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keras_for_juggling.py with line 9 changed
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import numpy as np, os, cv2 | |
from keras.utils import to_categorical | |
from keras.models import load_model | |
#reads images from folder (images must be labeled 0.png, 1.png, etc...) | |
def read_from_folder(folder, pattern, image_number, stop): | |
images = [] | |
while image_number < stop: | |
path = folder + pattern + '/casc (' + str(image_number-119)+ ').png' | |
img = cv2.imread(path, 0) | |
images.append(img) | |
image_number+=1 | |
return images | |
#flattens a list of images, returns an array range 0,1 | |
def flatten(dimData, images): | |
images = np.array(images) | |
images = images.reshape(len(images), dimData) | |
images = images.astype('float32') | |
images /=255 | |
return images | |
#-------------------get training data and training labels--------------- | |
train_start, train_stop = 120,800 #only 4GB RAM :( | |
test_start, test_stop = 800,1200 | |
folder = 'c:/users/thursday' | |
#the perprocessed images are stored in 5 folders | |
patterns = ['cascade', '423', 'columns', '2inlh', '2inrh'] | |
patterns = ['cascade'] | |
#Training Images | |
train_images = [] | |
for pattern in patterns: train_images += read_from_folder(folder, pattern, train_start, train_stop) | |
#image dimentions | |
h,w = train_images[0].shape | |
dimData = np.prod(h*w) | |
#list of images --> array of flattened iamges | |
train_data = flatten(dimData, train_images) | |
#make training_labels | |
train_labels = [] | |
for pattern in patterns: | |
for i in range(train_stop - train_start): train_labels.append(patterns.index(pattern)) | |
train_labels = np.array(train_labels) | |
# integer --> categorical data | |
train_labels_one_hot = to_categorical(train_labels) | |
#-----------------get testing data and testing labels------------------- | |
#Test images | |
test_images = [] | |
for pattern in patterns: test_images += read_from_folder(folder, pattern, test_start, test_stop) | |
#list of images --> array of flattened iamges | |
test_data = flatten(dimData, test_images) | |
#make test_labels | |
test_labels = [] | |
for pattern in patterns: | |
for i in range(test_stop - test_start): test_labels.append(patterns.index(pattern)) | |
test_labels = np.array(test_labels) | |
# integer --> categorical data | |
test_labels_one_hot = to_categorical(test_labels) | |
#------------------make keras model-------------------------------- | |
# Find the unique numbers from the train labels | |
classes = np.unique(train_labels) | |
nClasses = len(classes) | |
from keras.models import Sequential | |
from keras.layers import Dense | |
model = Sequential() | |
model.add(Dense(512, activation='relu', input_shape=(dimData,))) | |
model.add(Dense(512, activation='relu')) | |
model.add(Dense(nClasses, activation='softmax')) | |
model.compile(optimizer='rmsprop', loss='categorical_crossentropy', metrics=['accuracy']) | |
#fit model - this is where the magic happens | |
history = model.fit(train_data, train_labels_one_hot, batch_size=256, epochs=2, verbose=1, | |
validation_data=(test_data, test_labels_one_hot)) | |
#test model | |
[test_loss, test_acc] = model.evaluate(test_data, test_labels_one_hot) | |
print("Evaluation result on Test Data : Loss = {}, accuracy = {}".format(test_loss, test_acc)) | |
#save model | |
model.save('/home/stephen/Desktop/juggling/my_model.h5') |
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