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1.
朱珠  王海燕  王丛  程刚 《电声技术》2009,33(9):85-89
在水声制导技术中,提出了一种高效分离算法,实现了对多目标源信号的分离,为系统后端对多目标定位提供了技术支持。窄带信号条件下,把盲分离与阵列信号处理结合起来.借助阵列模型把接收的混合信号变成解析信号,然后利用瞬时复值盲分离算法进行分离获得源信号的解析信号,取实部后便是实源信号。从而将实数的卷积混合转化为复数的瞬时混合,在盲分离阵列模型的基础上,通过复数盲分离的手段完成盲解卷积。解卷积恢复的多目标源信号十分有利于多目标特征识别与定位。通过构建正弦信号盲解卷积仿真实验,对文中提出的盲解卷积方法进行了验证。结果表明了该方法的正确性。  相似文献   

2.
叶飞  张天骐  廖畅  周杨 《电视技术》2015,39(17):99-103
针对非协作通信中成对载波多址(Paired Carrier Multiple Acess,PCMA)信号的盲分离问题,提出了一种基于独立分量分析(Independent component analysis,ICA)的单通道盲分离算法。首先对接收到的单路PCMA信号进行参数估计得到其残余载波频率,再对其处理得到两路基带混合信号,最后利用ICA算法分离出源基带信号。该算法在未知两个卫星地面站发送信号的情况下,从接收到的PCMA信号中恢复出两路源基带信号。仿真实验表明,本文算法在信噪比为-10dB时仍具有良好的分离效果,两路基带信号的波形相似系数可分别达到0.94与0.86以上。  相似文献   

3.
基于子空间分解的多通道盲解卷积算法   总被引:3,自引:0,他引:3  
针对卷积混合信号,提出了一种新的多通道盲解卷积算法,该算法首先利用子空间分解方法,将信号卷积混合模型变换成线性混合模型,然后利用线性混合盲分离算法分离出源信号.该算法相对频域盲解卷积算法来说无需解决线性混合盲分离中存在的幅度和排列顺序的模糊性问题,而且该算法不要求信号独立同分布,只要求各源信号统计独立即可.因此,该算法可以直接在中频对观察信号进行处理.计算机仿真结果表明,该算法不仅能对不同频不同调制方式的通信信号进行盲解卷积,而且对同频同调制的通信信号,该算法同样有效.  相似文献   

4.
传统的单通道盲去卷积的方法存在仅能从混合信号中分离出2路源信号的局限,考虑到以上问题,该文提出一种基于优化的深度卷积生成对抗网络的单通道盲去卷积算法(SCBDC),能从1路混合信号中分离和解卷积出3路以上的独立源信号和混合矩阵.该文实验在汉字和遮挡图像数据集上进行,随机选择4路信号与混合矩阵进行卷积混合,实验结合峰值信...  相似文献   

5.
李靖  乔蕊 《量子电子学报》2015,32(4):407-413
多帧盲解卷积算法利用多帧退化图像进行复原可以获得清晰原始图像和点扩散函数的信息,受到了很多研究者的关注。目前大部分多帧盲解卷积算法都需要对多帧退化图像进行匹配预处理,以消除图像间平移引入的算法求解误差。本文利用频率内的多帧盲解卷积算法对未匹配的退化图像进行处理,不需要进行预匹配处理,只需要对点扩散函数的支持域进行扩展就可以复原获取清晰化的图像。利用傅里叶变换的性质对该方法的可行性进行了说明。同时对该方法进行了数字仿真实验,复原结果中的点扩散函数发生了相对移动消除了图像间未匹配的影响,证实了本文方法的有效性。  相似文献   

6.
针对传统卷积混合盲分离待求参数多、分离效果易受分离矩阵初值影响的局限性,提出了基于复Givens矩阵与蝙蝠优化的频域求解算法。算法采用复Givens矩阵表示分离矩阵,减少了待求参数,降低了求解难度和计算量。利用蝙蝠算法代替梯度算法优化求解旋转角度完成各频点线性瞬时混合复信号的盲分离,全局收敛性更强。此外,由于对源信号的先验知识要求较少,可以分离服从多种分布的信号。仿真实验表明,该算法可有效地实现卷积混合盲分离。  相似文献   

