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1.
敬忠良  周宏仁  王培德 《航空学报》1989,10(11):580-587
 本文研究密集多回波环境下的机动多目标跟踪起始问题。文中首先提出主跟踪子空间和边缘跟踪子空间的定义与性质,接着修正Bayes轨迹确定方法BTC,并将其与具有残差滤波的修正概率数据关联滤波算法MPDAF-RF有机地结合起来,提出一种适合高密集多回波环境的机动多目环跟踪起始方法——“全邻”Bayes跟踪起始算法ABTI。Monte Carlo仿真表明,本文所给出的算法不仅克服了一类概率数据关联滤波方法没有跟踪起始机理的缺陷,而且辨别目标与虚警的能力很强,不失为解决高密集多回波环境下机动多目标跟踪起始的有效方法。  相似文献   

2.
 修正概率数据关联滤波(MPDAF)是目前解决密集多回波环境下机动多目标跟踪较为有效的方法,但当回波密度增高时,该方法容易失跟。本文针对此特点,在MPDAF基础上,提出了残差滤波(RF)方法,分别从理论和Monte carlo仿真两方面揭示了RF与数据关联的内在机理,结果表明该方法能大幅度提高跟踪滤波器捕捉目标和剔除关联域内多余回波的能力以及跟踪的性能,是一种解决高密集多回波环境下机动多目标跟踪的有效方法。  相似文献   

3.
随机神经网络在机动多目标跟踪中的应用   总被引:5,自引:0,他引:5  
研究密集多回波环境下的机动多目标跟踪问题。通过对多目标联合概率数据关联方法性能特征的分析,将其归结为一类约束组合优化问题。在此基础上,利用随机神经网络求解组合优化问题的策略,采用改进的增益退火算法,提出了一种新颖的机动多目标快速自适应神经网络跟踪方法。仿真结果表明,该方法不仅具有很高的收敛速度和跟踪精度,而且计算量小,关联效果好。  相似文献   

4.
在单脉冲测角体制下,由于多径回波信号的干扰,极大地降低了雷达低空目标仰俯角跟踪精度,甚至丢失目标。通过对多路径反射环境模型分析,得出了岸、海基单脉冲雷达低空目标跟踪时仰俯角测量误差的产生原因,提出将传统的多目标分辨算法(C2算法)应用于低角多径环境下目标俯仰角的跟踪测量,并在不同多径反射环境下对不同高度、不同飞行速度和飞行方向的目标进行了仿真,得到良好的仿真结果,表明该算法可较大地提高俯仰角跟踪测量精度。通过对仿真结果的分析,验证了该算法在低空目标跟踪中的有效性和可行性。  相似文献   

5.
机载火控雷达距离拖引目标的交互式多模型跟踪方法   总被引:2,自引:1,他引:1  
针对机载火控雷达中可能出现的距离门拖引欺骗,给出了一种基于交互式多模型的目标跟踪方法。把该方法和常规的单目标跟踪方法进行了仿真比较。结果表明,该方法能充分利用欺骗回波测量,对释放距离拖引欺骗干扰的目标维持较稳定地跟踪,并能获得较高的目标跟踪精度。  相似文献   

6.
针对某型相控阵雷达目标模拟器采用单目标技术,无法真实模拟跟踪多目标回波信号的问题,设计了一种新型多目标模拟器。该模拟器采用DDS(Direct Digital Synthesis,直接数字频综)信号产生、数字信号存储及控制等技术,结合航迹数据产生与控制软件,实现多目标回波信号模拟的同时,实现并完善了模拟器的多目标引导数据注入、理论弹道演练和实测数据回放等模拟和训练功能。软件部分,在考虑目标回波特性的基础上,利用施威林Ⅰ型模型产生目标回波,实现目标回波的模拟仿真工作。在硬件上设计了以FPGA(Field Programmable Gate Array,现场可编程门阵列)为核心的功能模块,将模拟仿真信号实时生成目标回波。实际应用表明,该模拟器控制简单,运行稳定,精度高,完全满足跟踪测量和模拟训练需求。  相似文献   

