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En este tutorial, vamos a entrenar un modelo MobileNetV2 TensorFlow con Keras para poder aplicarlo a nuestro problema. Después podremos usarlo en tiempo real para clasificar nuevas imágenes.

Para este tutorial, asumimos que has seguido los tutoriales anteriores: uso de un modelo TensorFlow y preparación de una base de datos para el entrenamiento.

N.B.: No he encontrado el método adecuado para entrenar el modelo mobilenetV2 ssd, tal cual, con tensorflow. Así que he cambiado a Yolo. Si usted tiene el método correcto, no dude en dejar un comentario.

Recuperación de una base de datos de imágenes

Descárgate una de las muchas bases de datos de imágenes, como la de gatos y perros, o crea la tuya propia.

Descomprima la carpeta en Tensorflow>data

Formación de modelos

Para entrenar el modelo, puede utilizar el siguiente script:

  • cargar y ampliar la base de datos
  • crear un modelo a partir del modelo MobileNetV2(base_model)
  • impulsar nuevas ganancias en el modelo
  • afinar las ganancias del modelo_base
import matplotlib.pyplot as plt
import numpy as np
import os
import tensorflow as tf

#_URL = 'https://storage.googleapis.com/mledu-datasets/cats_and_dogs_filtered.zip'
#path_to_zip = tf.keras.utils.get_file('cats_and_dogs.zip', origin=_URL, extract=True)
#PATH = os.path.join(os.path.dirname(path_to_zip), 'cats_and_dogs_filtered')

PATH="./data/cats_and_dogs_filtered"
train_dir = os.path.join(PATH, 'train')
validation_dir = os.path.join(PATH, 'validation')

BATCH_SIZE = 32
IMG_SIZE = (160, 160)

#create train and validation sets
train_dataset = tf.keras.utils.image_dataset_from_directory(train_dir,
                                                            shuffle=True,
                                                            batch_size=BATCH_SIZE,
                                                            image_size=IMG_SIZE)

validation_dataset = tf.keras.utils.image_dataset_from_directory(validation_dir,
                                                                 shuffle=True,
                                                                 batch_size=BATCH_SIZE,
                                                                 image_size=IMG_SIZE)

class_names = train_dataset.class_names

plt.figure(figsize=(10, 10))
for images, labels in train_dataset.take(1):
  for i in range(9):
    ax = plt.subplot(3, 3, i + 1)
    plt.imshow(images[i].numpy().astype("uint8"))
    plt.title(class_names[labels[i]])
    plt.axis("off")

val_batches = tf.data.experimental.cardinality(validation_dataset)
test_dataset = validation_dataset.take(val_batches // 5)
validation_dataset = validation_dataset.skip(val_batches // 5)

print('Number of validation batches: %d' % tf.data.experimental.cardinality(validation_dataset))
print('Number of test batches: %d' % tf.data.experimental.cardinality(test_dataset))


#configure performance
AUTOTUNE = tf.data.AUTOTUNE
train_dataset = train_dataset.prefetch(buffer_size=AUTOTUNE)
validation_dataset = validation_dataset.prefetch(buffer_size=AUTOTUNE)
test_dataset = test_dataset.prefetch(buffer_size=AUTOTUNE)

#augmented data (usefull for small data sets)
data_augmentation = tf.keras.Sequential([
  tf.keras.layers.RandomFlip('horizontal'),
  tf.keras.layers.RandomRotation(0.2),
])

for image, _ in train_dataset.take(1):
  plt.figure(figsize=(10, 10))
  first_image = image[0]
  for i in range(9):
    ax = plt.subplot(3, 3, i + 1)
    augmented_image = data_augmentation(tf.expand_dims(first_image, 0))
    plt.imshow(augmented_image[0] / 255)
    plt.axis('off')


preprocess_input = tf.keras.applications.mobilenet_v2.preprocess_input
rescale = tf.keras.layers.Rescaling(1./127.5, offset=-1)


# Create the base model from the pre-trained model MobileNet V2
IMG_SHAPE = IMG_SIZE + (3,)
base_model = tf.keras.applications.MobileNetV2(input_shape=IMG_SHAPE,
                                               include_top=False,
                                               weights='imagenet')

