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training_lstm_ctc .py
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training_lstm_ctc .py
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# -*- coding: utf-8 -*-
"""
Created on Mon Jul 16 22:37:44 2018
@author: yy
"""
import os,sys
import cv2
import numpy as np
from sklearn.model_selection import train_test_split
from keras.callbacks import Callback, EarlyStopping
# from keras.utils.visualize_util import plot
#from visual_callbacks import AccLossPlotter
#plotter = AccLossPlotter(graphs=['acc', 'loss'], save_graph=True, save_graph_path=sys.path[0])
from keras.preprocessing.image import ImageDataGenerator
from keras.optimizers import SGD, Adam
from keras.models import load_model
from keras import backend as K
from dataset_split import Dataset
from dataset_load_ctc import get_image_data_ctc
from model_gru_ctc import get_gru_ctc_model
from model_lstm_ctc import get_lstm_ctc_model
from model_cnn import get_cnn_model
#识别字符集
char_set = "0123456789abcdefghijklmnopqrstuvwxyzABCDEFGHIJKLMNOPQRSTUVWXYZ"
#定义识别字符串的最大长度
seq_len=8
#识别结果集合个数 0-9
label_count=len(char_set)+1
image_size = (128, 32)
IMAGE_HEIGHT = image_size[1]
IMAGE_WIDTH = image_size[0]
#CNN网络模型类
class Training_Predict:
def __init__(self):
self.base_model = None
self.ctc_model = None
self.conv_shape = None
#建立模型
def build_model(self):
#构建一个空的网络模型,它是一个线性堆叠模型,各神经网络层会被顺序添加,专业名称为序贯模型或线性堆叠模型
self.conv_shape, self.base_model, self.ctc_model = get_lstm_ctc_model(image_size, seq_len, label_count)
def predict(self):
file_list = []
X, Y = get_image_data_ctc('./img_data/ctc_test/', file_list)
y_pred = self.base_model.predict(X)
shape = y_pred[:, :, :].shape # 2:
out = K.get_value(K.ctc_decode(y_pred[:, :, :], input_length=np.ones(shape[0]) * shape[1])[0][0])[:,:seq_len] # 2:
print()
error_count=0
for i in range(len(X)):
print(file_list[i])
str_src = str(os.path.split(file_list[i])[-1]).split('.')[0].split('_')[-1]
print(out[i])
str_out = ''.join([str( char_set[x] ) for x in out[i] if x!=-1 ])
print(str_src, str_out)
if str_src!=str_out:
error_count+=1
print('This is a error image---------------------------:',error_count)
class LossHistory(Callback):
def on_train_begin(self, logs={}):
self.losses = []
def on_epoch_end(self, epoch, logs=None):
self.ctc_model.save_weights('ctc_model.w')
self.base_model.save_weights('base_model.w')
self.test()
def on_batch_end(self, batch, logs={}):
self.losses.append(logs.get('loss'))
#训练模型
def train(self, batch_size = 32, nb_epoch = 15, data_augmentation = False):
X,Y=get_image_data_ctc(dir='./img_data/ctc/')
print('train----------',X.shape,Y.shape)
conv_shape = self.conv_shape
maxin=2000
result=self.ctc_model.fit([X[:maxin], Y[:maxin], np.array(np.ones(len(X))*int(conv_shape[1]))[:maxin], np.array(np.ones(len(X))*seq_len)[:maxin]], Y[:maxin],
batch_size=20,
epochs=200,
callbacks=[ EarlyStopping(patience=10)], #checkpointer, history,history, plotter,
validation_data=([X[maxin:], Y[maxin:], np.array(np.ones(len(X))*int(conv_shape[1]))[maxin:], np.array(np.ones(len(X))*seq_len)[maxin:]], Y[maxin:]),
)
MODEL_PATH = './lstm.model.h5'
def save_model(self, file_path = MODEL_PATH):
self.base_model.save(file_path+'base')
self.ctc_model.save(file_path+'ctc')
def load_model(self, file_path = MODEL_PATH):
self.base_model = load_model(file_path)
def evaluate(self, dataset):
score = self.base_model.evaluate(dataset.test_images, dataset.test_labels, verbose = 1)
print("%s: %.2f%%" % (self.model.metrics_names[1], score[1] * 100))
if __name__ == '__main__':
#训练模型,这段代码不用,注释掉
model = Training_Predict()
model.build_model()
model.train()
model.save_model(file_path = './model/lstm_ctc_model.h5')
# model.load_model(file_path = './model/lstm_ctc_model.h5base')
model.predict()
'''
#评估模型
model = Model()
model.load_model(file_path = './model/lstm_ctc_model.h5')
model.evaluate(dataset)
'''