Brain electrical signal independent component extraction method based on convolution blind source separation

An EEG signal and independent component technology, applied in instruments, character and pattern recognition, computer components, etc., can solve problems that affect the accuracy of EEG feature extraction and classification recognition, and cannot truly describe the mixing process of EEG signals. , to achieve the effect of improving accuracy, simple implementation, and good separation effect

Active Publication Date: 2015-06-10
BEIJING MECHANICAL EQUIP INST
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Problems solved by technology

[0003] The purpose of the present invention is to provide a method for extracting independent components of EEG signals based on convolutional blind source separation, so as to solve the problem that the independent component extraction method based on the instantaneous mixing model cannot truly describe the mixing process of EEG signals, thereby affecting the feature extraction and classification of EEG signals The problem of recognition accuracy

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Embodiment Construction

[0033] A method for extracting independent components of EEG signals based on convolutional blind source separation, the specific steps of which are:

[0034] The first step is to build an independent component extraction system for EEG signals based on convolutional blind source separation

[0035]EEG signal independent component extraction system based on convolutional blind source separation, including: AD sampling module, short-time Fourier transform module, frequency-domain instantaneous blind source separation module, sequence adjustment module and short-time Fourier transform module. The AD sampling module is used to sample the EEG signal to discretize the EEG signal; the short-time Fourier transform module is used to convert the convolution mixed signal in the time domain into an instantaneous mixed signal in the frequency domain; The blind source separation module is used to perform blind source separation on the instantaneous mixed signal in the frequency domain; the...

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Abstract

The invention discloses a brain electrical signal independent component extraction method based on convolution blind source separation. The brain electrical signal independent component extraction method based on the convolution blind source separation includes concrete steps: building a brain electrical signal independent component extraction system based on the convolution blind source separation, which comprises an AD (analog to digital) sampling module, a short time Fourier transformation module, a frequency domain instantaneous blind source separation module, a sequence adjustment module and a short time inverse Fourier transformation module; using the AD sampling module to sample brain electrical signals; using the short time Fourier transformation module to transform the brain electrical signals from a time domain to a frequency domain; using the frequency domain instant blind source separation module to separate instantaneous mixing signals in the frequency domain; using the sequence adjustment module to perform sequence adjustment on independent components in a vector on each frequency domain segment; using the short time inverse Fourier transformation module to transform a frequency domain separation result into an independent component on the time domain. The brain electrical signal independent component extraction method based on the convolution blind source separation extracts the independent components of brain electrical signals based on a true convolution mixing model, uses a convolution blind source separation frequency domain algorithm, and is simple to achieve, good in separation effect, and low in calculation complexity.

Description

technical field [0001] The invention relates to a method for extracting independent components of electroencephalogram signals, in particular to a method for extracting independent components of electroencephalogram signals based on convolutional blind source separation. Background technique [0002] EEG signal feature extraction is one of the key steps in brain-computer interface. Separating independent components from multi-channel EEG signals, and then extracting feature signals from independent components is a widely used EEG feature extraction process. The EEG signal independent component extraction method models the multi-channel EEG mixing process, and performs blind source separation on the EEG mixed signal based on the model, and obtains multiple components that are statistically independent. At present, the extraction method of independent components of EEG signals is generally based on the instantaneous mixing model, that is, it is assumed that multi-channel EEG ...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/62
Inventor 廖平平张利剑
Owner BEIJING MECHANICAL EQUIP INST
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