7.
由于大气湍流影响,光电探测系统一般只能获得模糊降质图像。根据大多数图像频谱幅度谱具有指数律分布的特征,提出了一种新的快速盲图像解卷积算法,该算法基于图像谱服从指数律分布的观察,从降质图像中直接获得降质过程的初始估计,大大加快了算法收敛速度,提高了算法稳定性;以此为基础,采用加权增量维纳滤波的方法交替迭代进行点扩展函数与原始图像的进一步估计,保证了算法的良好解卷积性能和普适性,最终实现了快速有效的盲解卷积。实验表明,基于指数律的增量维纳滤波(BPL-IWF)盲图像解卷积后处理的光电探测系统,能够实时探测目标,并准实时输出BPL-IWF盲图像解卷积图像。  相似文献   

8.
针对窄带干扰下通信系统性能恶化的问题,提出一种基于过采样与盲源分离技术的单通道窄带干扰抑制算法。该算法利用通信信号与窄带干扰的基带结构特征,通过过采样以及串并变换构造出源信号为信息序列的盲源分离模型,并利用快速独立成分分析法实现信息码元的恢复。仿真结果表明,该算法能有效对抗窄带干扰,抗干扰能力强。  相似文献   

9.
多径瑞利衰落信道中的盲信噪比估计   总被引:2,自引:2,他引:0  
提出了一种在多径瑞利衰落信道中的信噪比盲估计算法。采用自相关检测和多项式拟合的方法,在保证接收端参数符合降噪原理的条件下.利用接收信号同相分量的自相关函数实现了较精确的盲信噪比估计。算法分析和计算机仿真结果表明.该算法适用于低信噪比情况,在信噪比为0-20dB时估计误差小于1dB。  相似文献   

10.
梅铁民  闫晓瑾 《信号处理》2020,36(11):1877-1884
在盲信道均衡或盲语音去混响应用中,盲多信道系统辨识通常是信号解卷积的前提条件,即盲辨识过程后跟一个解卷积过程。本文提出一种基于卡尔曼滤波的同步盲系统辨识与解卷积方法,其中卡尔曼滤波的状态矢量由多信道系统参数与源信号矢量组成,过程方程和测量方程则建立在单输入-多输出系统(SIMO)的输入输出关系及信道间交叉关联关系(Cross Relation)基础上。此外,盲系统辨识部分与解卷积部分是可以解耦的,生成两个看似独立的卡尔曼滤波问题,并且这两个卡尔曼滤波问题可以实现并行计算。与级联结构相比,这种并行结构更有利于算法优化和实时信号处理。仿真表明,对于无噪声理想信号模型,本算法可以实现完全系统辨识和解卷积(信号误差比可达到100 dB以上),说明理论正确;对于实测的混响语音信号亦可以实现一定的去混响效果。   相似文献   

11.
A new two-stage algorithm is proposed for the deconvolution of multi-input multi-output (MIMO) systems with colored input signals. While many blind deconvolution algorithms in the literature utilize high order statistics of the output signal for white input signals, the additional information contained in colored input signals allows the design of second-order statistical algorithms. In fact, practical signal sources such as speech signals do have distinct, nonstationary, colored power spectral densities. We present a two-stage signal separation approach in which the first step utilizes a matrix pencil between output auto-correlation matrices at different delays, whereas the second stage adopts a subspace method to identify and deconvolve MIMO systems  相似文献   

12.
Compartment modeling of dynamic medical image data implies that the concentration of the tracer over time in a particular region of the organ of interest is well modeled as a convolution of the tissue response with the tracer concentration in the blood stream. The tissue response is different for different tissues while the blood input is assumed to be the same for different tissues. The kinetic parameters characterizing the tissue responses can be estimated by multichannel blind identification methods. These algorithms use the simultaneous measurements of concentration in separate regions of the organ; if the regions have different responses, the measurement of the blood input function may not be required. Three blind identification algorithms are analyzed here to assess their utility in medical imaging: eigenvector-based algorithm for multichannel blind deconvolution; cross relations; and iterative quadratic maximum-likelihood (IQML). Comparisons of accuracy with conventional (not blind) identification techniques where the blood input is known are made as well. Tissue responses corresponding to a physiological two-compartment model are primarily considered. The statistical accuracies of estimation for the three methods are evaluated and compared for multiple parameter sets. The results show that IQML gives more accurate estimates than the other two blind identification methods.  相似文献   

