Infrared search and track (IRST) system is an important passive tracking system widely applied in military and civil domain. Locating the moving target by the angle-only measurements is difficult because of nonlinearity and variable observability. This paper studies the angle-only tracking (AOT) in three-dimensional (3D) state space. We discuss the effective AOT approaches using the Gaussian mixture probability hypothesis density (GM-PHD) filter and the Gaussian mixture cardinalized probability hypothesis density (GM-CPHD) filter. Moreover, by constructing different multi-target simulation scenario, the tracking performances of PHD and CPHD are compared. And CPHD has better estimation evaluated in terms of the optimal sub-pattern assignment OSPA metric, but with low computing efficiency and slow response to the target number change.
Chengyi ZhouMeiqin LiuSenlin ZhangRonghao ZhengShanling Dong
Xuezhi WangMark R. MorelandeBill Moran
Laleh BadriaslKutluyıl Doğançay