Image Classification

In this project, you'll classify images from the CIFAR-10 dataset. The dataset consists of airplanes, dogs, cats, and other objects. You'll preprocess the images, then train a convolutional neural network on all the samples. The images need to be normalized and the labels need to be one-hot encoded. You'll get to apply what you learned and build a convolutional, max pooling, dropout, and fully connected layers. At the end, you'll get to see your neural network's predictions on the sample images.

Get the Data

Run the following cell to download the CIFAR-10 dataset for python.


In [1]:
"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
from urllib.request import urlretrieve
from os.path import isfile, isdir
from tqdm import tqdm
import problem_unittests as tests
import tarfile

cifar10_dataset_folder_path = 'cifar-10-batches-py'

class DLProgress(tqdm):
    last_block = 0

    def hook(self, block_num=1, block_size=1, total_size=None):
        self.total = total_size
        self.update((block_num - self.last_block) * block_size)
        self.last_block = block_num

if not isfile('cifar-10-python.tar.gz'):
    with DLProgress(unit='B', unit_scale=True, miniters=1, desc='CIFAR-10 Dataset') as pbar:
        urlretrieve(
            'https://www.cs.toronto.edu/~kriz/cifar-10-python.tar.gz',
            'cifar-10-python.tar.gz',
            pbar.hook)

if not isdir(cifar10_dataset_folder_path):
    with tarfile.open('cifar-10-python.tar.gz') as tar:
        tar.extractall()
        tar.close()


tests.test_folder_path(cifar10_dataset_folder_path)


All files found!

Explore the Data

The dataset is broken into batches to prevent your machine from running out of memory. The CIFAR-10 dataset consists of 5 batches, named data_batch_1, data_batch_2, etc.. Each batch contains the labels and images that are one of the following:

  • airplane
  • automobile
  • bird
  • cat
  • deer
  • dog
  • frog
  • horse
  • ship
  • truck

Understanding a dataset is part of making predictions on the data. Play around with the code cell below by changing the batch_id and sample_id. The batch_id is the id for a batch (1-5). The sample_id is the id for a image and label pair in the batch.

Ask yourself "What are all possible labels?", "What is the range of values for the image data?", "Are the labels in order or random?". Answers to questions like these will help you preprocess the data and end up with better predictions.


In [2]:
%matplotlib inline
%config InlineBackend.figure_format = 'retina'

import helper
import numpy as np

# Explore the dataset
batch_id = 1
sample_id = 5
helper.display_stats(cifar10_dataset_folder_path, batch_id, sample_id)


Stats of batch 1:
Samples: 10000
Label Counts: {0: 1005, 1: 974, 2: 1032, 3: 1016, 4: 999, 5: 937, 6: 1030, 7: 1001, 8: 1025, 9: 981}
First 20 Labels: [6, 9, 9, 4, 1, 1, 2, 7, 8, 3, 4, 7, 7, 2, 9, 9, 9, 3, 2, 6]

Example of Image 5:
Image - Min Value: 0 Max Value: 252
Image - Shape: (32, 32, 3)
Label - Label Id: 1 Name: automobile

Implement Preprocess Functions

Normalize

In the cell below, implement the normalize function to take in image data, x, and return it as a normalized Numpy array. The values should be in the range of 0 to 1, inclusive. The return object should be the same shape as x.


In [3]:
def normalize(x):
    """
    Normalize a list of sample image data in the range of 0 to 1
    : x: List of image data.  The image shape is (32, 32, 3)
    : return: Numpy array of normalize data
    """
    # TODO: Implement Function
    norm_x = np.array([pixel/255 for pixel in x])
    return norm_x


"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_normalize(normalize)


Tests Passed

One-hot encode

Just like the previous code cell, you'll be implementing a function for preprocessing. This time, you'll implement the one_hot_encode function. The input, x, are a list of labels. Implement the function to return the list of labels as One-Hot encoded Numpy array. The possible values for labels are 0 to 9. The one-hot encoding function should return the same encoding for each value between each call to one_hot_encode. Make sure to save the map of encodings outside the function.

Hint: Don't reinvent the wheel.


In [4]:
def one_hot_encode(x):
    """
    One hot encode a list of sample labels. Return a one-hot encoded vector for each label.
    : x: List of sample Labels
    : return: Numpy array of one-hot encoded labels
    """
    # TODO: Implement Function
    one_hot = np.zeros(shape=(len(x), 10))
    for idx in range(len(x)):
        for key in range(10):
            one_hot[idx][key] = (key == x[idx])
    return one_hot;


"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_one_hot_encode(one_hot_encode)


Tests Passed

Randomize Data

As you saw from exploring the data above, the order of the samples are randomized. It doesn't hurt to randomize it again, but you don't need to for this dataset.

