在多目标干扰的非均匀背景下,该方法更符合实际。特别是在多目标情况下,它比分布式传感器网络中的MOS(最大阶统计量)、MOS(最小阶统计量)和OSOR(有序统计量)、ORAND更具有鲁棒性。在Swerling 2假设下,导出了虚警和检测概率的解析表达式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive censored cell-averaging CFAR detection in distributed sensor networks
This paper present a new distributed CFAR (constant false alarm rate) detector based on the adaptive censored cell-averaging CFAR technique. In the scheme, every local decision of individual detector, resulting from the comparison between its sample in test cell and the estimate of clutter power level of its reference samples, takes the value zero or one. In local processor, the CCA-CFAR (censored cell-averaging) technique is utilized to get the local decision, Then, the fusion center makes the global decision based on the total local decisions, which are transmitted from each local sensor. The overall decision, which is zero or one, is obtained at the data fusion center grounded on "k/N" fusion rule. The results show that for the nonhomogeneous background caused by multiple interfering targets, this approach is more reality. Particularly in multiple target situations, it exhibits robustness than MOS (maximum order statistic), mOS (minimum order statistic), and OSOR (ordered statistics), ORAND in distributed sensor networks. Under Swerling 2 assumption, the analytic expression of false alarm and detection probability are derived.
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