首页> 外文会议>Conference on Signal and Data Processing of Small Targets 2003; Aug 5-7, 2003; San Diego, California, USA >Joint passive radar tracking and target classification using radar cross section
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Joint passive radar tracking and target classification using radar cross section

机译:使用雷达横截面的联合无源雷达跟踪和目标分类

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We present a recursive Bayesian solution for the problem of joint tracking and classification of airborne targets. In our system, we allow for complications due to multiple targets, false alarms, and missed detections. More importantly, though, we utilize the full benefit of a joint approach by implementing our tracker using an aerody-namically valid flight model that requires aircraft-specific coefficients such as wing area and vehicle mass, which are provided by our classifier. A key feature that bridges the gap between tracking and classification is radar cross section (RCS). By modeling the true deterministic relationship that exists between RCS and target aspect, we are able to gain both valuable class information and an estimate of target orientation. However, the lack of a closed-form relationship between RCS and target aspect prevents us from using the Kalman filter or its variants. Instead, we rely upon a sequential Monte Carlo-based approach known as particle filtering. In addition to allowing us to include RCS as a measurement, the particle filter also simplifies the implementation of our nonlinear non-Gaussian flight model.
机译:我们针对机载目标的联合跟踪和分类问题提出了一种递归贝叶斯解决方案。在我们的系统中,由于多个目标,错误警报和漏检而导致的复杂性。不过,更重要的是,我们通过使用航空动力学上有效的飞行模型来实现我们的跟踪器,从而充分利用了联合方法的全部优势,该飞行模型需要飞机特定的系数,例如机翼面积和飞行器质量,这由分类器提供。弥合跟踪和分类之间差距的关键功能是雷达横截面(RCS)。通过对RCS和目标方面之间存在的真实确定性关系进行建模,我们能够获得有价值的类信息和目标方向的估计。但是,由于RCS与目标方面之间缺乏封闭形式的关系,因此我们无法使用卡尔曼滤波器或其变体。取而代之的是,我们依赖于基于蒙特卡洛的顺序方法,即粒子滤波。除了允许我们将RCS包含在测量中之外,粒子滤波器还简化了我们的非线性非高斯飞行模型的实现。

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