Preprocess all the data and save it

Running the code cell below will preprocess all the CIFAR-10 data and save it to file. The code below also uses 10% of the training data for validation.


In [5]:
"""
DON'T MODIFY ANYTHING IN THIS CELL
"""
# Preprocess Training, Validation, and Testing Data
helper.preprocess_and_save_data(cifar10_dataset_folder_path, normalize, one_hot_encode)

Check Point

This is your first checkpoint. If you ever decide to come back to this notebook or have to restart the notebook, you can start from here. The preprocessed data has been saved to disk.


In [6]:
"""
DON'T MODIFY ANYTHING IN THIS CELL
"""
import pickle
import problem_unittests as tests
import helper

# Load the Preprocessed Validation data
valid_features, valid_labels = pickle.load(open('preprocess_validation.p', mode='rb'))

Build the network

For the neural network, you'll build each layer into a function. Most of the code you've seen has been outside of functions. To test your code more thoroughly, we require that you put each layer in a function. This allows us to give you better feedback and test for simple mistakes using our unittests before you submit your project.

If you're finding it hard to dedicate enough time for this course a week, we've provided a small shortcut to this part of the project. In the next couple of problems, you'll have the option to use TensorFlow Layers or TensorFlow Layers (contrib) to build each layer, except "Convolutional & Max Pooling" layer. TF Layers is similar to Keras's and TFLearn's abstraction to layers, so it's easy to pickup.

If you would like to get the most of this course, try to solve all the problems without TF Layers. Let's begin!

Input

The neural network needs to read the image data, one-hot encoded labels, and dropout keep probability. Implement the following functions

  • Implement neural_net_image_input
    • Return a TF Placeholder
    • Set the shape using image_shape with batch size set to None.
    • Name the TensorFlow placeholder "x" using the TensorFlow name parameter in the TF Placeholder.
  • Implement neural_net_label_input
    • Return a TF Placeholder
    • Set the shape using n_classes with batch size set to None.
    • Name the TensorFlow placeholder "y" using the TensorFlow name parameter in the TF Placeholder.
  • Implement neural_net_keep_prob_input
    • Return a TF Placeholder for dropout keep probability.
    • Name the TensorFlow placeholder "keep_prob" using the TensorFlow name parameter in the TF Placeholder.

These names will be used at the end of the project to load your saved model.

Note: None for shapes in TensorFlow allow for a dynamic size.


In [7]:
import tensorflow as tf

def neural_net_image_input(image_shape):
    """
    Return a Tensor for a bach of image input
    : image_shape: Shape of the images
    : return: Tensor for image input.
    """
    # TODO: Implement Functionb
    return tf.placeholder(tf.float32, shape=[None, image_shape[0], image_shape[1], image_shape[2]], name = 'x')


def neural_net_label_input(n_classes):
    """
    Return a Tensor for a batch of label input
    : n_classes: Number of classes
    : return: Tensor for label input.
    """
    # TODO: Implement Function
    return tf.placeholder(tf.float32, shape=[None, n_classes], name = 'y')


def neural_net_keep_prob_input():
    """
    Return a Tensor for keep probability
    : return: Tensor for keep probability.
    """
    # TODO: Implement Function
    return tf.placeholder(tf.float32, name = 'keep_prob')


"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tf.reset_default_graph()
tests.test_nn_image_inputs(neural_net_image_input)
tests.test_nn_label_inputs(neural_net_label_input)
tests.test_nn_keep_prob_inputs(neural_net_keep_prob_input)


Image Input Tests Passed.
Label Input Tests Passed.
Keep Prob Tests Passed.

Convolution and Max Pooling Layer

Convolution layers have a lot of success with images. For this code cell, you should implement the function conv2d_maxpool to apply convolution then max pooling:

  • Create the weight and bias using conv_ksize, conv_num_outputs and the shape of x_tensor.
  • Apply a convolution to x_tensor using weight and conv_strides.
    • We recommend you use same padding, but you're welcome to use any padding.
  • Add bias
  • Add a nonlinear activation to the convolution.
  • Apply Max Pooling using pool_ksize and pool_strides.
    • We recommend you use same padding, but you're welcome to use any padding.

Note: You can't use TensorFlow Layers or TensorFlow Layers (contrib) for this layer. You're free to use any TensorFlow package for all the other layers.


