第二处改动是添加了正则化,在Conv2D和Dense Layer中均有添加,可以抑制模型过拟合,提升val_acc
第三处改动是对模型训练五次进行acc取平均值,因为keras训练模型会有准确率波动,详细代码见文末链接
This tutorial demonstrates training a simple Convolutional Neural Network (CNN) to classify CIFAR images. Because this tutorial uses the Keras Sequential API, creating and training your model will take just a few lines of code.
import tensorflow as tf
?
from tensorflow.keras import datasets, layers, models
import matplotlib.pyplot as plt
The CIFAR10 dataset contains 60,000 color images in 10 classes, with 6,000 images in each class. The dataset is divided into 50,000 training images and 10,000 testing images. The classes are mutually exclusive and there is no overlap between them.
(train_images, train_labels), (test_images, test_labels) = datasets.cifar10.load_data()
?
# Normalize pixel values to be between 0 and 1
train_images, test_images = train_images / 255.0, test_images / 255.0
To verify that the dataset looks correct, let‘s plot the first 25 images from the training set and display the class name below each image:
class_names = [‘airplane‘, ‘automobile‘, ‘bird‘, ‘cat‘, ‘deer‘,
‘dog‘, ‘frog‘, ‘horse‘, ‘ship‘, ‘truck‘]
?
plt.figure(figsize=(10,10))
for i in range(25):
plt.subplot(5,5,i+1)
plt.xticks([])
plt.yticks([])
plt.grid(False)
plt.imshow(train_images[i])
# The CIFAR labels happen to be arrays,
# which is why you need the extra index
plt.xlabel(class_names[train_labels[i][0]])
plt.show()
The 6 lines of code below define the convolutional base using a common pattern: a stack of Conv2D and MaxPooling2D layers.
As input, a CNN takes tensors of shape (image_height, image_width, color_channels), ignoring the batch size. If you are new to these dimensions, color_channels refers to (R,G,B). In this example, you will configure your CNN to process inputs of shape (32, 32, 3), which is the format of CIFAR images. You can do this by passing the argument input_shape to your first layer.
model = models.Sequential()
model.add(layers.Conv2D(32, (3, 3), activation=‘relu‘, input_shape=(32, 32, 3)))
model.add(layers.MaxPooling2D((2, 2)))
model.add(layers.Conv2D(64, (3, 3), activation=‘relu‘))
model.add(layers.MaxPooling2D((2, 2)))
model.add(layers.Conv2D(64, (3, 3), activation=‘relu‘))
Let‘s display the architecture of your model so far:
model.summary()
Above, you can see that the output of every Conv2D and MaxPooling2D layer is a 3D tensor of shape (height, width, channels). The width and height dimensions tend to shrink as you go deeper in the network. The number of output channels for each Conv2D layer is controlled by the first argument (e.g., 32 or 64). Typically, as the width and height shrink, you can afford (computationally) to add more output channels in each Conv2D layer.
To complete the model, you will feed the last output tensor from the convolutional base (of shape (4, 4, 64)) into one or more Dense layers to perform classification. Dense layers take vectors as input (which are 1D), while the current output is a 3D tensor. First, you will flatten (or unroll) the 3D output to 1D, then add one or more Dense layers on top. CIFAR has 10 output classes, so you use a final Dense layer with 10 outputs.
model.add(layers.Flatten())
model.add(layers.Dense(64, activation=‘relu‘))
model.add(layers.Dense(10))
Here‘s the complete architecture of your model:
model.summary()
The network summary shows that (4, 4, 64) outputs were flattened into vectors of shape (1024) before going through two Dense layers.
model.compile(optimizer=‘adam‘,
loss=tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True),
metrics=[‘accuracy‘])
?
history = model.fit(train_images, train_labels, epochs=10,
validation_data=(test_images, test_labels))
plt.plot(history.history[‘accuracy‘], label=‘accuracy‘)
plt.plot(history.history[‘val_accuracy‘], label = ‘val_accuracy‘)
plt.xlabel(‘Epoch‘)
plt.ylabel(‘Accuracy‘)
plt.ylim([0.5, 1])
plt.legend(loc=‘lower right‘)
?
test_loss, test_acc = model.evaluate(test_images, test_labels, verbose=2)
print(test_acc)
代码链接:
Convolutional Neural Network (CNN)
原文:https://www.cnblogs.com/XianxinMao/p/15087329.html