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1.
常规基于势概率假设密度滤波(Cardinalized Probability Hypothesis Density,CPHD)的粒子滤波(Particle Fil? ter,PF)跟踪算法应用于多目标跟踪时,容易遇到因粒子数量增加而带来的运算效率下降、目标数目估计不准的问题。文章基于常规粒子滤波 CPHD跟踪算法,通过部署双层粒子,提出基于势概率假设密度滤波的双层粒子滤波 (Two-Layer Particle Filter-CPHD,TLPF-CPHD)算法,以便提高目标数目及状态估计精度。仿真实验结果证明,相比于常规 PF-CPHD算法,新算法具有更好的目标数目和状态估计准确性。  相似文献   

2.
通信和测量受限条件下异构多UAV分布式协同目标跟踪方法   总被引:1,自引:0,他引:1  
孙海波  周锐  邹丽  丁全心 《航空学报》2011,32(2):299-310
研究了通信和测量受限的异构多无人机(UAV)网络化分布式协同目标观测与跟踪问题.该分布式UAV系统采用长机一僚机异构型网络结构,以实现在电子静默和战术隐身条件下扩大探测和打击纵深.提出改进的一致性信息滤波(ICF)算法,实现通信和测量范围内各UAV节点的分布式信息融合.由于一致性算法的收敛性与网络拓扑结构的连通性密切相...  相似文献   

3.
传统的空间目标监测是建立在单目标状态估计基础之上,在面对突发产生的大量空间碎片时,由于碎片尺寸小,且密集分布以"群"的方式出现,传统单目标处理方法很难奏效。以"群"整体作为处理对象,基于随机有限集(RFS)技术,对"群"的状态特征进行估计。为了解决漏检目标密度分配问题和轨迹关联问题,提出一种面向量测的改进集势概率假设密度(CPHD)滤波器,并结合滤波后的信息处理过程,完成了对低轨空间碎片群的目标密度分布、群内目标数以及群内显著目标的状态估计。在仿真实验中,提出的滤波器表现明显优于传统滤波器和标准CPHD滤波器,且在某些传统滤波器和标准CPHD滤波器已失效的情况下,所提技术仍能有效工作。  相似文献   

4.
《中国航空学报》2016,(5):1378-1384
It is difficult to build accurate model for measurement noise covariance in complex back-grounds. For the scenarios of unknown sensor noise variances, an adaptive multi-target tracking algorithm based on labeled random finite set and variational Bayesian (VB) approximation is pro-posed. The variational approximation technique is introduced to the labeled multi-Bernoulli (LMB) filter to jointly estimate the states of targets and sensor noise variances. Simulation results show that the proposed method can give unbiased estimation of cardinality and has better performance than the VB probability hypothesis density (VB-PHD) filter and the VB cardinality balanced multi-target multi-Bernoulli (VB-CBMeMBer) filter in harsh situations. The simulations also confirm the robustness of the proposed method against the time-varying noise variances. The computational complexity of proposed method is higher than the VB-PHD and VB-CBMeMBer in extreme cases, while the mean execution times of the three methods are close when targets are well separated.  相似文献   

5.
基于Kalman滤波的变体飞行器T-S模糊控制   总被引:1,自引:0,他引:1  
梁帅  杨林  杨朝旭  许斌 《航空学报》2020,41(z2):724274-724274
针对变体飞行器的跟踪控制问题,提出了一种基于Kalman滤波的T-S模糊控制方法。考虑飞行器系统状态不可测,引入惯导数据作为辅助信息,利用Kalman滤波算法融合飞控信息与惯导信息实现状态估计。由于变体飞行器在不同变形结构下气动特性变化较大,为便于控制器设计,采用小扰动线性化方法得到飞行器在不同平衡点处的局部线性模型,并通过状态反馈方法设计局部控制器,局部线性模型和局部控制器通过模糊集和模糊规则聚合成一个连续光滑的全局T-S模糊模型和T-S模糊控制器。通过综合Kalman滤波器与T-S模糊控制器得到一个基于Kalman滤波的T-S模糊控制器。仿真结果表明,该控制器在变形过程中能够实现状态估计,保证飞机的跟踪性能。  相似文献   

