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Individual Project #1 implementation; s444523

A Convoultional Neural Network classyfing customers plates into three categories. Documentation inside s444523.rar
This commit is contained in:
Weronika Skowrońska 2020-04-30 07:42:18 +00:00
parent 08def183f7
commit 74e6baecfa
3 changed files with 47 additions and 13 deletions

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@ -8,10 +8,37 @@ import math
# For CNN:
import keras
from keras.models import load_model
from keras.preprocessing import image
from keras.models import Sequential
from keras.layers import Convolution2D
from keras.layers import MaxPooling2D
from keras.layers import Flatten
from keras.layers import Dense
saved_model = load_model('s444523/best_model.h5')
#initializing:
classifier = Sequential()
#Convolution:
classifier.add(Convolution2D(32, (3, 3), input_shape =(256, 256, 3), activation = "relu"))
#Pooling:
classifier.add(MaxPooling2D(pool_size = (2,2)))
# Adding a second convolutional layer
classifier.add(Convolution2D(32, 3, 3, activation = 'relu'))
classifier.add(MaxPooling2D(pool_size = (2, 2)))
#Flattening:
classifier.add(Flatten())
#Fully connected layers::
classifier.add(Dense(units = 128, activation = "relu"))
classifier.add(Dense(units = 3, activation = "softmax"))
# loading weigjts:
classifier.load_weights('s444523/best_model_weights2.h5')
#Making CNN:
classifier.compile(optimizer = "adam", loss = "categorical_crossentropy", metrics = ["accuracy"])
########################
### WS ###
@ -53,7 +80,10 @@ class Table:
# The finction "state of meal" chooses a photo of a plate at the given table.
def state_of_meal(self):
num = np.random.randint(1, 102)
## !!!!!!###
num = np.random.randint(67, 100)
## !!!!!!###
if num<=67:
img_name = 'plates/{}.png'.format(num)
else:
@ -121,15 +151,19 @@ class Agent:
def check_plates(self, table_number):
table = self.define_table(table_number)
plate = table.state_of_meal()
clean_plate = image.load_img(plate, target_size = (256, 256))
clean_plate = image.img_to_array(clean_plate)
clean_plate = np.expand_dims(clean_plate, axis = 0)
result = saved_model.predict(clean_plate)[0]
for i, x in enumerate (result):
if x:
pred_class = i
table.change_state(pred_class)
plate= image.load_img(plate, target_size = (256, 256))
plate = image.img_to_array(plate)
plate = np.expand_dims(plate, axis = 0)
result = classifier.predict(plate)[0]
print (result)
if result[1] == 1:
result[1] = 0
x = int(input("Excuse me, have You done eating? 1=Yes, 2 = No \n"))
result[x] = 1
for i, x in enumerate(result):
if result[i] == 1:
table.change_state(i)
########################
### /WS ###
########################
@ -327,7 +361,7 @@ while not done:
# After each fool loop, we can quit the program:.
if len(destination_tables) == 0:
play_again = 1
play_again = int(input("Exit? 0=No, 1=Yes"))
play_again = int(input("Exit? 0=No, 1=Yes \n"))
if play_again:
pygame.quit()