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helper.py
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helper.py
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import os
from keras.models import load_model
from keras.preprocessing import image
import numpy as np
from keras.applications.resnet50 import preprocess_input, decode_predictions
from glob import glob
import tensorflow as tf
from keras.backend.tensorflow_backend import set_session
from keras.applications.resnet50 import ResNet50, preprocess_input
#from cv2 import cvtColor,CascadeClassifier,COLOR_BGR2GRAY,imread
'''
Flask uses multiple threads. The problem you are running into is because the tensorflow model is not loaded and used in the same thread. One workaround is to force tensorflow to use the gloabl default graph .
'''
class DogModel:
model = None
graph = None
def __init__(self):
self.model = load_model('./model/model_Resnet50_final.h5')
#self.face_cascade = CascadeClassifier('./haarcascades/haarcascade_frontalface_alt.xml')
self.resnet50_model_include_top_false =ResNet50(weights='imagenet', include_top=False)
self.resnet50_model =ResNet50(weights='imagenet')
self.graph = tf.get_default_graph()
self.dog_names=['Affenpinscher',
'Afghan_hound',
'Airedale_terrier',
'Akita',
'Alaskan_malamute',
'American_eskimo_dog',
'American_foxhound',
'American_staffordshire_terrier',
'American_water_spaniel',
'Anatolian_shepherd_dog',
'Australian_cattle_dog',
'Australian_shepherd',
'Australian_terrier',
'Basenji',
'Basset_hound',
'Beagle',
'Bearded_collie',
'Beauceron',
'Bedlington_terrier',
'Belgian_malinois',
'Belgian_sheepdog',
'Belgian_tervuren',
'Bernese_mountain_dog',
'Bichon_frise',
'Black_and_tan_coonhound',
'Black_russian_terrier',
'Bloodhound',
'Bluetick_coonhound',
'Border_collie',
'Border_terrier',
'Borzoi',
'Boston_terrier',
'Bouvier_des_flandres',
'Boxer',
'Boykin_spaniel',
'Briard',
'Brittany',
'Brussels_griffon',
'Bull_terrier',
'Bulldog',
'Bullmastiff',
'Cairn_terrier',
'Canaan_dog',
'Cane_corso',
'Cardigan_welsh_corgi',
'Cavalier_king_charles_spaniel',
'Chesapeake_bay_retriever',
'Chihuahua',
'Chinese_crested',
'Chinese_shar-pei',
'Chow_chow',
'Clumber_spaniel',
'Cocker_spaniel',
'Collie',
'Curly-coated_retriever',
'Dachshund',
'Dalmatian',
'Dandie_dinmont_terrier',
'Doberman_pinscher',
'Dogue_de_bordeaux',
'English_cocker_spaniel',
'English_setter',
'English_springer_spaniel',
'English_toy_spaniel',
'Entlebucher_mountain_dog',
'Field_spaniel',
'Finnish_spitz',
'Flat-coated_retriever',
'French_bulldog',
'German_pinscher',
'German_shepherd_dog',
'German_shorthaired_pointer',
'German_wirehaired_pointer',
'Giant_schnauzer',
'Glen_of_imaal_terrier',
'Golden_retriever',
'Gordon_setter',
'Great_dane',
'Great_pyrenees',
'Greater_swiss_mountain_dog',
'Greyhound',
'Havanese',
'Ibizan_hound',
'Icelandic_sheepdog',
'Irish_red_and_white_setter',
'Irish_setter',
'Irish_terrier',
'Irish_water_spaniel',
'Irish_wolfhound',
'Italian_greyhound',
'Japanese_chin',
'Keeshond',
'Kerry_blue_terrier',
'Komondor',
'Kuvasz',
'Labrador_retriever',
'Lakeland_terrier',
'Leonberger',
'Lhasa_apso',
'Lowchen',
'Maltese',
'Manchester_terrier',
'Mastiff',
'Miniature_schnauzer',
'Neapolitan_mastiff',
'Newfoundland',
'Norfolk_terrier',
'Norwegian_buhund',
'Norwegian_elkhound',
'Norwegian_lundehund',
'Norwich_terrier',
'Nova_scotia_duck_tolling_retriever',
'Old_english_sheepdog',
'Otterhound',
'Papillon',
'Parson_russell_terrier',
'Pekingese',
'Pembroke_welsh_corgi',
'Petit_basset_griffon_vendeen',
'Pharaoh_hound',
'Plott',
'Pointer',
'Pomeranian',
'Poodle',
'Portuguese_water_dog',
'Saint_bernard',
'Silky_terrier',
'Smooth_fox_terrier',
'Tibetan_mastiff',
'Welsh_springer_spaniel',
'Wirehaired_pointing_griffon',
'Xoloitzcuintli',
'Yorkshire_terrier']
def predict(self,img_path):
img = self.path_to_tensor(img_path)
with self.graph.as_default():
# extract bottleneck features
bottleneck_feature = self.resnet50_model_include_top_false.predict(preprocess_input(img))
# obtain predicted vector
predicted_vector = self.model.predict(bottleneck_feature)
return self.dog_names[np.argmax(predicted_vector)]
result = np.where(predicted_vector == np.amax(predicted_vector))
retVal = []
for x in result:
retVal.append(self.dog_names[x[0]])
return retVal
def path_to_tensor(self,img_path):
# loads RGB image as PIL.Image.Image type
img = image.load_img(img_path, target_size=(224, 224))
# convert PIL.Image.Image type to 3D tensor with shape (224, 224, 3)
x = image.img_to_array(img)
# convert 3D tensor to 4D tensor with shape (1, 224, 224, 3) and return 4D tensor
return np.expand_dims(x, axis=0)
# returns "True" if face is detected in image stored at img_path
def face_detector(self,img_path):
return False
# img = imread(img_path)
# gray = cvtColor(img, COLOR_BGR2GRAY)
# faces = self.face_cascade.detectMultiScale(gray)
# return len(faces) > 0
def ResNet50_predict_labels(self,img_path):
# returns prediction vector for image located at img_path
img = preprocess_input(self.path_to_tensor(img_path))
with self.graph.as_default():
return np.argmax(self.resnet50_model.predict(img))
def dog_detector(self,img_path):
prediction = self.ResNet50_predict_labels(img_path)
return ((prediction <= 268) & (prediction >= 151))
def detect_dog_human(self,img_path):
isDog = self.dog_detector(img_path)
if isDog:
retVal = ['Dog detected!', 'The predecited dog breed is : ',self.predict(img_path)]
return retVal
else:
isHuman = self.face_detector(img_path)
if isHuman:
#return the resembling dog breed
retVal = ['Face detected!', 'The resembling dog breed is : ',self.predict(img_path)]
return retVal
else:
return 0