A Novel Decision Fusion Scheme with Feedback in Neyman-Pearson Detection Systems

Guangyang Zeng, Junfeng Wu, Xiufang Shi, Zhiguo Shi
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引用次数: 1

Abstract

Information fusion brings great advantages in multi-sensor detection systems and has attracted much attention. Regarding decision level fusion, in many existing literatures, the fusion center (FC) gives a global decision via a likelihood ratio (LR) test where the LR function is compared with a constant threshold. Most of these can be viewed as one-stage decision fusion schemes because the FC does not utilize the historical information in a continuous period of time. In this paper, we propose a novel multi-stage decision fusion scheme with feedback from the view of the Neyman-Pearson (N-P) criterion. In the proposed scheme, at each stage, the FC selects one threshold from two alternative values based on the feedback of the previous stage’s global decision to perform the LR test. Then we prove the convergence of the global detection probability and the false alarm probability when the true state of the target remains unchanged. For the decision fusion of two homogeneous sensors, we derive the optimal alternative thresholds under the N-P criterion. Simulation results show that the proposed scheme can effectively improve the performance of target detection.
Neyman-Pearson检测系统中一种具有反馈的决策融合方案
信息融合在多传感器检测系统中具有很大的优势,受到了广泛的关注。对于决策级融合,在许多现有文献中,融合中心(FC)通过似然比(LR)检验给出全局决策,LR函数与恒定阈值进行比较。其中大多数可以看作是一阶段的决策融合方案,因为FC不利用连续时间段内的历史信息。本文从Neyman-Pearson (N-P)准则出发,提出了一种具有反馈的多阶段决策融合方案。在提出的方案中,在每个阶段,FC根据前一阶段全局决策的反馈从两个备选值中选择一个阈值来执行LR测试。然后证明了当目标的真实状态保持不变时,全局检测概率和虚警概率的收敛性。对于两个同质传感器的决策融合,我们在N-P准则下导出了最优备选阈值。仿真结果表明,该方案能有效提高目标检测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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