In [8]:
def conv2d_maxpool(x_tensor, conv_num_outputs, conv_ksize, conv_strides, pool_ksize, pool_strides):
    """
    Apply convolution then max pooling to x_tensor
    :param x_tensor: TensorFlow Tensor
    :param conv_num_outputs: Number of outputs for the convolutional layer
    :param conv_ksize: kernal size 2-D Tuple for the convolutional layer
    :param conv_strides: Stride 2-D Tuple for convolution
    :param pool_ksize: kernal size 2-D Tuple for pool
    :param pool_strides: Stride 2-D Tuple for pool
    : return: A tensor that represents convolution and max pooling of x_tensor
    """
    # TODO: Implement Function
    batch_size = x_tensor.get_shape().as_list()[-1]
    weight = tf.Variable(tf.random_normal([conv_ksize[0], conv_ksize[1], batch_size, conv_num_outputs], stddev=0.1))
    bias = tf.Variable(tf.zeros([conv_num_outputs]))
    
    layer1 = tf.nn.conv2d(x_tensor, weight, [1, conv_strides[0], conv_strides[1], 1], padding='SAME')
    layer2 = tf.nn.bias_add(layer1, bias)
    layer3 = tf.nn.relu(layer2)
    layer4 = tf.nn.max_pool(layer3, ksize=[1, pool_ksize[0], pool_ksize[1], 1],
                      strides=[1, pool_strides[0], pool_strides[1], 1],
                      padding='SAME')
    layer5 = tf.nn.lrn(layer4, 4, bias=1.0, alpha=0.001 / 9.0, beta=0.75)
    
    return layer5 


"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_con_pool(conv2d_maxpool)


Tests Passed

Flatten Layer

Implement the flatten function to change the dimension of x_tensor from a 4-D tensor to a 2-D tensor. The output should be the shape (Batch Size, Flattened Image Size). You can use TensorFlow Layers or TensorFlow Layers (contrib) for this layer.


In [9]:
def flatten(x_tensor):
    """
    Flatten x_tensor to (Batch Size, Flattened Image Size)
    : x_tensor: A tensor of size (Batch Size, ...), where ... are the image dimensions.
    : return: A tensor of size (Batch Size, Flattened Image Size).
    """
    # TODO: Implement Function
    return tf.contrib.layers.flatten(x_tensor)


"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_flatten(flatten)


Tests Passed

Fully-Connected Layer

Implement the fully_conn function to apply a fully connected layer to x_tensor with the shape (Batch Size, num_outputs). You can use TensorFlow Layers or TensorFlow Layers (contrib) for this layer.


In [10]:
def fully_conn(x_tensor, num_outputs):
    """
    Apply a fully connected layer to x_tensor using weight and bias
    : x_tensor: A 2-D tensor where the first dimension is batch size.
    : num_outputs: The number of output that the new tensor should be.
    : return: A 2-D tensor where the second dimension is num_outputs.
    """
    # TODO: Implement Function
    #fc = tf.contrib.layers.fully_connected(x_tensor, num_outputs, activation_fn=tf.nn.relu)
    weight = tf.Variable(tf.random_normal([x_tensor.shape.as_list()[1], num_outputs], stddev=0.1))
    bias = tf.Variable(tf.zeros([num_outputs]))
    fc = tf.nn.relu(tf.matmul(x_tensor, weight) + bias)
    return fc


"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_fully_conn(fully_conn)


Tests Passed

Output Layer

Implement the output function to apply a fully connected layer to x_tensor with the shape (Batch Size, num_outputs). You can use TensorFlow Layers or TensorFlow Layers (contrib) for this layer.

Note: Activation, softmax, or cross entropy shouldn't be applied to this.


In [11]:
def output(x_tensor, num_outputs):
    """
    Apply a output layer to x_tensor using weight and bias
    : x_tensor: A 2-D tensor where the first dimension is batch size.
    : num_outputs: The number of output that the new tensor should be.
    : return: A 2-D tensor where the second dimension is num_outputs.
    """
    # TODO: Implement Function
    #tf.contrib.layers.fully_connected(x_tensor, num_outputs, activation_fn=None)
    weight = tf.Variable(tf.random_normal([x_tensor.shape.as_list()[1], num_outputs], stddev=0.1))
    bias = tf.Variable(tf.zeros([num_outputs]))
    output = tf.matmul(x_tensor, weight) + bias
    return output

"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_output(output)


Tests Passed

Create Convolutional Model

Implement the function conv_net to create a convolutional neural network model. The function takes in a batch of images, x, and outputs logits. Use the layers you created above to create this model:

  • Apply 1, 2, or 3 Convolution and Max Pool layers
  • Apply a Flatten Layer
  • Apply 1, 2, or 3 Fully Connected Layers
  • Apply an Output Layer
  • Return the output
  • Apply TensorFlow's Dropout to one or more layers in the model using keep_prob.