7.
虞翔  张建秋 《航空学报》2015,36(10):3430-3438
在实际的跟踪情况中,由于环境条件、目标反射截面等因素的变化,回波信号的功率会随时间变化,即不满足通常阵列信号处理中对高斯信号作平稳性的假设。针对复杂运动条件下高斯非平稳目标的跟踪问题,提出了一种新的机动目标波达角(DOA)模型。该模型全面地刻画了高斯非平稳机动目标的动态,并将目标的DOA和信号功率作为状态变量进行了联合考虑,同时运用虚拟阵列的表示方法构建了相应的观测方程。对于建立的新模型,最后采用无迹卡尔曼滤波(UKF)的框架完成了整个跟踪算法。分析和仿真结果表明,当高斯非平稳机动目标之间存在长时间相互接近的情况时,新方法仍然可以获得较好的跟踪性能。  相似文献   

8.
多目标跟踪问题中,当目标数已知时,可以用概率数据互联(PDA)或联合概率数据互联(JPDA)算法。而当目标数未知或随时间变化时,需要对不同目标数的跟踪进行比较。可以把目标集看作随机集进行讨论,目标数N是随机变量。随机集的跟踪通过有限集统计(FISST)理论来完成。文中讨论了用粒子滤波实现跟踪随机集的方法。实验表明,在杂波环境下,粒子滤波可以稳健跟踪目标状态和目标数。  相似文献   

9.
周宏仁 《航空学报》1984,5(3):296-304
 本文研究了跟踪多个机动目标时,由滤波算法所获得的新息向量范数的统计性质,关联区域的大小以及接收正确回波的概率。借助拉蒙特卡洛方法,考察了不同的目标状态模型、目标机动加速度及状态噪声方差等因素对所研究的问题的影响。研究表明,文献[1]所提出的机动目标状态模型及相应的自适应算法具有较好的适应目标机动的能力,关联区域的大小及接收正确回波的概率均较为稳定。  相似文献   

10.
 雷达高度计回波模型是设计、检验高度计跟踪算法的基础, 是高度计设计的关键性环节。为改进原BROWN 模型局限性, 从一般情况出发, 建立了一面向脉宽限制式雷达高度计的通用型回波模型并介绍了其相关的应用。该模型无论是准确度还是应用范围都比BROWN 模型优越得多, 可以满足不同环境条件、工作方式的要求, 对于高度计跟踪算法的设计、分析与检验具有重要意义。  相似文献   

11.
Track monitoring when tracking with multiple 2D passive sensors   总被引:4,自引:0,他引:4  
A fast method of track monitoring is presented which determines what tracks are good and what tracks have had data association problems and should be eliminated. The philosophy of tracking in a dense target environment with limited central processing unit (CPU) time is to acquire the targets, track them with as simple a filter as will meet requirements, and monitor the tracks to determine if they are still tracking a target or are tracking incorrect returns and should be terminated. After termination the true targets are reacquired. However, it is difficult to determine from simple track monitoring the correct interpretation of a poor track. Poor tracks can be a result of a sensor failure, target maneuver, or incorrect data association. The author describes track monitoring and provides a solution to this dilemma when tracking with multiple two-dimensional passive sensors. The method is much faster than other monitoring methods.<>  相似文献   

12.
A fully automatic tracking algorithm must be able to deal with an unknown number of targets, unknown target initiation and termination times, false measurements and possibly time-varying target trajectory behaviour. An efficient algorithm for tracking in this environment is presented here. This approach makes use of estimates of the probability of target existence, which is an integral part of the algorithm. This allows for the efficient generation and management of possible target hypotheses, yielding an algorithm with performance that matches what can be obtained by multiple hypothesis tracking-based approaches, but at a significantly lower computational cost. This paper considers only the single target case for clarity. The extension to multiple targets is easily incorporated into this framework. Simulation studies are given that show the effectiveness of this approach in the presence of heavy and nonuniform clutter when tracking a target in an environment of low probability of detection and in an environment where the target performs violent manoeuvres.  相似文献   

