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Particle_filter
- 基于粒子滤波器的机动目标跟踪技术 首先 , 概 要介绍传统的Kalman滤波器,以及有所改进的扩展Kalman滤波器。 其次,为了能更好地解决在动态模型为非线性且噪声为非高斯的条件下对机动目标的 跟踪问题,通过概率统计理论详细阐述粒子滤波器基本原理。然后,针对不同的使用 条件,根据粒子滤波器的基本理论做出适当的修改和整理,就得到了四个相关的粒子 滤波器的变型,使用州以JLAB把它们对机动目标的跟踪性能作了详细地计算机模拟 仿真且用均方根误差更加精确地进行了比较。最后,把粒
GPS数据的卡尔曼滤波处理及其在飞行试验中的应用
- GPS数据的卡尔曼滤波处理及其在飞行试验中的应用。-GPS data, Kalman filtering and its application in flight test.
kalman
- 本文介绍kalman滤波的基本原理及发展现状,主要从模型的建立和非线性模型的线性化两方面进行介绍-In this paper, the basic principle of kalman filter and the development present situation, mainly from the establishment of model and the linearization of the nonlinear model is presented in two aspect
An-Integrated-DGPS_IMUh
- 研究GPS与INS数据融合编程卡尔曼滤波算法-Study of GPS and INS data fusion programming Kalman filter algorithm
MEKF
- 该论文提出了一种改进的扩展卡尔曼滤波方法,实现对红外,雷达传感器的信息融合跟踪算法。性能优于传统EKF-This paper presents an improved extended Kalman filter method, to achieve the infrared, radar sensor information fusion tracking algorithm. Better performance than traditional EKF
battery-SOC-estimation-based-on-EKF
- 基于扩张卡尔曼滤波的磷酸铁锂蓄电池SOC检测,给出了电池模型和算法实现过程。-The extended Kalman filter (EKF) method for SOC estimation has some problems such as the lack of an accurate model, and model errors due to the variation in the parameters of the model due to the nonlinear behav