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Electroencephalogram feature selection approach based on decision-making tree

A feature selection method and EEG signal technology, applied in the field of EEG signal analysis, can solve the problems of complex manual operation, information deviation, time-consuming and labor-consuming, etc., and achieve the effect of simple operation, objective selection, and high classification accuracy

Active Publication Date: 2014-06-25
BEIJING UNIV OF TECH
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  • Application Information

AI Technical Summary

Problems solved by technology

This method has two disadvantages: (1) relying on subjective experience to select electrodes may easily cause information deviation; (2) manual operation is complicated, time-consuming and labor-intensive

Method used

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  • Electroencephalogram feature selection approach based on decision-making tree
  • Electroencephalogram feature selection approach based on decision-making tree
  • Electroencephalogram feature selection approach based on decision-making tree

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Embodiment Construction

[0027] The present invention will be further described below in conjunction with the accompanying drawings and specific embodiments.

[0028] The flowchart of the method involved in the present invention is as figure 1 shown, including the following steps:

[0029] Step 1, collect data.

[0030] Apply the method of the present invention to the BCI2003 competition standard data set Data Set Ia. Data were collected from one healthy subject. The subject's experimental task was to move the cursor on the screen up and down through imagination, and the component induced by imagination was low-frequency cortical slow potential (Slow Cortical Potential, SCP), and his cortical potential was recorded by the Cz electrode. Each experiment lasted 6 seconds. Within 0.5s to 6s, there is a high-brightness indicator bar above or below the computer screen, implying that the subject needs to move the cursor in the middle of the screen up or down. The moving rule is: when the SCP is positive,...

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Abstract

The invention relates to an electroencephalogram feature selection approach based on a decision-making tree. Firstly, collected multi-channel electroencephalograms are preprocessed; secondly, feature extraction is conducted on the preprocessed electroencephalograms by means of the principal component analysis method to obtain feature vectors; thirdly, the feature vectors obtained after the step of feature extraction is conducted are input into the decision-making tree, and superior feature selection is conducted; fourthly, superior features selected by the decision-making tree are reassembled; finally, the reassembled superior feature vectors are input into a support vector machine, and electroencephalogram classification is conducted to obtain the classification correct rate. According to the electroencephalogram feature selection approach, the decision-making tree is used for superior feature selection, operation is simple, manual participation is not needed, and time and labor are saved. The decision-making tree is used for superior feature selection, so that influence of subjective factors of people is avoided in a selection process, selection is more objective, and the classification correct rate is higher. Experiments show that the average accuracy is 89.1% by using the approach to conduct electroencephalogram classification and is increased by 0.9% compared with a traditional superior electrode reassembling method.

Description

technical field [0001] The invention relates to a method for analyzing electroencephalogram signals in electroencephalogram research, in particular to a method for selecting features of electroencephalogram signals. Background technique [0002] The human brain is a very complex system. Electroencephalograph (EEG) is the discharge activity of brain neuron cells collected through scalp-covered electrodes and conductive media, and contains a large amount of information that characterizes the physiological and psychological state of the human body. The study of EEG signals is one of the most cutting-edge fields in today's scientific research, involving the acquisition, preprocessing, processing and application of EEG signals, etc. Research in many fields such as pathophysiology, information and signal processing, computer science, biotechnology, biomedical engineering and even applied mathematics plays an extremely important role. With the increasing popularity of brain scienc...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): A61B5/0476
CPCA61B5/7267G06N20/00G16H50/70A61B5/316A61B5/378A61B5/369A61B5/377A61B5/291
Inventor 段立娟葛卉周海燕乔元华马伟苗军
Owner BEIJING UNIV OF TECH
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