6.
针对相关滤波类跟踪算法目标背景图像信息利用率较低、目标特征表达能力较弱的问题,提出了一种融合背景图像信息的多特征压缩跟踪算法。首先,在上下文感知滤波器的基础上,将背景图像信息加入位置滤波器。其次,提取颜色名(Color Name, CN)特征与梯度直方图(Histogram of Oriented Gradient, HOG)特征,使用最大响应因子及平均峰相关能量(Average Peak-to-Correlation Energy, APCE)评估跟踪结果的可信度,实现两种特征的自适应融合。最后,利用特征降维简化模型的复杂度,实现算法运行速度的提升。实验结果表明,改进后的算法在遮挡、形变、尺度变化等复杂环境下均具有较高的鲁棒性,其跟踪精度和成功率指标均优于DSST及其他主流的跟踪算法,并且仍保持了实时性。  相似文献   

7.
基于混合滤波的无线传感器网络融合跟踪方法   总被引:1,自引:0,他引:1  
李峰荣  刘贵喜  孙庆方 《航空学报》2010,31(9):1849-1857
 针对无线传感器网络(WSN)中的多传感器融合目标跟踪,提出一种混合滤波算法,称为无迹混合集中式粒子滤波(UM CPF)。该算法使用了一个混合的粒子传播方案。在使用集中式粒子滤波(CPF)对WSN中的节点测量信息进行融合时,粒子滤波器中的一部分粒子使用从无迹变换(UT)获得的高斯分布作为建议分布进行粒子传播,而剩余的另一部分粒子则简单地使用状态转移先验分布进行粒子传播。WSN中的融合跟踪仿真结果表明,和纯粒子滤波算法CPF相比,在仿真速率相当的情况下,混合滤波算法明显提高了跟踪精度和稳定性。  相似文献   

8.
为了跟踪空间目标,构建了基于局部粒子滤波器的多传感器融合方法估计空间目标状态。粒子滤波重要采样过程中,设计了基于融合估计的重要密度函数减少粒子贫化问题,并设计基于 McDE(Memetic compact Differ. ential Evolution)重采样策略,通过对粒子的变异与选择等进化操作来解决粒子退化问题。理论推导与仿真结果皆证明方法的有效性。  相似文献   

9.
邱昊  黄高明  左炜  高俊 《航空学报》2015,36(9):3012-3019
针对现有随机有限集(RFS)滤波器在低信噪比环境下对衍生目标跟踪性能严重下降的问题,提出了一种基于Delta扩展标签多伯努利(δ-GLMB)滤波器的改进算法。基于随机集理论和伯努利衍生模型,推导了新的预测方程,并采用了假设裁剪及分组手段和多伯努利近似技术以降低算法的计算量。针对假设增多引起的虚警问题,将多帧平滑思想和算法相结合,利用标签信息对新目标进行回溯处理。仿真结果表明,所提算法能对目标数目进行无偏估计,在低探测概率和强杂波环境下性能明显优于概率假设密度(PHD)算法,计算开销在衍生初始阶段增长快于PHD,目标较分散时低于PHD。  相似文献   

10.
基于UKF准开环结构的高动态载波跟踪环路   总被引:2,自引:1,他引:1  
韩帅  王文静  陈曦  孟维晓 《航空学报》2010,31(12):2393-2399
 对高动态环境下的全球卫星导航系统(GNSS)载波信号跟踪方法进行了研究。在分析高动态载波信号模型的基础上,提出了一种基于无迹卡尔曼滤波(UKF)的准开环载波跟踪方法。此方法能够消除导航数据二进制相移键控(BPSK)调制的影响,并采用四维UKF相位估计模型提高跟踪精度,同时对估计值进行补偿以减少滤波器的滞后性。通过模拟接收机的高动态运动轨迹,从跟踪误差、跟踪结果和补偿效果3个方面,与基于卡尔曼滤波(KF)的锁频环(FLL)辅助锁相环(PLL)结构的传统跟踪方法进行比较,结果表明基于UKF的准开环跟踪方法能够有效地完成高动态环境下的载波跟踪。  相似文献   