In [12]:
def conv_net(x, keep_prob):
    """
    Create a convolutional neural network model
    : x: Placeholder tensor that holds image data.
    : keep_prob: Placeholder tensor that hold dropout keep probability.
    : return: Tensor that represents logits
    """
    # TODO: Apply 1, 2, or 3 Convolution and Max Pool layers
    #    Play around with different number of outputs, kernel size and stride
    # Function Definition from Above:
    #    conv2d_maxpool(x_tensor, conv_num_outputs, conv_ksize, conv_strides, pool_ksize, pool_strides)
    num_outputs = 10
    layer_conv1 = conv2d_maxpool(x_tensor=x, 
                            conv_num_outputs=10, 
                            conv_ksize=(3,3), conv_strides=(1,1), 
                            pool_ksize=(2,2), pool_strides=(2,2))
    layer_conv2 = conv2d_maxpool(x_tensor=layer_conv1, 
                            conv_num_outputs=10, 
                            conv_ksize=(3,3), conv_strides=(1,1), 
                            pool_ksize=(2,2), pool_strides=(2,2))
#    layer_conv3 = conv2d_maxpool(x_tensor=layer_conv2, 
#                            conv_num_outputs=10, 
#                            conv_ksize=(3,3), conv_strides=(1,1), 
#                            pool_ksize=(2,2), pool_strides=(2,2))

    # TODO: Apply a Flatten Layer
    # Function Definition from Above:
    #   flatten(x_tensor)
    layer_flatten = flatten(layer_conv2)

    # TODO: Apply 1, 2, or 3 Fully Connected Layers
    #    Play around with different number of outputs
    # Function Definition from Above:
    #   fully_conn(x_tensor, num_outputs)
    layer_fc1 = fully_conn(layer_flatten, num_outputs)
    layer_dropout = tf.nn.dropout(layer_fc1, keep_prob)
    
    # TODO: Apply an Output Layer
    #    Set this to the number of classes
    # Function Definition from Above:
    #   output(x_tensor, num_outputs)
    layer_output = output(layer_dropout, num_outputs)
    
    # TODO: return output
    return layer_output


"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""

##############################
## Build the Neural Network ##
##############################

# Remove previous weights, bias, inputs, etc..
tf.reset_default_graph()

# Inputs
x = neural_net_image_input((32, 32, 3))
y = neural_net_label_input(10)
keep_prob = neural_net_keep_prob_input()

# Model
logits = conv_net(x, keep_prob)

# Name logits Tensor, so that is can be loaded from disk after training
logits = tf.identity(logits, name='logits')

# Loss and Optimizer
cost = tf.reduce_mean(tf.nn.softmax_cross_entropy_with_logits(logits=logits, labels=y))
optimizer = tf.train.AdamOptimizer().minimize(cost)

# Accuracy
correct_pred = tf.equal(tf.argmax(logits, 1), tf.argmax(y, 1))
accuracy = tf.reduce_mean(tf.cast(correct_pred, tf.float32), name='accuracy')

tests.test_conv_net(conv_net)


Neural Network Built!

Train the Neural Network

Single Optimization

Implement the function train_neural_network to do a single optimization. The optimization should use optimizer to optimize in session with a feed_dict of the following:

  • x for image input
  • y for labels
  • keep_prob for keep probability for dropout

This function will be called for each batch, so tf.global_variables_initializer() has already been called.

Note: Nothing needs to be returned. This function is only optimizing the neural network.


In [13]:
def train_neural_network(session, optimizer, keep_probability, feature_batch, label_batch):
    """
    Optimize the session on a batch of images and labels
    : session: Current TensorFlow session
    : optimizer: TensorFlow optimizer function
    : keep_probability: keep probability
    : feature_batch: Batch of Numpy image data
    : label_batch: Batch of Numpy label data
    """
    # TODO: Implement Function
    session.run(optimizer, feed_dict={x: feature_batch, y: label_batch, keep_prob: keep_probability})


"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_train_nn(train_neural_network)


Tests Passed

Show Stats

Implement the function print_stats to print loss and validation accuracy. Use the global variables valid_features and valid_labels to calculate validation accuracy. Use a keep probability of 1.0 to calculate the loss and validation accuracy.


