import brain_state_calculate as bsc import cpp_file_tools as cft file=["F:/data/r617/0620healthyOutput_1.txt","F:/data/r617/0620healthyOutput_2.txt","F:/data/r617/0620healthyOutput_3.txt"] my_bsc = bsc.brain_state_calculate(32) my_cft = cft.cpp_file_tools(32, 1) my_bsc.init_networks(file, my_cft) my_bsc.save_networks('', '0527') print 'END'
import numpy as np #In this script we train the kohonen network using another kohonen network #learning is totally unsupervised ##################### ###### START ###### from cpp_file_tools import cpp_file_tools dir_name = '../RT_classifier/BMIOutputs/0423_r600/' save_obj = False ext_img = '.png' save = True show = False files0423 = [1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14] my_bsc = bsc.brain_state_calculate(32, 'koho_RL', ext_img, save, show) my_cft = cpp_file_tools(32, 1, ext_img, save, show) my_bsc2 = bsc.brain_state_calculate(32, 'koho', ext_img, save, show) ##build one koho network and class obs with unsupervised learning l_res, l_obs = my_bsc.cft.convert_cpp_file(dir_name, 't_0423', files0423[0:5], False) #use training dataset (not working) # sp = signal_processing.Signal_processing() # l_obs = sp.load_m(dir_name+'trainSet140423.mat', 'BrainAct') l_obs_koho = my_bsc.cft.obs_classify_kohonen(l_obs) #build and train networks my_bsc.build_networks() my_bsc.simulated_annealing(l_obs, l_obs_koho, l_res, 0.10, 14, 0.95) my_bsc2.build_networks() my_bsc2.simulated_annealing(l_obs, l_obs_koho, l_res, 0.10, 14, 0.95)