11.
在粒子滤波目标跟踪框架下,给出一种基于颜色直方图和边缘直方图的新特征融合算法.该算法是一种通过颜色和边缘直方图的特征波和熵实现特征之间粒子数重分配的方法。通过实验比较本文算法与单特征跟踪算法的跟踪误差,结果表明本文方法较传统依靠单一特征进行目标跟踪的粒子滤波方法,在运算时间增幅不明显的情况下,实现了更为准确的目标跟踪,并可稳定的应用于运动背景下的动目标跟踪、背景光照变化下的多目标跟踪以及多目标发生相互遮挡等情况。  相似文献   

12.
《中国航空学报》2016,(5):1326-1334
Since the issues of low communication bandwidth supply and limited battery capacity are very crucial for wireless sensor networks, this paper focuses on the problem of event-triggered cooperative target tracking based on set-membership information filtering. We study some fundamental properties of the set-membership information filter with multiple sensor measure-ments. First, a sufficient condition is derived for the set-membership information filter, under which the boundedness of the outer ellipsoidal approximation set of the estimation means is guaranteed. Second, the equivalence property between the parallel and sequential versions of the set-membership information filter is presented. Finally, the results are applied to a 1D event-triggered target tracking scenario in which the negative information is exploited in the sense that the measurements that do not satisfy the triggering conditions are modelled as set-membership mea-surements. The tracking performance of the proposed method is validated with extensive Monte Carlo simulations.  相似文献   

13.
图象序列中机动目标的形心跟踪   总被引:4,自引:1,他引:3  
张岩  崔智社  龙腾 《航空学报》2001,22(4):312-316
从边检测边跟踪的角度探讨了图象序列中机动目标的形心跟踪问题,深入分析了强高斯噪声背景下目标形心估计的统计性质及用于形心估计的图象预处理方法。指出经典的图象二值化变换分割后作形心估计的方法面临着估计偏差和方差的矛盾,提出了用自适应交互三模型(ATIMM)跟踪图象序列中机动目标的方法,同时发现在了解目标形状的条件下,空间匹配滤波,二值变换点集聚类和 ATIMM三者的结合对图象序列中的机动目标具有最好的跟踪性能。  相似文献   

14.
《中国航空学报》2023,36(2):179-190
The coalescence and missed detection are two key challenges in Multi-Target Tracking (MTT). To balance the tracking accuracy and real-time performance, the existing Random Finite Set (RFS) based filters are generally difficult to handle the above problems simultaneously, such as the Track-Oriented marginal Multi-Bernoulli/Poisson (TOMB/P) and Measurement-Oriented marginal Multi-Bernoulli/Poisson (MOMB/P) filters. Based on the Arithmetic Average (AA) fusion rule, this paper proposes a novel fusion framework for the Poisson Multi-Bernoulli (PMB) filter, which integrates both the advantages of the TOMB/P filter in dealing with missed detection and the advantages of the MOMB/P filter in dealing with coalescence. In order to fuse the different PMB distributions, the Bernoulli components in different Multi-Bernoulli (MB) distributions are associated with each other by Kullback-Leibler Divergence (KLD) minimization. Moreover, an adaptive AA fusion rule is designed on the basis of the exponential fusion weights, which utilizes the TOMB/P and MOMB/P updates to solve these difficulties in MTT. Finally, by comparing with the TOMB/P and MOMB/P filters, the performance of the proposed filter in terms of accuracy and efficiency is demonstrated in three challenging scenarios.  相似文献   

15.
基于自适应扩展卡尔曼滤波的载波跟踪算法   总被引:2,自引:1,他引:1  
精确的载波相位测量是精密测距中一个很重要的研究点。针对传统扩展卡尔曼滤波(EKF)的固定设计在先验信息不充分和动态变化环境中存在的不足,提出了一种基于自适应扩展卡尔曼滤波(AEKF)的载波跟踪算法。该算法通过实时监测滤波器新息或残差的动态变化,以修正状态噪声方差和观测噪声方差,进而调整滤波器增益,控制状态预测值和观测值在滤波结果中的权重。理论分析和仿真结果表明,本算法充分利用了观测信号的统计特性,克服了传统扩展卡尔曼滤波算法的不足,能够获得更好的载波跟踪性能。  相似文献   

