废话不多说,来看看实例吧!
# -*- coding: utf-8 -*- import serial filename='yjy.txt' t = serial.Serial('COM5',57600) b=t.read(3) vaul=[] i=0 y=0 p=0 while b[0]!=170 or b[1]!=170 or b[2]!=4: b=t.read(3) print(b) if b[0]==b[1]==170 and b[2]==4: a=b+t.read(5) print(a) if a[0] == 170 and a[1]==170 and a[2]==4 and a[3]==128 and a[4]==2: while 1: i=i+1 # print(i) a=t.read(8) # print(a) sum=((0x80+0x02+a[5]+a[6])^0xffffffff)&0xff if a[0]==a[1]==170 and a[2]==32: y=1 else: y=0 if a[0] == 170 and a[1]==170 and a[2]==4 and a[3]==128 and a[4]==2: p=1 else: p=0 if sum!=a[7] and y!=1 and p!=1: print("wrroy1") b=t.read(3) c=b[0] d=b[1] e=b[2] print(b) while c!=170 or d!=170 or e!=4: c=d d=e e=t.read() print("c:") print(c) print("d:") print(d) print("e:") print(e) if c==(b'xaa'or 170) and d==(b'xaa'or 170) and e==b'x04': g=t.read(5) print(g) if c == b'xaa' and d==b'xaa' and e==b'x04' and g[0]==128 and g[1]==2: a=t.read(8) print(a) break # if a[0]==a[1]==170 and a[2]==4: # print(type(a)) if a[0] == 170 and a[1]==170 and a[2]==4 and a[3]==128 and a[4]==2: high=a[5] low=a[6] # print(a) rawdata=(high<<8)|low if rawdata>32768: rawdata=rawdata-65536 # vaul.append(rawdata) sum=((0x80+0x02+high+low)^0xffffffff)&0xff if sum==a[7]: vaul.append(rawdata) if sum!=a[7]: print("wrroy2") b=t.read(3) c=b[0] d=b[1] e=b[2] # print(b) while c!=170 or d!=170 or e!=4: c=d d=e e=t.read() if c==b'xaa' and d==b'xaa' and e==b'x04': g=t.read(5) print(g) if c == b'xaa' and d==b'xaa' and e==b'x04' and g[0]==128 and g[1]==2: a=t.read(8) print(a) break if a[0]==a[1]==170 and a[2]==32: c=a+t.read(28) print(vaul) print(len(vaul)) for v in vaul: w=0 if v<=102: w+=v q=w/len(vaul) q=str(q) with open(filename,'a') as file_object: file_object.write(q) file_object.write("n") if 102补充知识:Python处理脑电数据:PCA数据降维
pca.py
#!-coding:UTF-8- from numpy import * import numpy as np def loadDataSet(fileName, delim='t'): fr = open(fileName) stringArr = [line.strip().split(delim) for line in fr.readlines()] datArr = [map(float,line) for line in stringArr] return mat(datArr) def percentage2n(eigVals,percentage): sortArray=np.sort(eigVals) #升序 sortArray=sortArray[-1::-1] #逆转,即降序 arraySum=sum(sortArray) tmpSum=0 num=0 for i in sortArray: tmpSum+=i num+=1 if tmpSum>=arraySum*percentage: return num def pca(dataMat, topNfeat=9999999): meanVals = mean(dataMat, axis=0) meanRemoved = dataMat - meanVals #remove mean covMat = cov(meanRemoved, rowvar=0) eigVals,eigVects = linalg.eig(mat(covMat)) eigValInd = argsort(eigVals) #sort, sort goes smallest to largest eigValInd = eigValInd[:-(topNfeat+1):-1] #cut off unwanted dimensions redEigVects = eigVects[:,eigValInd] #reorganize eig vects largest to smallest lowData_N = meanRemoved * redEigVects#transform data into new dimensions reconMat_N = (lowData_N * redEigVects.T) + meanVals return lowData_N,reconMat_N def pcaPerc(dataMat, percentage=1): meanVals = mean(dataMat, axis=0) meanRemoved = dataMat - meanVals #remove mean covMat = cov(meanRemoved, rowvar=0) eigVals,eigVects = linalg.eig(mat(covMat)) eigValInd = argsort(eigVals) #sort, sort goes smallest to largest n=percentage2n(eigVals,percentage) n_eigValIndice=eigValInd[-1:-(n+1):-1] n_eigVect=eigVects[:,n_eigValIndice] lowData_P=meanRemoved*n_eigVect reconMat_P = (lowData_P * n_eigVect.T) + meanVals return lowData_P,reconMat_PreadData.py
import matplotlib.pyplot as plt from pylab import * import numpy as np import scipy.io as sio def loadData(filename,mName): load_fn = filename load_data = sio.loadmat(load_fn) load_matrix = load_data[mName] #load_matrix_row = load_matrix[0] #figure(mName) #plot(load_matrix,'r-') #show() #print type(load_data) #print type(load_matrix) #print load_matrix_row return load_matrixmain.py
#!-coding:UTF-8 import matplotlib.pyplot as plt from pylab import * import numpy as np import scipy.io as sio import pca from numpy import mat,matrix import scipy as sp import readData import pca if __name__ == '__main__': A1=readData.loadData('6electrodes.mat','A1') lowData_N, reconMat_N= pca.pca(A1,30) lowData_P, reconMat_P = pca.pcaPerc(A1,0.95) #print lowDMat #print reconMat print shape(lowData_N) print shape(reconMat_N) print shape(lowData_P) print shape(reconMat_P)以上这篇使用python接受tgam的脑波数据实例就是小编分享给大家的全部内容了,希望能给大家一个参考,也希望大家多多支持考高分网。
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