#or load your own
#base_model= tf.saved_model.load("./pretrained_models/ssd_mobilenet_v2_320x320_coco17_tpu-8/saved_model")

                                               
image_batch, label_batch = next(iter(train_dataset))
feature_batch = base_model(image_batch)
print(feature_batch.shape)

base_model.trainable = False
base_model.summary()

#classification header
global_average_layer = tf.keras.layers.GlobalAveragePooling2D()
feature_batch_average = global_average_layer(feature_batch)
print(feature_batch_average.shape)

prediction_layer = tf.keras.layers.Dense(1)
prediction_batch = prediction_layer(feature_batch_average)
print(prediction_batch.shape)


#create new neural network based on MobileNet
inputs = tf.keras.Input(shape=(160, 160, 3))
x = data_augmentation(inputs)
x = preprocess_input(x)
x = base_model(x, training=False)
x = global_average_layer(x)
x = tf.keras.layers.Dropout(0.2)(x)
outputs = prediction_layer(x)
model = tf.keras.Model(inputs, outputs)

base_learning_rate = 0.0001
model.compile(optimizer=tf.keras.optimizers.Adam(learning_rate=base_learning_rate),
              loss=tf.keras.losses.BinaryCrossentropy(from_logits=True),
              metrics=['accuracy'])

initial_epochs = 10

loss0, accuracy0 = model.evaluate(validation_dataset)
print("initial loss: {:.2f}".format(loss0))
print("initial accuracy: {:.2f}".format(accuracy0))

history = model.fit(train_dataset,
                    epochs=initial_epochs,
                    validation_data=validation_dataset)


#plot learning curves
acc = history.history['accuracy']
val_acc = history.history['val_accuracy']

loss = history.history['loss']
val_loss = history.history['val_loss']

plt.figure(figsize=(8, 8))
plt.subplot(2, 1, 1)
plt.plot(acc, label='Training Accuracy')
plt.plot(val_acc, label='Validation Accuracy')
plt.legend(loc='lower right')
plt.ylabel('Accuracy')
plt.ylim([min(plt.ylim()),1])
plt.title('Training and Validation Accuracy')

plt.subplot(2, 1, 2)
plt.plot(loss, label='Training Loss')
plt.plot(val_loss, label='Validation Loss')
plt.legend(loc='upper right')
plt.ylabel('Cross Entropy')
plt.ylim([0,1.0])
plt.title('Training and Validation Loss')
plt.xlabel('epoch')
plt.show()


#fine tuning
base_model.trainable = True
# Let's take a look to see how many layers are in the base model
print("Number of layers in the base model: ", len(base_model.layers))

# Fine-tune from this layer onwards
fine_tune_at = 100

# Freeze all the layers before the `fine_tune_at` layer
for layer in base_model.layers[:fine_tune_at]:
  layer.trainable = False

model.compile(loss=tf.keras.losses.BinaryCrossentropy(from_logits=True),
              optimizer = tf.keras.optimizers.RMSprop(learning_rate=base_learning_rate/10),
              metrics=['accuracy'])

model.summary()
fine_tune_epochs = 10
total_epochs =  initial_epochs + fine_tune_epochs

history_fine = model.fit(train_dataset,
                         epochs=total_epochs,
                         initial_epoch=history.epoch[-1],
                         validation_data=validation_dataset)

#plot fine learning curves
acc += history_fine.history['accuracy']
val_acc += history_fine.history['val_accuracy']

loss += history_fine.history['loss']
val_loss += history_fine.history['val_loss']

plt.figure(figsize=(8, 8))
plt.subplot(2, 1, 1)
plt.plot(acc, label='Training Accuracy')
plt.plot(val_acc, label='Validation Accuracy')
plt.ylim([0.8, 1])
plt.plot([initial_epochs-1,initial_epochs-1],
          plt.ylim(), label='Start Fine Tuning')
plt.legend(loc='lower right')
plt.title('Training and Validation Accuracy')

plt.subplot(2, 1, 2)
plt.plot(loss, label='Training Loss')
plt.plot(val_loss, label='Validation Loss')
plt.ylim([0, 1.0])
plt.plot([initial_epochs-1,initial_epochs-1],
         plt.ylim(), label='Start Fine Tuning')
plt.legend(loc='upper right')
plt.title('Training and Validation Loss')
plt.xlabel('epoch')
plt.show()


