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[Network DevelopRECURSIVE BAYESIAN INFERENCE ON

Description:

This thesis is concerned with recursive Bayesian estimation of non-linear dynamical
systems, which can be modeled as discretely observed stochastic differential
equations. The recursive real-time estimation algorithms for these continuous-
discrete filtering problems are traditionally called optimal filters and the algorithms
for recursively computing the estimates based on batches of observations
are called optimal smoothers. In this thesis, new practical algorithms for approximate
and asymptotically optimal continuous-discrete filtering and smoothing are
presented.
The mathematical approach of this thesis is probabilistic and the estimation
algorithms are formulated in terms of Bayesian inference. This means that the
unknown parameters, the unknown functions and the physical noise processes are
treated as random processes in the same joint probability space. The Bayesian approach
provides a consistent way of computing the optimal filtering and smoothing
estimates, which are optimal given the model assumptions and a consistent
way of analyzing their uncertainties.
The formal equations of the optimal Bayesian continuous-discrete filtering
and smoothing solutions are well known, but the exact analytical solutions are
available only for linear Gaussian models and for a few other restricted special
cases. The main contributions of this thesis are to show how the recently developed
discrete-time unscented Kalman filter, particle filter, and the corresponding
smoothers can be applied in the continuous-discrete setting. The equations for the
continuous-time unscented Kalman-Bucy filter are also derived.
The estimation performance of the new filters and smoothers is tested using
simulated data. Continuous-discrete filtering based solutions are also presented to
the problems of tracking an unknown number of targets, estimating the spread of
an infectious disease and to prediction of an unknown time series.


Platform: | Size: 1457664 | Author: eestarliu | Hits:

[Algorithmshuxuebianhuanlvbo

Description: 数学变换和滤波fft程序 kfour 傅里叶级数逼近 kkfft 快速傅里叶变换 kkfwt 快速沃什变换 kkspt 快速三次平滑 klman 离散随机系统的卡尔曼滤波 kkabg α-β-γ滤波-Fft math transformation and filtering procedures kfour Fourier series approximation kkfft Fast Fourier Transform Fast Walsh Transform kkfwt rapid kkspt three smoothing klman discrete stochastic system Kalman filter kkabg α-β-γ filter
Platform: | Size: 10240 | Author: xuhan | Hits:

[source in ebookKalman_fiter

Description: 包括,kalman一步预测代码,kalman滤波器,以及kalman平滑等几个源代码。希望大家有用。-Including, kalman step prediction code, kalman filter, kalman smoothing, as well as several source code. I hope everyone useful.
Platform: | Size: 5120 | Author: zzw19831114 | Hits:

[Mathimatics-Numerical algorithmszuiyou

Description: 用一观测器从t=1秒开始对一个运动目标的距离进行连续地跟踪测量,假设观测的间隔为一秒钟,雷达到运动目标之间的距离为S(t)(1) 统计特性的初值为 (2)观测误差是与和均不相关的白噪声序列,并且有 (3)观测数据存放在附加的文件中(单位:m)。 要求:分析上述对象,建立系统模型,构造卡尔曼滤波器,编程计算,求: (1) 距离S(t)的最佳估计及估计误差, (2) 距离S(t-5)的最佳平滑及估计误差, (3) 距离S(t+5)的最佳预测及估计误差, (4) 对结果进行分析讨论。 -By one observer from the t = 1 PST on a moving target tracking for distance measurement, assuming that the observation interval is one second, the radar that the distance between the moving target for the S (t) (1) the statistical characteristics of the initial condition (2) observational error is not associated with white noise sequence, and (3) observational data stored in the attached document (unit: m). Requirements: Analysis of the above-mentioned object, the establishment of the system model, constructed Kalman filter, programming terms, seeking: (1) distance from S (t) the best estimate and the estimation error, (2) distance from S (t-5) the most good smoothing and estimation error, (3) distance from S (t+ 5) the best prediction and estimation error, (4) the results analyzed and discussed.
Platform: | Size: 2048 | Author: 裴海波 | Hits:

[matlabekfukf_1_2

Description: kalman滤波,扩展的kalman滤波(EKF),unscented Kalman filter(UKF),基于EKF和UKF混合模型的IMM实现,以及配套的Rauch-Tung-Striebel和two-filter平滑工具,一个很好用的框架-kalman filtering, extended kalman filter (EKF), unscented Kalman filter (UKF), based on the EKF and UKF realize mixed-model IMM as well as ancillary Rauch-Tung-Striebel and two-filter smoothing tool, a very good framework to use
Platform: | Size: 125952 | Author: 丰子扬 | Hits:

[matlabkalman

Description:
Platform: | Size: 159744 | Author: 贾广沂 | Hits:

[Mathimatics-Numerical algorithmspinghua-lvbo

Description: 对比了固定点平滑 固定区间平滑 和卡尔曼滤波三种方法的区别以及优劣 是随机系统滤波的作业题-Comparison of fixed-point smoothing and fixed-interval Kalman smoothing filter difference between the three methods as well as the advantages and disadvantages of a random system, the operation of filtering problem
Platform: | Size: 67584 | Author: yunguangmei | Hits:

[matlabkalman-pinghua

Description: 编写的一个随动系统的kalman的平滑算法;-Prepared by a smoothing algorithm based on kalman
Platform: | Size: 11264 | Author: 黄金峰 | Hits:

[Special EffectsKalmansmoothing

Description: 可快速实现卡尔曼平滑功能,并可以短时间内得到结果-Kalman smoothing function can be realized quickly and can get results within a short time
Platform: | Size: 1024 | Author: 孟涛 | Hits:

[matlabKalman-Filtering-Theory-and-Practice

Description: 这本书提供了坚实的介绍卡尔曼滤波的理论和实践方面的读者。它已经更新了卡尔曼滤波,包括适应非线性滤波,更可靠的平滑方法,并在导航应用程序开发的实施和应用的最新发展。所有的软件是在MATLAB中,提供给读者的机会,发现如何卡尔曼滤波行动,并考虑实际运算需要保持结果的准确性。-This book provides readers with a solid introduction to the theoretical and practical aspects of Kalman filtering. It has been updated with the latest developments in the implementation and application of Kalman filtering, including adaptations for nonlinear filtering, more robust smoothing methods, and developing applications in navigation. All software is provided in MATLAB, giving readers the opportunity to discover how the Kalman filter works in action and to consider the practical arithmetic needed to preserve the accuracy of results.
Platform: | Size: 3176448 | Author: luaw2006 | Hits:

[Communication-Mobilesmoothing-Kalman-filter-

Description: 在经典卡尔曼滤波器后端联接了平滑滤波器,对性能改进的仿真-In the classical Kalman filter connection to the backend of the smoothing filter, the simulation of the performance improvements
Platform: | Size: 37888 | Author: legend | Hits:

[matlabJohn-Wiley-a-Sons---Kalman-Filtering-Theory-And-P

Description: This book provides readers with a solid introduction to the theoretical and practical aspects of Kalman filtering. It has been updated with the latest developments in the implementation and application of Kalman filtering, including adaptations for nonlinear filtering, more robust smoothing methods, and developing applications in navigation. All software is provided in MATLAB, giving readers the opportunity to discover how the Kalman filter works in action and to consider the practical arithmetic needed to preserve the accuracy of results.
Platform: | Size: 3177472 | Author: anna | Hits:

[matlabkalman-algorithms

Description: This the code for kalman fiter, smoothing used in state space model-This is the code for kalman fiter, smoothing used in state space model
Platform: | Size: 1024 | Author: kelly | Hits:

[OtherSmoothing-Algorithm

Description: 提出了具有一般相关量测噪声的线性系统的平滑估计算法, 该算法是在系统正向和逆向滤 波估计结果的基础上,利用线性无偏最小方差估计获得的.由于量测噪声的相关性,使得其后验均 值不一定等于其先验均值,而它的后验均值又无法通过计算得到, 因而提出的算法是一个次优算 法.在正、 逆向滤波结果已知时,所提出的算法计算量小,易于实现.仿真实例说明,该算法的估计结 果要优于正、 逆向滤波估计结果,以及量测噪声不相关的Kalman 平滑估计结果-Based on the forw ard and backw ard f i ltering est imates a smoothing algorithm is developed for linear systems w i th general correlated measurement noises by using the l inear unbiased minimum v ariance est imation formula. Because of the correlat ion of the measurment noises the posterior mean of the noise is not alw ays equal to its prior one and can t be calculated. Hence, the proposed algorithm is subopt imal . When the forward and backward f il tering result s are know n, the proposed algorithm has low computional complex ity and can be real ized easi ly. T hrough a simulat ion example i t is indicated that the result of the proposed smoothing algorithm is bet ter than that of the forward, backward filter ing or Kalman smoothing algorithm, where the measurement noises are assumed to be uncorrelated
Platform: | Size: 359424 | Author: 张成宝 | Hits:

[Algorithmfixed-piont-smoothing-estimates

Description: 做的一次作业,kalman滤波及其固定点估计-kalman estimates and fixed-piont smoothing estimates
Platform: | Size: 1024 | Author: 李小名 | Hits:

[matlab3-3-Kalman

Description: 完整的卡拉曼滤波matlab代码,包括卡拉曼滤波平滑-The complete Karaman filter code including filtering and smoothing
Platform: | Size: 62464 | Author: | Hits:

[Otherfusion3smooth

Description: 卡尔曼平滑,包括固定区间平滑,固定点平滑和之后平滑-Kalman smoothing, including fixed-interval smoother, fixed-point smoothing and after smoothing
Platform: | Size: 38912 | Author: wangjunxiang | Hits:

[Otherkalman

Description: 在工程运用中,我们往往在卡尔曼滤波器后端连接平滑滤波器构成平滑卡尔曼滤波器,来加强滤波性能的改善,程序通过简单输入信号 在增加随机观测噪声情况下 在平滑卡尔曼滤波前后进行观测对比,可得平滑卡尔曼滤波性能得到了改善。-In engineering application, we often back-end connections in the Kalman filter Kalman smoothing filter the smoothing filter, to enhance filter performance improvement program by simply increasing the input signal in the case of random measurement noise Kalman filter before smoothing contrast observation can be obtained Kalman smoothing performance is improved.
Platform: | Size: 1024 | Author: 春雷 | Hits:

[OpenCVKalman

Description: 在机器视觉中追踪时常会用到预测算法,kalman是你一定知道的。它可以用来预测各种状态,比如说位置,速度等。关于它的理论有很多很好的文献可以参考。opencv给出了kalman filter的一个实现,而且有范例,该应用是对二维坐标进行预测和平滑-In machine vision often used to track prediction algorithm, kalman is that you must know. It can be used to predict various states, such as position, speed and the like. There are many theories about its well documented reference. opencv gives a realization kalman filter, and there are examples of the application is a two-dimensional coordinate forecasting and smoothing
Platform: | Size: 7361536 | Author: apple | Hits:

[matlabkalmanTools

Description: Functions kalman_filter kalman_smoother - implements the RTS equations learn_kalman - finds maximum likelihood estimates of the parameters using EM sample_lds - generate random samples AR_to_SS - convert Auto Regressive model of order k to State Space form SS_to_AR learn_AR - finds maximum likelihood estimates of the parameters using least squares(This toolbox supports filtering, smoothing and parameter estimation (using EM) for Linear Dynamical Systems.)
Platform: | Size: 12288 | Author: 冬日里的影子 | Hits:
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