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[Othersinecostas

Description: 用costas环检测淹没在噪声和未知任何先验参数的正弦信号检测-with Costas Loop Detection drowned in the noise and any a priori unknown parameters of sinusoidal signal detection
Platform: | Size: 1980 | Author: 邓德鑫 | Hits:

[Other resourceRobustadaptiveKalmanfilteringwithunknowninputs

Description: The standard optimum Kalman filter demands complete knowledge of the system parameters, the input forcing functions, and the noise statistics. Several adaptive methods have already been devised to obtain the unknown information using the measurements and the filter residuals.-The optimum standard Kalman filter demand 's complete knowledge of the system parameters. the input forcing functions. and the noise statistics. Several adaptive met hods have already been devised to obtain the unk nown information using the measurements and th e filter residuals.
Platform: | Size: 949986 | Author: rifer | Hits:

[Other resourceAdaptiveLineEnhancer

Description: This demonstration illustrates the application of adaptive filters to signal separation using a structure called an adaptive line enhancer (ALE). In adaptive line enhancement, a measured signal x(n) contains two signals, an unknown signal of interest v(n), and a nearly-periodic noise signal eta(n). The goal is to remove the noise signal from the measured signal to obtain the signal of interest.
Platform: | Size: 117211 | Author: zqq | Hits:

[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:

[Othersinecostas

Description: 用costas环检测淹没在噪声和未知任何先验参数的正弦信号检测-with Costas Loop Detection drowned in the noise and any a priori unknown parameters of sinusoidal signal detection
Platform: | Size: 2048 | Author: 邓德鑫 | Hits:

[Industry researchRobustadaptiveKalmanfilteringwithunknowninputs

Description: The standard optimum Kalman filter demands complete knowledge of the system parameters, the input forcing functions, and the noise statistics. Several adaptive methods have already been devised to obtain the unknown information using the measurements and the filter residuals.-The optimum standard Kalman filter demand 's complete knowledge of the system parameters. the input forcing functions. and the noise statistics. Several adaptive met hods have already been devised to obtain the unk nown information using the measurements and th e filter residuals.
Platform: | Size: 949248 | Author: rifer | Hits:

[AI-NN-PRAdaptiveLineEnhancer

Description: This demonstration illustrates the application of adaptive filters to signal separation using a structure called an adaptive line enhancer (ALE). In adaptive line enhancement, a measured signal x(n) contains two signals, an unknown signal of interest v(n), and a nearly-periodic noise signal eta(n). The goal is to remove the noise signal from the measured signal to obtain the signal of interest.
Platform: | Size: 116736 | Author: zqq | Hits:

[Windows DevelopLMSfilter

Description: 假设一个接收到的信号为:x(t)=s(t)+n(t), 其中s(t)=A*cos(wt+a), 已知信号的频率w=1KHz, 而信号的幅度和相位未知,n(t)是一个服从N(0,1)分布的白噪声。为了利用计算机对信号进行处理, 将信号按10KHz的频率进行采样。 通过对x(t)进行LMS自适应信号处理,从接收信号中滤出有用信号s(t). 在未知信号频率的情况下,通过对x(t)进行LMS自适应信号处理,从接收信号中滤出有用信号s(t). -Assuming a received signal: x (t) = s (t)+ n (t), one of s (t) = A* cos (wt+ a), the known frequency signal w = 1KHz, And the signal amplitude and phase of the unknown, n (t) is a subject to N (0,1) the distribution of white noise. The use of computers in order to deal with the signal, The signal by sampling frequency of 10KHz. Of x (t) for LMS adaptive signal processing, filtering from the received signal in the useful signal s (t). Frequency signals in unknown circumstances, the adoption of x (t) for LMS adaptive signal processing, filtering from the received signal in the useful signal s (t).
Platform: | Size: 1024 | Author: Jane | Hits:

[Communication-MobileDSSS_enhanced_with_a_coarse_time_synchronization_

Description: The .m file simulates a Spread-Spectrum Modulation Trx/Rcx system, in which, the phase of the pseudo-random sequence generated in the transmitter and used to encode the data stream is unknown a priory at the receiver.A parallel search strategy is employed to locally determine it in the place. It works as here: selecting the maximam-energy low-pass filtered signal of the set of all hypothesied despreaded ones using different hypothesized phases for the PN-sequence.The simulation can be growed in several ways including considering various types of noise and jammings or also designing better filters.
Platform: | Size: 3072 | Author: Rafal | Hits:

