The invention relates to a method for extracting and fusing time, frequency and space domain multi-parameter electroencephalogram characters, which comprises the following steps: 1) collecting an electroencephalogram
signal; 2) performing data pre-
processing on the electroencephalogram
signal; 3) extracting Kc complexity,
approximate entropy and
wavelet entropy from the pre-processed data; 4) on the basis of AMUSE
algorithm, acquiring an electroencephalogram
singular value decomposition matrix parameter; 5) performing character selection on the time, frequency and space domain character parameters for the extracted Kc complexity,
approximate entropy,
wavelet entropy and electroencephalogram
singular value decomposition matrix parameters; 6) utilizing a
SVM classifier to fuse and classify the four parameters of the time, frequency and space domains after the character selection. According to the method provided by the invention, the Kc complexity, the
approximate entropy, the
wavelet entropy and the electroencephalogram
singular value decomposition matrix parameter can be selected for comprehensively presenting electroencephalogram character information, and then subsequent effective fusion is performed, so that effective support and help can be supplied to early diagnosis assessment for the brain functional disordered diseases, such as, Alzheimer
disease, mild
cognitive impairment, and the like.