一种多宽带信号检测、数据关联和跟踪的集成方法

C. Christou
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引用次数: 1

摘要

本研究探索了一种直接从阵列数据中集成检测、定位和跟踪多个宽带信号的新方法,而不需要不同的数据关联。该方法基于极大后验概率概念,将极大似然测向技术与卡尔曼滤波理论相结合。隐式数据关联由一种非线性规划格式给出,简化了约束优化问题的求解。假设马尔可夫运动和随机高斯信号和噪声,研究了合成数据集和真实数据集的不同运动场景。在元素空间、波束空间和窗口元素空间中开发了全数据批、半序列和全序列变体。研究发现,该方法可以很好地工作到-10 dB的信噪比,并适用于高度动态的场景。采用交替投影法进行接触状态初始化和信号枚举。
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An integrated method to detection, data association and tracking of multiple broadband signals
The present work explores a new method of integrated detection, localization, and tracking of multiple broadband signals directly from array data, without the requirement of distinct data association. The method is based on Maximum A-Posteriori probability concepts and combines Maximum Likelihood direction finding techniques with Kalman Filter theory. Implicit data association is given by a Nonlinear Programming scheme that simplifies the solution of a constrained optimization problem. Assuming Markov Motion and random Gaussian signals and noise, diverse kinematic scenarios for both synthetic and real data sets were investigated. Full data batch, semi-sequential and fully sequential variants were developed in element space, beamspace and windowed element space. The method was found to work well down to a signal-to-noise ratio of -10 dB, and for highly dynamic scenarios. An alternating projection method was used for contact state initialization and signal enumeration.
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