Performance Evaluation of State Estimators for Airborne Target Tracking Using Multi Sensor Data Fusion

David S. R. Kondru, M. Celenk
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Abstract

The main function of range sensory systems under a given dynamic environment is to detect, discriminate and track a particular target for surveillance in case of a friendly target or an enemy target interception. The combination of two or more sensors will provide better position estimate than a single sensor. In this paper, the advantages of the multi sensor data fusion is presented and compared over conventional single sensor tracking. The state estimation techniques are utilized to enhance position accuracy in a single and multi-sensor environment. The performance of each state estimator is evaluated by considering different target motions along with their nonlinear characteristics. The state estimators presented here varies from simple linear filters such as fixed gain and Kalman filters to complex nonlinear filters such as Particle filter. Two widely used Extended Kalman filter based fusion architectures such as measurement fusion and state vector fusion are explored. The data is simulated from two ground based sensors RADAR and FLIR (forward looking infra red) to examine the fusion process. The RMS error is computed in range, azimuth, and elevation angles. A complete mathematical modeling and simulation is implemented in MATLAB. It is found that fusion architectures have demonstrated better performance in tracking accuracy.
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基于多传感器数据融合的机载目标跟踪状态估计器性能评估
在给定的动态环境下,距离传感系统的主要功能是在友方目标或敌方目标被拦截的情况下,对特定目标进行探测、识别和跟踪监视。两个或多个传感器的组合将比单个传感器提供更好的位置估计。本文介绍了多传感器数据融合相对于传统单传感器跟踪的优点,并进行了比较。利用状态估计技术提高了单传感器和多传感器环境下的定位精度。通过考虑不同目标运动及其非线性特性来评估每个状态估计器的性能。本文提出的状态估计器既有简单的线性滤波器,如固定增益滤波器和卡尔曼滤波器,也有复杂的非线性滤波器,如粒子滤波器。研究了基于扩展卡尔曼滤波的两种广泛应用的融合结构,即测量融合和状态向量融合。数据模拟来自两个地面传感器雷达和前视红外(前视红外)来检查融合过程。均方根误差以距离、方位角和仰角计算。在MATLAB中实现了完整的数学建模和仿真。结果表明,融合体系在跟踪精度方面表现出较好的性能。
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