[Graph Recognize1

Description: Cognitive radio frequency spectrum detection-The spectrum sensing of a wideband frequency range is studied by dividing it into multiple subbands. It is assumed that in each subband either a primary user (PU) is active or absent in a additive white Gaussian noise environment with an unknown variance. It is also assumed that at least a minimum given number of subbands are vacant of PUs. In this multiple interrelated hypothesis testing problem, the noise variance is estimated and a generalised likelihood ratio detector is proposed to identify possible spectrum holes at a secondary user (SU). Provided that it is known that a specific PU can occupy a subset of subbands simultaneously, a grouping algorithm which allows faster spectrum sensing is proposed. The collaboration of multiple SUs can also be considered in order to enhance the detection performance. The collaborative algorithms are compared in terms of the required exchange information among SUs in some collaboration methods. The simulation results show that the propos
Platform: | Size: 231424 | Author: phillis | Hits:

[Otherevar

Description: 假设被噪声污染的信号服从高斯分布,估计高斯噪声的方差.-A signal corrupted by a Gaussian noise with unknown variance. It is often of interest to know more about this variance. The function thus returns an estimated variance of the additive noise.
Platform: | Size: 2048 | Author: frankcy | Hits:

[OtherLyapunov_Exponent_of_Optical_Chaos_Based_on_W_avel

Description: :针对动力学方程未知且信噪比小的光混沌信号,采用小波多分辨分解算法对其进行噪音消 减.用Lorenz混沌信号对该算法的消噪效果进行了检验.提出利用互信息量法和Cao氏法来改进 小数据量法在时间延迟和嵌入维数计算上存在的主观选择性,对经过噪音消减的Lorenz混沌信号 利用此改进的小数据量法计算其最大Lyapunov指数.结果表明,信噪比可提高近10 dB左右,最 大Lyapunov指数计算误差可减少近30 ,并求得半导体放大器光混沌信号的最大Lyapunov指 数为0.389 6.-The wavelet multi—resolution decomposition algorithm was used for reducing noise of optical chaos signals with dynamic equation unknown and low SNR.The algorithm was verified by Lorenz chaotic signa1.The mutual information algorithm and Cao method were used to reduce the suhj ective in computing the delay time and embedding dimension when applying the small data method to compute the largest Lyapunov exponent.The largest lyapunov exponent of the de—noised chaos signal was calculated with this improved method.The result shows that the SNR is increased by about 1 0 dB,and the error of the largest Lyapunov exponent is reduced by 30 .The largest Lyapunov exponent of the optical chaos signal 0.389 6 is obtained with this method.
Platform: | Size: 389120 | Author: 王华 | Hits:

[ApplicationsSVSLMS

Description: 本程序提出了变步长自适应滤波算法的步长调整原则:即在初始收敛阶段或未知系统参数发生变化时,步长应比较大,以便有较快的收 敛速度和对时变系统的跟踪速度 而在算法收敛后,不管主输入端干扰信号v ( n) 有多大,都应保持很小的调整步长以达到很小的稳态失调噪声. 根据变步长公式编的程序,很有参考价值. -This procedure, a variable step adaptive filter algorithm step adjustment principle: that in the initial convergence phase or unknown system parameters change, the steps should be relatively large in order to have fast convergence speed and time-varying systems tracking speed in convergence, no matter the main input interference signal v (n) how much should be adjusted to maintain a small step to achieve a small steady state misadjustment noise. compiled according to the formula variable step procedure useful reference.
Platform: | Size: 1024 | Author: 韩一广 | Hits:

[Algorithmenergydetectionofunknownsignalsoverfading

Description: energy detection of unknown signals over noise and fading
Platform: | Size: 174080 | Author: Narendar | Hits:

[matlabfecgm

Description: 独立成份分析(ICA)以及winner滤波 Source separation of complex signals with JADE. Jade performs `Source Separation in the following sense: X is an n x T data matrix assumed modelled as X = A S + N where o A is an unknown n x m matrix with full rank. o S is a m x T data matrix (source signals) with the properties a) for each t, the components of S(:,t) are statistically independent b) for each p, the S(p,:) is the realization of a zero-mean `source signal . c) At most one of these processes has a vanishing 4th-order cumulant. o N is a n x T matrix. It is a realization of a spatially white Gaussian noise, i.e. Cov(X) = sigma*eye(n) with unknown variance sigma. This is probably better than no modeling at a- Source separation of complex signals with JADE. Jade performs `Source Separation in the following sense: X is an n x T data matrix assumed modelled as X = A S+ N where o A is an unknown n x m matrix with full rank. o S is a m x T data matrix (source signals) with the properties a) for each t, the components of S(:,t) are statistically independent b) for each p, the S(p,:) is the realization of a zero-mean `source signal . c) At most one of these processes has a vanishing 4th-order cumulant. o N is a n x T matrix. It is a realization of a spatially white Gaussian noise, i.e. Cov(X) = sigma*eye(n) with unknown variance sigma. This is probably better than no modeling at all...
Platform: | Size: 7168 | Author: 王庆香 | Hits:

[Communication-MobileABlindEstimationAlgorithmforPNSequenceinDSSSSignal

Description: 这是一篇很好的有关信道估计的文章, 可以用来快速的了解信道估计的基本内容-In this paper, a method for fast blind estimation of DS-SS signal is proposed which aims at the Direct-Sequence Spread- Spectrum (DS-SS) signals with parameters unknown. Considering the characteristic that Pseudo-Random noise (PN) sequence modulates the information symbol, we make use of the method based on the second-order cyclic-cumulant to estimate the period of PN sequence, and then the method of segmented cross-correlation to estimate the synchronous start bit between the information symbols and the PN codes. On base of this, a method of multiple subsection cross-correlation average is used to estimate the PN sequence. Computer simulations show that the method can work well on signals at low signal noise ratio (SNR).
Platform: | Size: 103424 | Author: renkill | Hits:

[matlabdeblurring_demo-1.0

Description: Bayesian Deblurring with Integrated Noise Estimation-Bayesian Deblurring with Integrated Noise Estimation Conventional non-blind image deblurring algorithms involve natural image priors and maximum a-posteriori (MAP) estimation. As a consequence of MAP estimation, separate pre-processing steps such as noise estimation and training of the regularization parameter are necessary to avoid user interaction. Moreover, MAP estimates involving standard natural image priors have been found lacking in terms of restoration performance. To address these issues we introduce an integrated Bayesian framework that unifies non-blind deblurring and noise estimation, thus freeing the user of tediously pre-determining a noise level. A samplingbased technique allows to integrate out the unknown noise level and to perform deblurring using the Bayesian minimum mean squared error estimate (MMSE), which requires no regularization parameter and yields higher performance than MAP estimates when combined with a learned highorder image prior. A quan
Platform: | Size: 904192 | Author: 孙文义 | Hits:

[source in ebookSplitBregmanTVdenoising1

Description: 基于Split Bregman TV方法的一种图像去噪/图像恢复算法,对于未知的噪声具有很好地处理效果。-An image-based method of de-noising Split Bregman TV/image restoration algorithm, for unknown noise with good treatment effect.
Platform: | Size: 157696 | Author: 刘振中 | Hits:

[Otherzedboard_master_XDC_RevC_D_v3

Description: 在这个实验中,使用Mathworks HDL Coder工具产生一个LMS噪声消除的滤波器。HDL coder会基于Simulink模型生成RTL模型封装进IP核。这个滤波器可以自适应地将未知的噪声滤除,输出处理后的信号。(In this exeriment, the Mathworks HDL Coder tool is used to generate a LMS noise elimination filter. HDL coder generates the RTL model based on the Simulink model and encapsulates the IP kernel. The filter can adaptively filter the unknown noise and output the processed signal.)
Platform: | Size: 3072 | Author: woshizhennongmin | Hits:

[matlab1

Description: 一篇关于变分贝叶斯解决噪声参数未知的论文代码,噪声分布使用了逆威沙特分布构建(A paper code about solving the unknown noise parameters with variable decibel Bayes. The noise distribution is constructed with inverse wissaud distribution)
Platform: | Size: 3072 | Author: xiao_j | Hits:
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