In [14]:
def print_stats(session, feature_batch, label_batch, cost, accuracy):
    """
    Print information about loss and validation accuracy
    : session: Current TensorFlow session
    : feature_batch: Batch of Numpy image data
    : label_batch: Batch of Numpy label data
    : cost: TensorFlow cost function
    : accuracy: TensorFlow accuracy function
    """
    # TODO: Implement Function
    loss = session.run(cost, feed_dict = {x: feature_batch,y: label_batch, keep_prob: 1.0})
    acc = session.run(accuracy,feed_dict = {x: valid_features, y: valid_labels, keep_prob: 1.0})
    print('loss:', loss, 'validation accuracy:', acc)

Hyperparameters

Tune the following parameters:

  • Set epochs to the number of iterations until the network stops learning or start overfitting
  • Set batch_size to the highest number that your machine has memory for. Most people set them to common sizes of memory:
    • 64
    • 128
    • 256
    • ...
  • Set keep_probability to the probability of keeping a node using dropout

In [15]:
# TODO: Tune Parameters
epochs = 30
batch_size = 64
keep_probability = 1.0

Train on a Single CIFAR-10 Batch

Instead of training the neural network on all the CIFAR-10 batches of data, let's use a single batch. This should save time while you iterate on the model to get a better accuracy. Once the final validation accuracy is 50% or greater, run the model on all the data in the next section.


In [16]:
"""
DON'T MODIFY ANYTHING IN THIS CELL
"""
print('Checking the Training on a Single Batch...')
with tf.Session() as sess:
    # Initializing the variables
    sess.run(tf.global_variables_initializer())
    
    # Training cycle
    for epoch in range(epochs):
        batch_i = 1
        for batch_features, batch_labels in helper.load_preprocess_training_batch(batch_i, batch_size):
            train_neural_network(sess, optimizer, keep_probability, batch_features, batch_labels)
        print('Epoch {:>2}, CIFAR-10 Batch {}:  '.format(epoch + 1, batch_i), end='')
        print_stats(sess, batch_features, batch_labels, cost, accuracy)


Checking the Training on a Single Batch...
Epoch  1, CIFAR-10 Batch 1:  loss: 2.23386 validation accuracy: 0.2424
Epoch  2, CIFAR-10 Batch 1:  loss: 2.24466 validation accuracy: 0.2494
Epoch  3, CIFAR-10 Batch 1:  loss: 2.13457 validation accuracy: 0.305
Epoch  4, CIFAR-10 Batch 1:  loss: 2.02976 validation accuracy: 0.3574
Epoch  5, CIFAR-10 Batch 1:  loss: 1.99183 validation accuracy: 0.3816
Epoch  6, CIFAR-10 Batch 1:  loss: 1.96538 validation accuracy: 0.3954
Epoch  7, CIFAR-10 Batch 1:  loss: 1.9496 validation accuracy: 0.4024
Epoch  8, CIFAR-10 Batch 1:  loss: 1.9531 validation accuracy: 0.414
Epoch  9, CIFAR-10 Batch 1:  loss: 1.96804 validation accuracy: 0.4168
Epoch 10, CIFAR-10 Batch 1:  loss: 1.96876 validation accuracy: 0.4198
Epoch 11, CIFAR-10 Batch 1:  loss: 1.96051 validation accuracy: 0.429
Epoch 12, CIFAR-10 Batch 1:  loss: 1.94198 validation accuracy: 0.4372
Epoch 13, CIFAR-10 Batch 1:  loss: 1.92992 validation accuracy: 0.444
Epoch 14, CIFAR-10 Batch 1:  loss: 1.92228 validation accuracy: 0.4472
Epoch 15, CIFAR-10 Batch 1:  loss: 1.90647 validation accuracy: 0.454
Epoch 16, CIFAR-10 Batch 1:  loss: 1.89025 validation accuracy: 0.4578
Epoch 17, CIFAR-10 Batch 1:  loss: 1.87355 validation accuracy: 0.4614
Epoch 18, CIFAR-10 Batch 1:  loss: 1.85844 validation accuracy: 0.4644
Epoch 19, CIFAR-10 Batch 1:  loss: 1.83961 validation accuracy: 0.4656
Epoch 20, CIFAR-10 Batch 1:  loss: 1.82662 validation accuracy: 0.4698
Epoch 21, CIFAR-10 Batch 1:  loss: 1.81044 validation accuracy: 0.471
Epoch 22, CIFAR-10 Batch 1:  loss: 1.79803 validation accuracy: 0.47
Epoch 23, CIFAR-10 Batch 1:  loss: 1.77864 validation accuracy: 0.4726
Epoch 24, CIFAR-10 Batch 1:  loss: 1.762 validation accuracy: 0.4768
Epoch 25, CIFAR-10 Batch 1:  loss: 1.74552 validation accuracy: 0.4772
Epoch 26, CIFAR-10 Batch 1:  loss: 1.72232 validation accuracy: 0.4798
Epoch 27, CIFAR-10 Batch 1:  loss: 1.70763 validation accuracy: 0.4806
Epoch 28, CIFAR-10 Batch 1:  loss: 1.69417 validation accuracy: 0.4832
Epoch 29, CIFAR-10 Batch 1:  loss: 1.67613 validation accuracy: 0.486
Epoch 30, CIFAR-10 Batch 1:  loss: 1.66081 validation accuracy: 0.4892

Fully Train the Model

Now that you got a good accuracy with a single CIFAR-10 batch, try it with all five batches.


