基于非高斯特征测量误差的特征辅助全局最近邻模式匹配

Todd Fercho, D. Papageorgiou
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引用次数: 4

摘要

导弹防御系统级识别性能依赖于参与传感器之间的数据关联程度。在现有的体系结构下,两个传感器之间可能存在航迹切换,其中一个传感器形成的航迹传递给另一个传感器,以提高对目标的了解。全局最接近模式匹配(GNPM)问题是一个数学规划公式,已被证明可以成功地仅基于两个传感器的运动学数据正确关联轨迹,同时消除传感器间的偏差,并考虑到错误的轨迹和错过的检测。尽管取得了这样的成功,但是通过利用在目标上收集的特征数据来提高相关性能的兴趣仍然存在。本文通过扩展GNPM公式来解决这个问题,以解释其测量误差遵循任意分布的特征观测值。这是通过增加GNPM似然函数来实现的,使其包含一个表示仅基于特征观察的轨迹到轨迹分配的增量似然的项。计算结果说明了该方法的成功。
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Feature-aided global nearest pattern matching with non-Gaussian feature measurement errors
System-level discrimination performance for missile defense relies on how well data can be associated between participating sensors. Under the existing architecture, there may be a handover of tracks between two sensors in which tracks formed by one sensor are passed to another sensor to improve knowledge of the targets. The global nearest pattern matching (GNPM) problem is a mathematical programming formulation that has proven to be successful at correctly correlating tracks based solely on kinematic data from two sensors, while simultaneously removing inter-sensor bias and accounting for false tracks and missed detections. Despite this success, there is continued interest to improve correlation performance by exploiting feature data collected on targets. This paper addresses this issue by extending the GNPM formulation to account for feature observations whose measurement errors follow an arbitrary distribution. This is accomplished by augmenting the GNPM likelihood function to include a term representing the incremental likelihood of track-to-track assignments based solely on feature observations. Computational results are presented to illustrate the success of this approach.
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