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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:

[matlabaver_filter

Description: 这是一个基于偏微分方程的图像处理问题的非线性平滑滤波器的程序!-This is a partial differential equations based on the question of image processing procedures for non-linear smoothing filters!
Platform: | Size: 1024 | Author: zhangyi | Hits:

[Graph programtuxiangpinhua

Description: 图像平滑 中值滤波属于非线性平滑滤波器,它可以消除噪声又能保护图象的细节-Image smoothing median filter belong to non-linear smoothing filters, which can eliminate noise and protect the image details
Platform: | Size: 15360 | Author: 陈杰 | Hits:

[Special Effectssmooth

Description: 图像的平滑滤波。通过平滑线性滤波器和中值滤波两种方法对噪声污染的图像进行净化。-Image smoothing filter.By smoothing the linear filters and median filter for noise pollution are two ways to purify the image.
Platform: | Size: 50176 | Author: 王昊 | Hits:

[Communication-Mobilefir

Description: FIR(Finite Impulse Response)滤波器:有限长单位冲激响应滤波器,是数字信号处理系统中最基本的元件,它可以在保证任意幅频特性的同时具有严格的线性相频特性,同时其单位抽样响应是有限长的,因而滤波器是稳定的系统。因此,FIR滤波器在通信、图像处理、模式识别等领域都有着广泛的应用。-FIR (Finite Impulse Response) filters: finite impulse response filter unit, digital signal processing system is the most basic components, it can ensure that any increase in the frequency characteristics of both a strictly linear phase frequency characteristics, while its unit sample response is finite, and therefore the system filter is stable. Therefore, FIR filters in communications, image processing, pattern recognition and other fields have a wide range of applications.
Platform: | Size: 1024 | Author: heyan | Hits:

[matlabMATLABshiyongyuandaima

Description: 目录 1.图像反转 2 2.灰度线性变换 2 3.非线性变换 4 4.直方图均衡化 5 5. 线性平滑滤波器 6 6.中值滤波器 7 7.用Sobel算子和拉普拉斯对图像锐化: 8 8.梯度算子检测边缘 9 9.LOG算子检测边缘 11 10.Canny算子检测边 缘 12 11.边界跟踪 (bwtraceboundary函数) 13 12.Hough变换 14 13.直方图阈值法 16 14. 自动阈值法:Otsu法 18 15.膨胀操作 19 16.腐蚀操作 20 17.开启和闭合操作 21 18.开启和闭合组合操作 22 19.形态学边界提取 24 20.形态学骨架提取 25 21.直接提取四个顶点坐标 26 22.文件打开窗口 27 -Contents 1 image reversal 22 23 gray linear transformation. Nonlinear transformation 44. Histogram equalization 55 linear smoothing filters 66. Median filter 77. Sobel operator and Rapp Las Image Sharpening: 88. gradient edge detection operator 9 9.LOG edge detection operator 11 10.Canny count of edge detection 1211. the border tracking (bwtraceboundary function) 1413 13 12.Hough transform histogram. threshold Law 1614 automatic thresholding method: Otsu 1815 expansion operation 1916. corrosion operation 2017. opening and closing operation of 2118. combination of opening and closing operation 2219. morphology boundary extraction 24 20 morphological skeleton extraction 2521 direct extraction of four vertex coordinates 2622 File Open window 27
Platform: | Size: 115712 | Author: 廉小萍 | Hits:

[matlabMATLABshiyongdaima1

Description: 目录 1.图像反转 2 2.灰度线性变换 2 3.非线性变换 4 4.直方图均衡化 5 5. 线性平滑滤波器 6 6.中值滤波器 7 7.用Sobel算子和拉普拉斯对图像锐化: 8 8.梯度算子检测边缘 9 9.LOG算子检测边缘 11 10.Canny算子检测边 缘 12 11.边界跟踪 (bwtraceboundary函数) 13 12.Hough变换 14 13.直方图阈值法 16 14. 自动阈值法:Otsu法 18 15.膨胀操作 19 16.腐蚀操作 20 17.开启和闭合操作 21 18.开启和闭合组合操作 22 19.形态学边界提取 24 20.形态学骨架提取 25 21.直接提取四个顶点坐标 26 22.文件打开窗口 27 -Contents 1 image reversal 22 23 gray linear transformation. Nonlinear transformation 44. Histogram equalization 55 linear smoothing filters 66. Median filter 77. Sobel operator and Rapp Las Image Sharpening: 88. gradient edge detection operator 9 9.LOG edge detection operator 11 10.Canny count of edge detection 1211. the border tracking (bwtraceboundary function) 1413 13 12.Hough transform histogram. threshold Law 1614 automatic thresholding method: Otsu 1815 expansion operation 1916. corrosion operation 2017. opening and closing operation of 2118. combination of opening and closing operation 2219. morphology boundary extraction 24 20 morphological skeleton extraction 2521 direct extraction of four vertex coordinates 2622 File Open window 27
Platform: | Size: 12288 | Author: 廉小萍 | Hits:

[matlabalphaBetaFilter

Description: The function alphaBetaFilter implements a generic algorithm for an alpha-beta filter that is a linear state estimation for position and velocity given an observed data. It acts like a smoothing. Also closely related to Kalman filters and to linear state observers used in control theory. Its principal advantage is that it does not require a detailed system model.
Platform: | Size: 2048 | Author: Karthi | Hits:

[Special EffectsImage-processing-source-code

Description: 本软件大致具有以下功能: 1. 打开时显示特效 .无 .随机 .向下扫描 .垂直双重扫描 .向右移动 .水平双重移动 .垂直百叶窗 .水平百叶窗 .垂直栅条 .水平栅条 .马赛克 .雨滴 2. 对图像进行点运算 .灰度直方图 .灰度线性变换 .灰度非线性变换(对数变换) .灰度阈值变换 .灰度均衡 3. 对图像几何变换 .平移变换 .镜像变换 .缩放 .旋转 4. 图像增强 .简单平滑 .高斯平滑 .拉普拉斯锐化 .Sobel边缘细化 5. 对图像添加滤镜 .反色效果 .浮雕效果 .黑白效果 .马赛克化 .素描效果 -This software generally has the following features: 1 display effects when opening None Random . Downward scan Vertical dual scan Move to the right The horizontal double move Vertical blinds Horizontal blinds The vertical gridlines Horizontal gridlines Mosaic . Raindrops 2 image point operations . Histogram Gray-linear transformation Gray-linear transformation (logarithmic transformation) . Grayscale threshold transform . Gray balance 3 image geometric transformation . Translation transformation Mirroring transformation Zooming Rotate The image enhancement Simple Smooth Gaussian smoothing Laplace sharpening . Sobel edge thinning 5 on the image to add filters Anti-color effect . Emboss Black and white effect Mosaic of . Sketch effect
Platform: | Size: 12968960 | Author: 任朝阳 | Hits:

[Graph programGuided-image-filter-kaiming-He

Description: The guided filter can be used as an edge-preserving smoothing operator like the popular bilateral filter, but has better behaviors near edges. The guided filter is also a more generic concept beyond smoothing: it can transfer the structures of the guidance image to the filtering output, enabling new filtering applications like dehazing and guided feathering. Moreover, the guided filter naturally has a fast and non-approximate linear time algorithm, regardless of the kernel size and the intensity range. Currently it is one of the fastest edge-preserving filters.
Platform: | Size: 3338240 | Author: mr.li | Hits:

[source in ebookDIP_chapter3_sourcecode

Description: Chapter 3 of text book “Digital Image Processing” Gonzales named Intensity Transformations and Spatial Filtering, which consists of 6 sub-sections including (1) Basics intensity transformation functions, (2) Histogram Processing, (3) Spatial Filtering, (4) Smoothing Spatial Filters, (5) Sharpening Spatial Filters, and (6) Using Fuzzy Techniques for Intensity Transformations and Spatial Filtering. In Basic Intensity Transformation Functions, there are 4 important functions including Image Negative, Log Transformation, Power-Law (Gamma) Transformations, and Piecewise-Linear Transformation Functions. In terms of Histogram Processing, I learned about Histogram Equalization, Histogram Matching (Specification). Local Histogram Processing and Using Histogram Statistics for Image Enhancement.
Platform: | Size: 12288 | Author: Han | Hits:

[Special Effectssmoothing-spatial-filtering-ANG-code

Description: 主要关于平滑空间滤波例如平滑线性滤波器和统计排序滤波器方法的讲解及相关代码。-Mainly on smoothing spatial filtering such as smoothing linear filters and statistical sorting filter method to explain and related code 。
Platform: | Size: 1289216 | Author: 小陈 | Hits:

[Graph programUntitled3

Description: 高斯滤波器是一类根据高斯函数的形状来选择权值的线性平滑滤波器。高斯平滑滤波器对于抑制服从正态分布的噪声非常有效。(The Gauss filter is a class of linear smoothing filters that select weights based on the shape of the Gauss function. The Gauss smoothing filter is very effective in suppressing noise that obeys normal distribution.)
Platform: | Size: 1024 | Author: 小莫洛 | Hits:

[Special Effectsshutu1

Description: (1)图像基本操作:不同格式(大于3种)图像的读入与存盘、文字叠加、不同彩色空间的转换、图像的DCT及FFT变换等; (2)图像增强:包括直方图拉升(线性和非线性)、直方图均衡、平滑与锐化(采用不同的滤镜),美颜(加分项); (3)图像恢复:几何操作(如旋转、缩放、投影校正等)、模糊恢复(如运动模糊消除等,加分项); (4)图像合成(加分项):实现换头、换背景、图像拼接等功能。((1) Basic operation of image: reading and saving of images in different formats (more than 3 kinds), text superposition, conversion of different color spaces, DCT and FFT transformation of images, etc; (2) Image enhancement: including histogram lifting (linear and non-linear), histogram equalization, smoothing and sharpening (using different filters), beauty (bonus item); (3) Image restoration: geometric operations (such as rotation, scaling, projection correction, etc.), blur restoration (such as motion blur elimination, etc., plus points); (4) Image synthesis (Bonus): realize the functions of head changing, background changing, image splicing, etc.)
Platform: | Size: 23153664 | Author: ISSING | Hits:

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