In [17]:
"""
DON'T MODIFY ANYTHING IN THIS CELL
"""
save_model_path = './image_classification'

print('Training...')
with tf.Session() as sess:
    # Initializing the variables
    sess.run(tf.global_variables_initializer())
    
    # Training cycle
    for epoch in range(epochs):
        # Loop over all batches
        n_batches = 5
        for batch_i in range(1, n_batches + 1):
            for batch_features, batch_labels in helper.load_preprocess_training_batch(batch_i, batch_size):
                train_neural_network(sess, optimizer, keep_probability, batch_features, batch_labels)
            print('Epoch {:>2}, CIFAR-10 Batch {}:  '.format(epoch + 1, batch_i), end='')
            print_stats(sess, batch_features, batch_labels, cost, accuracy)
            
    # Save Model
    saver = tf.train.Saver()
    save_path = saver.save(sess, save_model_path)


Training...
Epoch  1, CIFAR-10 Batch 1:  loss: 2.26106 validation accuracy: 0.1766
Epoch  1, CIFAR-10 Batch 2:  loss: 2.03062 validation accuracy: 0.2962
Epoch  1, CIFAR-10 Batch 3:  loss: 1.66493 validation accuracy: 0.3372
Epoch  1, CIFAR-10 Batch 4:  loss: 1.63362 validation accuracy: 0.369
Epoch  1, CIFAR-10 Batch 5:  loss: 1.69192 validation accuracy: 0.4198
Epoch  2, CIFAR-10 Batch 1:  loss: 1.8753 validation accuracy: 0.4328
Epoch  2, CIFAR-10 Batch 2:  loss: 1.55011 validation accuracy: 0.445
Epoch  2, CIFAR-10 Batch 3:  loss: 1.30337 validation accuracy: 0.4528
Epoch  2, CIFAR-10 Batch 4:  loss: 1.4255 validation accuracy: 0.4776
Epoch  2, CIFAR-10 Batch 5:  loss: 1.5318 validation accuracy: 0.4826
Epoch  3, CIFAR-10 Batch 1:  loss: 1.7591 validation accuracy: 0.4892
Epoch  3, CIFAR-10 Batch 2:  loss: 1.41003 validation accuracy: 0.4904
Epoch  3, CIFAR-10 Batch 3:  loss: 1.20417 validation accuracy: 0.4986
Epoch  3, CIFAR-10 Batch 4:  loss: 1.3326 validation accuracy: 0.5082
Epoch  3, CIFAR-10 Batch 5:  loss: 1.44473 validation accuracy: 0.5106
Epoch  4, CIFAR-10 Batch 1:  loss: 1.67972 validation accuracy: 0.5122
Epoch  4, CIFAR-10 Batch 2:  loss: 1.30204 validation accuracy: 0.5182
Epoch  4, CIFAR-10 Batch 3:  loss: 1.14596 validation accuracy: 0.5184
Epoch  4, CIFAR-10 Batch 4:  loss: 1.29143 validation accuracy: 0.5218
Epoch  4, CIFAR-10 Batch 5:  loss: 1.41764 validation accuracy: 0.5228
Epoch  5, CIFAR-10 Batch 1:  loss: 1.6455 validation accuracy: 0.5248
Epoch  5, CIFAR-10 Batch 2:  loss: 1.21565 validation accuracy: 0.532
Epoch  5, CIFAR-10 Batch 3:  loss: 1.11029 validation accuracy: 0.5282
Epoch  5, CIFAR-10 Batch 4:  loss: 1.261 validation accuracy: 0.5338
Epoch  5, CIFAR-10 Batch 5:  loss: 1.40729 validation accuracy: 0.5284
Epoch  6, CIFAR-10 Batch 1:  loss: 1.61586 validation accuracy: 0.5332
Epoch  6, CIFAR-10 Batch 2:  loss: 1.15819 validation accuracy: 0.5368
Epoch  6, CIFAR-10 Batch 3:  loss: 1.08644 validation accuracy: 0.5414
Epoch  6, CIFAR-10 Batch 4:  loss: 1.22852 validation accuracy: 0.54
Epoch  6, CIFAR-10 Batch 5:  loss: 1.39618 validation accuracy: 0.5386