16.
This note deals with the effect of the common process noise on the fusion (combination) of the state estimates of a target based on measurements obtained by two different sensors. This problem arises in a multisensor environment where each sensor has its information processing (tracking) subsystem. In the case of an ?-? tracking filter the effect of the process noise is that, over a wide range of its variance, the uncertainty area corresponding to the fused estimates is about 70 percent of the single-sensor uncertainty area as opposed to 50 percent obtained if the dependence is ignored.  相似文献   

17.
The paper deals with state estimation problem of nonlinear non-Gaussian discrete dynamic systems for improvement of accuracy and consistency. An efficient new algorithm called the adaptive Gaussian-sum square-root cubature Kalman filter(AGSSCKF) with a split-merge scheme is proposed. It is developed based on the squared-root extension of newly introduced cubature Kalman filter(SCKF) and is built within a Gaussian-sum framework. Based on the condition that the probability density functions of process noises and initial state are denoted by a Gaussian sum using optimization method, a bank of SCKF are used as the sub-filters to estimate state of system with the corresponding weights respectively, which is adaptively updated. The new algorithm consists of an adaptive splitting and merging procedure according to a proposed split-decision model based on the nonlinearity degree of measurement. The results of two simulation scenarios(one-dimensional state estimation and bearings-only tracking) show that the proposed filter demonstrates comparable performance to the particle filter with significantly reduced computational cost.  相似文献   

18.
《中国航空学报》2016,(6):1740-1748
The probability hypothesis density (PHD) filter has been recognized as a promising tech-nique for tracking an unknown number of targets. The performance of the PHD filter, however, is sensitive to the available knowledge on model parameters such as the measurement noise variance and those associated with the changes in the maneuvering target trajectories. If these parameters are unknown in advance, the tracking performance may degrade greatly. To address this aspect, this paper proposes to incorporate the adaptive parameter estimation (APE) method in the PHD filter so that the model parameters, which may be static and/or time-varying, can be estimated jointly with target states. The resulting APE-PHD algorithm is implemented using the particle filter (PF), which leads to the PF-APE-PHD filter. Simulations show that the newly proposed algorithm can correctly identify the unknown measurement noise variances, and it is capable of tracking mul-tiple maneuvering targets with abrupt changing parameters in a more robust manner, compared to the multi-model approaches.  相似文献   

19.
针对激光陀螺捷联惯导系统在动态尤其是高动态环境下的姿态误差显著增大的问题,提出了一种基于改进高斯混合粒子滤波的纯方位跟踪算法。算法基于混合粒子的卡尔曼滤波和粒子滤波的特点,用有限的高斯模型来近似后验状态密度、系统噪声和观测噪声的分布通过EM的算法设计实现模型的降阶,一定程度上克服了EM算法迭代的结果需要依赖初始值、可能收敛到局部最大点或可能收敛到参数空间边界的缺点,从而改善了粒子携带信息的衰减问题。通过仿真与试验结合,在纯动态应用环境下的姿态与定位精度补偿效果,与传统Kalman滤波相比,算法在保持高精度估计能力的同时,具有较强的鲁棒性,是解决非线性系统状态估计问题的一种有效方法。  相似文献   

20.
尤志鹏  杨勇  刘刚  曹晓瑞  郑宏涛 《航空学报》2021,42(11):524608-524608
针对空天飞行器应用传统数值预测校正再入制导算法实时性不佳的问题,提出一种基于Kalman滤波的预测校正制导算法。该算法采取四阶多项式拟合速度-高度飞行剖面,利用Kalman滤波估计选定的速度点对应的高度,得到满足再入走廊及航程要求的拟合系数。在此基础上,减少一个终端约束,增加一个待估计剖面参数,可实现对再入过程飞行时间的调节。研究发现,再入过程中通过在线辨识修正不确定性参数能够提高制导指令的适应性;飞行末段利用跟踪参考剖面制导可有效避免飞行速度与终端速度接近时发生拟合系数求解发散的问题。多组不同再入条件下的算例仿真结果表明,基于Kalman滤波的空天飞行器再入制导算法实时性好,制导精度高,能够实现飞行时间可控,具有较强的鲁棒性和工程应用潜力。  相似文献   

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