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首页> 外文期刊>IEEE Transactions on Aerospace and Electronic Systems >OS-CFAR thresholding in decentralized radar systems
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OS-CFAR thresholding in decentralized radar systems

机译:分散雷达系统中的OS-CFAR门限

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摘要

In a decentralized detection scheme, several sensors perform a binary (hard) decision and send the resulting data to a fusion center for the final decision. If each local decision has a constant false alarm rate (CFAR), the final decision is ensured to be CFAR. We consider the case that each local decision is a threshold decision, and the threshold is proportional, through a suitable multiplier, to a linear combination of order statistics (OS) from a reference set (a generalization of the concept of OS thresholding). We address the following problem: given the fusion rule and the relevant system parameters, select each threshold multiplier and the coefficients of each linear combination so as to maximize the overall probability of detection for constrained probability of false alarm. By a Lagrangian maximization approach, we obtain a general solution to this problem and closed-form solutions for the AND and OR fusion logics. A performance assessment is carried on, showing a global superiority of the OR fusion rule in terms of detection probability (for operating conditions matching the design assumptions) and of robustness (when these do not match). We also investigate the effect of the hard quantization performed at the local sensors, by comparing the said performance to those achievable by the same fusion rule in the limiting case of no quantization.
机译:在分散式检测方案中,多个传感器执行二进制(硬)决策,并将结果数据发送到融合中心以进行最终决策。如果每个本地决策具有恒定的误报率(CFAR),则确保最终决策为CFAR。我们考虑以下情况:每个局部决策都是阈值决策,并且阈值通过适当的乘数与参考集中的订单统计信息(OS)的线性组合成比例(OS阈值化概念的概括)。我们解决了以下问题:给定融合规则和相关的系统参数,选择每个阈值乘数和每个线性组合的系数,以最大程度地提高总检测概率,以限制误报概率。通过拉格朗日最大化方法,我们获得了该问题的一般解决方案,以及AND和OR融合逻辑的闭式解决方案。进行了性能评估,显示了OR融合规则在检测概率(对于与设计假设匹配的工作条件)和鲁棒性(在不匹配时)方面的全局优势。我们还通过将所述性能与在没有量化的极限情况下通过相同融合规则可获得的性能进行比较,来研究在本地传感器处执行的硬量化的效果。

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