Epoch  7, CIFAR-10 Batch 1:  loss: 1.57747 validation accuracy: 0.5414
Epoch  7, CIFAR-10 Batch 2:  loss: 1.13411 validation accuracy: 0.542
Epoch  7, CIFAR-10 Batch 3:  loss: 1.05505 validation accuracy: 0.5438
Epoch  7, CIFAR-10 Batch 4:  loss: 1.19329 validation accuracy: 0.5432
Epoch  7, CIFAR-10 Batch 5:  loss: 1.38755 validation accuracy: 0.5494
Epoch  8, CIFAR-10 Batch 1:  loss: 1.53935 validation accuracy: 0.5498
Epoch  8, CIFAR-10 Batch 2:  loss: 1.11987 validation accuracy: 0.5466
Epoch  8, CIFAR-10 Batch 3:  loss: 1.02742 validation accuracy: 0.55
Epoch  8, CIFAR-10 Batch 4:  loss: 1.15765 validation accuracy: 0.5496
Epoch  8, CIFAR-10 Batch 5:  loss: 1.36825 validation accuracy: 0.554
Epoch  9, CIFAR-10 Batch 1:  loss: 1.49344 validation accuracy: 0.5574
Epoch  9, CIFAR-10 Batch 2:  loss: 1.10781 validation accuracy: 0.5524
Epoch  9, CIFAR-10 Batch 3:  loss: 0.999945 validation accuracy: 0.5568
Epoch  9, CIFAR-10 Batch 4:  loss: 1.12751 validation accuracy: 0.561
Epoch  9, CIFAR-10 Batch 5:  loss: 1.33491 validation accuracy: 0.5552
Epoch 10, CIFAR-10 Batch 1:  loss: 1.46068 validation accuracy: 0.5654
Epoch 10, CIFAR-10 Batch 2:  loss: 1.10215 validation accuracy: 0.5566
Epoch 10, CIFAR-10 Batch 3:  loss: 0.975804 validation accuracy: 0.5632
Epoch 10, CIFAR-10 Batch 4:  loss: 1.09962 validation accuracy: 0.5666
Epoch 10, CIFAR-10 Batch 5:  loss: 1.29532 validation accuracy: 0.5624
Epoch 11, CIFAR-10 Batch 1:  loss: 1.43494 validation accuracy: 0.573
Epoch 11, CIFAR-10 Batch 2:  loss: 1.10102 validation accuracy: 0.5608
Epoch 11, CIFAR-10 Batch 3:  loss: 0.957234 validation accuracy: 0.5728
Epoch 11, CIFAR-10 Batch 4:  loss: 1.07263 validation accuracy: 0.5726
Epoch 11, CIFAR-10 Batch 5:  loss: 1.25533 validation accuracy: 0.567
Epoch 12, CIFAR-10 Batch 1:  loss: 1.40047 validation accuracy: 0.5752
Epoch 12, CIFAR-10 Batch 2:  loss: 1.09655 validation accuracy: 0.568
Epoch 12, CIFAR-10 Batch 3:  loss: 0.944546 validation accuracy: 0.5794
Epoch 12, CIFAR-10 Batch 4:  loss: 1.05104 validation accuracy: 0.5734
Epoch 12, CIFAR-10 Batch 5:  loss: 1.2224 validation accuracy: 0.5726
Epoch 13, CIFAR-10 Batch 1:  loss: 1.3747 validation accuracy: 0.5842
Epoch 13, CIFAR-10 Batch 2:  loss: 1.09928 validation accuracy: 0.5774
Epoch 13, CIFAR-10 Batch 3:  loss: 0.919813 validation accuracy: 0.5822
Epoch 13, CIFAR-10 Batch 4:  loss: 1.02936 validation accuracy: 0.579
Epoch 13, CIFAR-10 Batch 5:  loss: 1.18919 validation accuracy: 0.5786
Epoch 14, CIFAR-10 Batch 1:  loss: 1.35641 validation accuracy: 0.5894
Epoch 14, CIFAR-10 Batch 2:  loss: 1.09941 validation accuracy: 0.5838
Epoch 14, CIFAR-10 Batch 3:  loss: 0.905511 validation accuracy: 0.5846
Epoch 14, CIFAR-10 Batch 4:  loss: 1.00721 validation accuracy: 0.5852
Epoch 14, CIFAR-10 Batch 5:  loss: 1.16591 validation accuracy: 0.5832
Epoch 15, CIFAR-10 Batch 1:  loss: 1.34467 validation accuracy: 0.5934
Epoch 15, CIFAR-10 Batch 2:  loss: 1.10073 validation accuracy: 0.5934
Epoch 15, CIFAR-10 Batch 3:  loss: 0.895372 validation accuracy: 0.5884