#evaluate
loss, accuracy = model.evaluate(test_dataset)
print('Test accuracy :', accuracy)

model.save('saved_models/my_model')

Utilización del modelo entrenado

Puede utilizar el modelo entrenado para clasificar nuevas imágenes que contengan un único tipo de objeto por imagen. Para ello, basta con cargar el modelo previamente guardado (saved_models

#!/usr/bin/env python
# -*- coding: utf-8 -*-
#
#  ObjectRecognitionTFVideo.py
#  Description:
#		Use ModelNetV2-SSD model to detect objects on video
#
#  www.aranacorp.com

# import packages
import sys
from imutils.video import VideoStream
from imutils.video import FPS
import numpy as np
import argparse
import imutils
import time
import cv2
import tensorflow as tf
from PIL import Image

# load model from path
#model= tf.saved_model.load("./pretrained_models/ssd_mobilenet_v2_320x320_coco17_tpu-8/saved_model")
model= tf.saved_model.load("./saved_models/my_model")
#model.summary()

print("model loaded")

#load class names
#category_index = label_map_util.create_category_index_from_labelmap(PATH_TO_LABELS,use_display_name=True)
def read_label_map(label_map_path):

    item_id = None
    item_name = None
    items = {}
    
    with open(label_map_path, "r") as file:
        for line in file:
            line.replace(" ", "")
            if line == "item{":
                pass
            elif line == "}":
                pass
            elif "id" in line:
                item_id = int(line.split(":", 1)[1].strip())
            elif "display_name" in line: #elif "name" in line:
                item_name = line.split(":", 1)[1].replace("'", "").strip()

            if item_id is not None and item_name is not None:
                #items[item_name] = item_id
                items[item_id] = item_name
                item_id = None
                item_name = None

    return items

#class_names=read_label_map("./pretrained_models/ssd_mobilenet_v2_320x320_coco17_tpu-8/mscoco_label_map.pbtxt")
class_names = read_label_map("./saved_models/label_map.pbtxt")
class_names = list(class_names.values()) #convert to list
class_colors = np.random.uniform(0, 255, size=(len(class_names), 3))
print(class_names)

if __name__ == '__main__':

	# Open image
	#img= cv2.imread('./data/cats_and_dogs_filtered/train/cats/cat.1.jpg') #from image file
	img= cv2.imread('./data/cats_and_dogs_filtered/train/dogs/dog.1.jpg') #from image file
	img = cv2.resize(img,(160,160))
	img = cv2.cvtColor(img, cv2.COLOR_BGR2RGB)

	#input_tensor = np.expand_dims(img, 0)
	input_tensor = tf.convert_to_tensor(np.expand_dims(img, 0), dtype=tf.float32)

	# predict from model
	resp = model(input_tensor)
	print("resp: ",resp)
	score= tf.nn.sigmoid(resp).numpy()[0][0]*100
	cls = int(score>0.5)
	print("classId: ",int(cls))
	print("score: ",score)
	print("score: ",tf.nn.sigmoid(tf.nn.sigmoid(resp)))
	
			
	# write classname for bounding box
	cls=int(cls) #convert tensor to index
	label = "{}".format(class_names[cls])
	img = cv2.resize(img,(640,640))	
	cv2.putText(img, label, (5, 20), cv2.FONT_HERSHEY_SIMPLEX, 0.5, class_colors[cls], 2)
		
	# Show frame
	cv2.imshow("Frame", img)
	cv2.waitKey(0)



Aplicaciones

  • reconocer las distintas razas de animales
  • reconocimiento de distintos tipos de objetos, como tarjetas electrónicas

Otros modelos de clasificación a tener en cuenta

  • vgg16
  • vgg19
  • resnet50
  • resnet101
  • resnet152
  • densenet121
  • densenet169
  • densenet201
  • inceptionresnetv2
  • inceptionv3
  • mobilenet
  • mobilenetv2
  • nasnetlarge
  • nasnetmóvil
  • xcepción

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