نتایج جستجو برای: least mean square lms

تعداد نتایج: 1010467  

2015
James C. Huhta John G. Webster Chin-Teng Lin Kuan-Cheng Chang Chun-Ling Lin Chia-Cheng Chiang Shao-Wei Lu Shih-Sheng Chang Bor-Shyh Lin Hsin-Yueh Liang Ray-Jade Chen Yuan-Teh Lee SangJoon Lee Jungkuk Kim Myoungho Lee Yunfeng Wu Rangaraj M. Rangayyan Yachao Zhou Pradeep Kumar Rik Vullings Bert de Vries Jan W. M. Bergmans

When acquiring the Electrocardiogram (ECG) signal from the person, it should be preprocess before sending to the analyst for taking decision of the signal, because signal should be affected with various artifacts. For numerous applications of noise cancellation in the corrupted signals, adaptive filters play important role. The various artifacts which commonly occur in the acquisition of ECG si...

2013
Robert Dürichen Tobias Wissel Floris Ernst Achim Schweikard

In robotic radiotherapy, systematic latencies have to be compensated by prediction of external optical surrogates. We investigate possibilities to increase the prediction accuracy using multi-modal sensors. The measurement setup includes position, acceleration, strain and flow sensors. To select the most relevant and least redundant information from the sensors and to limit the size of the feat...

Journal: :EURASIP J. Wireless Comm. and Networking 2017
Bo Li Hongjuan Yang Gongliang Liu Xiyuan Peng

Underwater acoustic channel (UAC) is one of the most challenging communication channels in the world, owing to its complex multi-path and absorption as well as variable ambient noise. Although adaptive equalization could effectively eliminate the inter-symbol interference (ISI) with the help of training sequences, the convergence rate of equalization in sparse UAC decreased remarkably. Besides,...

1998
Kevin J. Quirk James R. Zeidler Laurence B. Milstein

The least-mean-square (LMS) estimator is a nonlinear estimator with information dependencies spanning the entire set of data fed into it. The traditional analysis techniques which are used to model this estimator obscure this, restricting the estimator to the finite set of data sufficient to span the length of its filter. The finite Wiener filter is thus often considered a bound on the performa...

This paper presents new adaptive filtering techniques used in speech enhancement system. Adaptive filtering schemes are subjected to different trade-offs regarding their steady-state misadjustment, speed of convergence, and tracking performance. Fractional Least-Mean-Square (FLMS) is a new adaptive algorithm which has better performance than the conventional LMS algorithm. Normalization of LMS ...

2017
Liyan Xu Fabing Duan Xiao Gao Derek Abbott Mark D McDonnell

Suprathreshold stochastic resonance (SSR) is a distinct form of stochastic resonance, which occurs in multilevel parallel threshold arrays with no requirements on signal strength. In the generic SSR model, an optimal weighted decoding scheme shows its superiority in minimizing the mean square error (MSE). In this study, we extend the proposed optimal weighted decoding scheme to more general inp...

Journal: :IEEE Trans. Information Theory 2002
Onkar Dabeer Elias Masry

For the least mean square (LMS) algorithm, we analyze the correlation matrix of the filter coefficient estimation error and the signal estimation error in the transient phase as well as in steady state. We establish the convergence of the second-order statistics as the number of iterations increases, and we derive the exact asymptotic expressions for the mean square errors. In particular, the r...

2015
Lay Teen Ong

This paper proposes a fast Minimum-Variance-Distortionless-Response (MVDR) beamforming algorithm for an antenna array for cancellation of multiple interference signals. The proposed algorithm uses Sample-Average Estimate (SAE) of the data covariance matrix and reduces its computational effort by applying the Matrix-Inversion-Lemma (MIL) to its covariance Matrix Inversion (MI) operation. The pro...

Journal: :CoRR 2012
Sanaz Moshirian Soheil Ghadami Mohammad Havaei

— Future services demand high data rate and quality. Thus, it is necessary to define new and robust algorithms to equalize channels and reduce noise in communications. Nowadays, new equalization algorithms are being developed to optimize the channel bandwidth and reduce noise, namely, Blind Channel Equalization. Conventional equalizations minimizing mean-square error generally require a trainin...

Journal: :IEEE Trans. Information Theory 2000
Kevin J. Quirk Laurence B. Milstein James R. Zeidler

The least-mean-square (LMS) estimator is a nonlinear estimator with information dependencies spanning the entire set of data fed into it. The traditional analysis techniques used to model this estimator obscure these dependencies; to simplify the analysis they restrict the estimator to the finite set of data sufficient to span the length of its filter. Thus the finite Wiener filter is often con...

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