An EEMD-IVA framework for concurrent multidimensional EEG and unidimensional kinematic data analysis.

IEEE Trans. Biomed. Engineering(2014)

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摘要
Joint blind source separation (JBSS) is a means to extract common sources simultaneously found across multiple datasets, e.g., electroencephalogram (EEG) and kinematic data jointly recorded during reaching movements. Existing JBSS approaches are designed to handle multidimensional datasets, yet to our knowledge, there is no existing means to examine common components that may be found across a unidimensional dataset and a multidimensional one. In this paper, we propose a simple, yet effective method to achieve the goal of JBSS when concurrent multidimensional EEG and unidimensional kinematic datasets are available, by combining ensemble empirical mode decomposition (EEMD) with independent vector analysis (IVA). We demonstrate the performance of the proposed method through numerical simulations and application to data collected from reaching movements in Parkinson's disease. The proposed method is a promising JBSS tool for real-world biomedical signal processing applications.
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关键词
biomechanics,unidimensional,diseases,ensemble empirical mode decomposition,unidimensional kinematic data analysis,electroencephalogram,multiple datasets,electroencephalography,numerical analysis,data analysis,medical signal processing,multidimensional signal processing,jbss,data fusion,concurrent multidimensional eeg,eemd-iva framework,blind source separation,reaching movements,kinematics,real-world biomedical signal processing applications,unidimensional kinematic datasets,independent vector analysis,numerical simulations,eeg,multidimensional datasets,iva,joint blind source separation,eemd,parkinson disease,kinematic data joint recording,data mining,vectors,noise
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