针对雷达组网对隐身目标协同检测与跟踪时的动态分配问题,将条件后验克拉美罗下界(CPCRLB)用作系统跟踪性能的度量,结合改进二值粒子群优化(NBPS0 ) 和粒子滤波,提出了一种基于CPCRLB的隐身目标协同检测与跟踪算法.该算法将雷达的动态分配问题转化成组合优化问题,根据新生目标的隐身特性对雷达分配方案的约束,借助分布在边界的检测粒子计算不同的雷达分配方案对新生目标的检测概率,并以已跟踪目标的CPCRLB衡量跟踪精度,采用NBPS0 全局搜索最优分配方案,最后进行粒子滤波与协方差交集融合.
To solve the problem of radar allocation for stealth targets detection and tracking in radar network, a collaborative detectionand tracking algorithm for stealth targets based on conditional posterior Cramer-rao lower bound ( CPCRLB) is proposed in thispaper. In the proposed algorithm, radar allocation schemes are constrained by the stealthy characters of newborn targets, and theparticles distributed at the boundary region are applied to obtain the detection probability of newborn targets. The tracking accuracyis measured by the CPCRLB of the tracked targets. The novel binary particle swarm optimization ( NBPSO) is selected to searchthe global optimal radar allocation scheme. Then the results of particle filtering of the selected tracking radars are fused by covarianceintersection algorithm.