13.
Image blind deconvolution is well known as a challenging, ill-posed problem due to the uncertainty of the blur kernel and the noise condition. Based on our observations, blind deconvolution algorithms tend to generate disconnected and noisy blur kernels, which would yield a serious ringing effect in the restored image if the input image is noisy. Therefore, there is still room for further improvement, especially for noisy images captured under poor illumination conditions. In this paper, we propose a robust blind deconvolution algorithm by adopting a penalty-weighted anisotropic diffusion prior. On one hand, the anisotropic diffusion prior effectively eliminates the discontinuity in the blur kernel caused by the noisy input image during the process of kernel estimation. On the other hand, the weighted penalizer reduces the speckle noise of the blur kernel, thus improving the quality of the restored image. The effectiveness of the proposed algorithm is verified by both synthetic and real images with defocused or motion blur.  相似文献   

14.
An exact expression for the output autocorrelation function of an FM discriminator is derived when the input of the FM discriminator is an FM signal, cochannel interference and Gaussian noise. The modulating baseband signals for the FM signal and the cochannel interference are assumed FDM signals whose statistics are modeled by a stationary Gaussian random process. The interaction among signal, interference and noise are determined by which the NPR (noise-power-ratio) can be calculated  相似文献   

15.
Multipass dynamic MRI and pharmacokinetic modeling are used to estimate perfusion parameters of leaky capillaries. Curve fitting and nonblind deconvolution are the established methods to derive the perfusion estimates from the observed arterial input function (AIF) and tissue tracer concentration function. These nonblind methods are sensitive to errors in the AIF, measured in some nearby artery or estimated by multichannel blind deconvolution. Here, a single-channel blind deconvolution algorithm is presented, which only uses a single tissue tracer concentration function to estimate the corresponding AIF and tissue impulse response function. That way, many errors affecting these functions are reduced. The validity of the algorithm is supported by simulations and tests on real data from mouse. The corresponding nonblind and multichannel methods are also presented.  相似文献   

16.
张俊林  王彬  汪洋  刘明骞 《电子学报》2018,46(6):1390-1396
正交频分复用(OFDM,Orthogonal Frequency Division Multiple)信号的调制识别与参数估计是非协作通信领域的重要研究内容.为了解决α稳定分布噪声下OFDM信号调制识别与参数估计困难的问题,提出一种广义循环平稳的盲处理算法.该算法首先对接收信号进行非线性变换,推导出接收信号的广义循环自相关函数表达式,分析了单载波调制信号与OFDM信号的广义循环自相关函数特性,并给出了OFDM信号的广义循环自相关函数与待估参数之间的关系.然后,基于分析结论,利用广义循环自相关函数构造调制识别特征完成OFDM信号与单载波信号的调制方式自动分类;最后,针对OFDM信号的调制参数估计问题,提出了一种基于广义循环自相关函数的调制参数估计算法.理论分析与仿真结果表明,在α稳定分布噪声环境下,该算法可以有效实现OFDM信号调制识别与参数估计,且算法不依赖接收信号的先验信息,可以直接对中频接收信号进行处理.  相似文献   

17.
负信噪比直扩信号伪码盲估计方法   总被引:1,自引:0,他引:1  
章军  詹毅 《通信对抗》2006,(2):10-13
给出了一种采用延迟相关积累和信号子空间分析实现对负信噪比直扩(DSSS)信号伪码盲估计的方法。计算机仿真结果表明,该方法可以在-15dB信噪比条件下检测信号并估计出伪码、载波频率等参数,估计结果可以实现非合作解扩解调。  相似文献   

18.
A new adaptive algorithm for blind interference rejection and multipath mitigation is studied and applied to antenna array processing in TDMA cellular communication systems. It is shown how the estimation of multiple signals from different sources by means of a multi-sensor receiver can be formulated as a multi-channel deconvolution problem. The proposed method is based on High-Order Statistics (HOS) processing of the baseband vector samples at the antenna array output. The similarity between the cumulant-based solution and the standard multi-variable Least Squares solution is exploited to derive an efficient adaptive algorithm based on the vector lattice architecture. The algorithm is numerically stable, considerably less complex than other existing multi-channel methods using HOS processing and exhibits rapid convergence with respect to blind array processing algorithms using simple gradient-based minimization procedures.  相似文献   

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