Author Search Result

[Author] Jianting CAO(4hit)

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  • Neural Network Models for Blind Separation of Time Delayed and Convolved Signals

    Andrzej CICHOCKI  Shun-ichi AMARI  Jianting CAO  

     
    PAPER

      Vol:
    E80-A No:9
      Page(s):
    1595-1603

    In this paper we develop a new family of on-line adaptive learning algorithms for blind separation of time delayed and convolved sources. The algorithms are derived for feedforward and fully connected feedback (recurrent) neural networks on basis of modified natural gradient approach. The proposed algorithms can be considered as generalization and extension of existing algorithms for instantaneous mixture of unknown source signals. Preliminary computer simulations confirm validity and high performance of the proposed algorithms.

  • Single-Trial Magnetoencephalographic Data Decomposition and Localization Based on Independent Component Analysis Approach

    Jianting CAO  Noboru MURATA  Shun-ichi AMARI  Andrzej CICHOCKI  Tsunehiro TAKEDA  Hiroshi ENDO  Nobuyoshi HARADA  

     
    PAPER-Nonlinear Problems

      Vol:
    E83-A No:9
      Page(s):
    1757-1766

    Magnetoencephalography (MEG) is a powerful and non-invasive technique for measuring human brain activity with a high temporal resolution. The motivation for studying MEG data analysis is to extract the essential features from measured data and represent them corresponding to the human brain functions. In this paper, a novel MEG data analysis method based on independent component analysis (ICA) approach with pre-processing and post-processing multistage procedures is proposed. Moreover, several kinds of ICA algorithms are investigated for analyzing MEG single-trial data which is recorded in the experiment of phantom. The analyzed results are presented to illustrate the effectiveness and high performance both in source decomposition by ICA approaches and source localization by equivalent current dipoles fitting method.

  • Visualization of Brain Activities of Single-Trial and Averaged Multiple-Trials MEG Data

    Yoshio KONNO  Jianting CAO  Takayuki ARAI  Tsunehiro TAKEDA  

     
    PAPER-Neuro, Fuzzy, GA

      Vol:
    E86-A No:9
      Page(s):
    2294-2302

    Treating an averaged multiple-trials data or non-averaged single-trial data is a main approach in recent topics on applying independent component analysis (ICA) to neurobiological signal processing. By taking an average, the signal-to-noise ratio (SNR) is increased but some important information such as the strength of an evoked response and its dynamics will be lost. The single-trial data analysis, on the other hand, can avoid this problem but the SNR is very poor. In this study, we apply ICA to both non-averaged single-trial data and averaged multiple-trials data to determine the properties and advantages of both. Our results show that the analysis of averaged data is effective for seeking the response and dipole location of evoked fields. The non-averaged single-trial data analysis efficiently identifies the strength and dynamic component such as α-wave. For determining both the range of evoked strength and dipole location, an analysis of averaged limited-trials data is better option.

  • Estimation of ARMAX Systems and Strictly Positive Real Condition

    Jianming LU  Takashi YAHAGI  Jianting CAO  

     
    LETTER-Digital Signal Processing

      Vol:
    E78-A No:5
      Page(s):
    641-643

    This letter presents new estimation algorithm of ARMAX systems which do not always satisfy the strictly positive real (SPR) condition. We show how estimated parameters can converge to their true values based on the overparameterized system. Finally, the results of computer simulation are presented to illustrate the effectiveness of the proposed method.

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