13.
The middle pulse repetition frequency(MPRF)and high pulse repetition frequency(HPRF)modes are widely adopted in airborne pulse Doppler(PD)radar systems,which results in the problem that the range measurement of targets is ambiguous.The existing data processing based range ambiguity resolving methods work well on the condition that the signal-to-noise ratio(SNR)is high enough.In this paper,a multiple model particle flter(MMPF)based track-beforedetect(TBD)method is proposed to address the problem of target detection and tracking with range ambiguous radar in low-SNR environment.By introducing a discrete variable that denotes whether a target is present or not and the discrete pulse interval number(PIN)as components of the target state vector,and modeling the incremental variable of the PIN as a three-state Markov chain,the proposed algorithm converts the problem of range ambiguity resolving into a hybrid state fltering problem.At last,the hybrid fltering problem is implemented by a MMPF-based TBD method in the Bayesian framework.Simulation results demonstrate that the proposed Bayesian approach can estimate target state as well as the PIN simultaneously,and succeeds in detecting and tracking weak targets with the range ambiguous radar.Simulation results also show that the performance of the proposed method is superior to that of the multiple hypothesis(MH)method in low-SNR environment.  相似文献   

14.
This work deals with the problem of multiple target tracking, from the measurements made on a field of passive sonars activated by an active sonar (multistatic network). The difficulties encountered then are of two kinds: each sensor alone does not provide full observability of a target, and multiple, possibly maneuvering targets moving in a cluttered environment must be dealt with. The algorithm presented here is based on a discrete Markovian modelization of the targets evolution in time. It starts with a fusion of the detections obtained at each measurement time. Tracking and target motion analysis (TMA) are next achieved thanks to dynamic programming (DP). This approach leads to multiple and maneuvering target tracking, with few assumptions; for instance, the use of deterministic target state models are avoided. Simulation results are presented and discussed.  相似文献   

15.
罗少华  徐晖  徐洋  安玮 《航空学报》2012,33(7):1296-1304
基于序列蒙特卡罗方法的经典多模概率假设密度滤波方法及其各种衍生方法,在预测过程中依据多个并行的状态转移模型,通过将大量粒子散布到下一时刻目标所有可能出现的状态空间实现目标状态的捕获,造成计算量大、目标跟踪精度差。为此,提出一种改进的多模粒子概率假设密度机动目标跟踪方法。该方法利用最新量测信息估计目标运动模型概率及模型参数,并将估计得到的目标模型应用到粒子概率假设密度滤波方法的预测过程中生成预测粒子,从而将大部分粒子聚合在目标最可能出现的状态空间邻域中,实现粒子的有效利用。数值仿真表明,所提方法不仅显著地减少了目标丢失个数,而且提高了目标跟踪精度。  相似文献   

16.
Tracking multiple targets with uncertain target dynamics is a difficult problem, especially with nonlinear state and/or measurement equations. With multiple targets, representing the full posterior distribution over target states is not practical. The problem becomes even more complicated when the number of targets varies, in which case the dimensionality of the state space itself becomes a discrete random variable. The probability hypothesis density (PHD) filter, which propagates only the first-order statistical moment (the PHD) of the full target posterior, has been shown to be a computationally efficient solution to multitarget tracking problems with a varying number of targets. The integral of PHD in any region of the state space gives the expected number of targets in that region. With maneuvering targets, detecting and tracking the changes in the target motion model also become important. The target dynamic model uncertainty can be resolved by assuming multiple models for possible motion modes and then combining the mode-dependent estimates in a manner similar to the one used in the interacting multiple model (IMM) estimator. This paper propose a multiple-model implementation of the PHD filter, which approximates the PHD by a set of weighted random samples propagated over time using sequential Monte Carlo (SMC) methods. The resulting filter can handle nonlinear, non-Gaussian dynamics with uncertain model parameters in multisensor-multitarget tracking scenarios. Simulation results are presented to show the effectiveness of the proposed filter over single-model PHD filters.  相似文献   

17.
An algorithm is presented for the recursive tracking of multiple targets in cluttered environment by making use of the joint probabilistic data association fixed-lag smoothing (JPDAS) techniques. It is shown that a significant improvement in the accuracy of track estimation of both nonmaneuvering and maneuvering targets may be achieved by introducing a time lag of one or two sampling periods between the instants of estimation and latest measurement. Results of simulation experiments for a radar tracking problem that demonstrate the effects of fixed-lag smoothing are also presented  相似文献   

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