Epoch 15, CIFAR-10 Batch 4:  loss: 0.992916 validation accuracy: 0.5874
Epoch 15, CIFAR-10 Batch 5:  loss: 1.14066 validation accuracy: 0.5862
Epoch 16, CIFAR-10 Batch 1:  loss: 1.33333 validation accuracy: 0.5972
Epoch 16, CIFAR-10 Batch 2:  loss: 1.10267 validation accuracy: 0.5964
Epoch 16, CIFAR-10 Batch 3:  loss: 0.885704 validation accuracy: 0.5944
Epoch 16, CIFAR-10 Batch 4:  loss: 0.976309 validation accuracy: 0.5902
Epoch 16, CIFAR-10 Batch 5:  loss: 1.12417 validation accuracy: 0.5858
Epoch 17, CIFAR-10 Batch 1:  loss: 1.32541 validation accuracy: 0.5994
Epoch 17, CIFAR-10 Batch 2:  loss: 1.10524 validation accuracy: 0.5984
Epoch 17, CIFAR-10 Batch 3:  loss: 0.876603 validation accuracy: 0.5988
Epoch 17, CIFAR-10 Batch 4:  loss: 0.967457 validation accuracy: 0.5946
Epoch 17, CIFAR-10 Batch 5:  loss: 1.09683 validation accuracy: 0.5866
Epoch 18, CIFAR-10 Batch 1:  loss: 1.31398 validation accuracy: 0.604
Epoch 18, CIFAR-10 Batch 2:  loss: 1.10526 validation accuracy: 0.603
Epoch 18, CIFAR-10 Batch 3:  loss: 0.871913 validation accuracy: 0.602
Epoch 18, CIFAR-10 Batch 4:  loss: 0.954473 validation accuracy: 0.5936
Epoch 18, CIFAR-10 Batch 5:  loss: 1.07577 validation accuracy: 0.5908
Epoch 19, CIFAR-10 Batch 1:  loss: 1.30861 validation accuracy: 0.604
Epoch 19, CIFAR-10 Batch 2:  loss: 1.10264 validation accuracy: 0.6056
Epoch 19, CIFAR-10 Batch 3:  loss: 0.862995 validation accuracy: 0.6038
Epoch 19, CIFAR-10 Batch 4:  loss: 0.946182 validation accuracy: 0.5918
Epoch 19, CIFAR-10 Batch 5:  loss: 1.06265 validation accuracy: 0.5924
Epoch 20, CIFAR-10 Batch 1:  loss: 1.30337 validation accuracy: 0.6076
Epoch 20, CIFAR-10 Batch 2:  loss: 1.09313 validation accuracy: 0.606
Epoch 20, CIFAR-10 Batch 3:  loss: 0.858727 validation accuracy: 0.6072
Epoch 20, CIFAR-10 Batch 4:  loss: 0.935183 validation accuracy: 0.5962
Epoch 20, CIFAR-10 Batch 5:  loss: 1.03679 validation accuracy: 0.5968
Epoch 21, CIFAR-10 Batch 1:  loss: 1.30187 validation accuracy: 0.61
Epoch 21, CIFAR-10 Batch 2:  loss: 1.09258 validation accuracy: 0.6104
Epoch 21, CIFAR-10 Batch 3:  loss: 0.858215 validation accuracy: 0.6088
Epoch 21, CIFAR-10 Batch 4:  loss: 0.932358 validation accuracy: 0.6038
Epoch 21, CIFAR-10 Batch 5:  loss: 1.02288 validation accuracy: 0.596
Epoch 22, CIFAR-10 Batch 1:  loss: 1.3008 validation accuracy: 0.6138
Epoch 22, CIFAR-10 Batch 2:  loss: 1.08708 validation accuracy: 0.6128
Epoch 22, CIFAR-10 Batch 3:  loss: 0.852966 validation accuracy: 0.6104
Epoch 22, CIFAR-10 Batch 4:  loss: 0.927582 validation accuracy: 0.605
Epoch 22, CIFAR-10 Batch 5:  loss: 1.01428 validation accuracy: 0.6012
Epoch 23, CIFAR-10 Batch 1:  loss: 1.29036 validation accuracy: 0.6156
Epoch 23, CIFAR-10 Batch 2:  loss: 1.08065 validation accuracy: 0.6168
Epoch 23, CIFAR-10 Batch 3:  loss: 0.84584 validation accuracy: 0.6108
Epoch 23, CIFAR-10 Batch 4:  loss: 0.924373 validation accuracy: 0.6096
Epoch 23, CIFAR-10 Batch 5:  loss: 0.996668 validation accuracy: 0.5992
Epoch 24, CIFAR-10 Batch 1:  loss: 1.28773 validation accuracy: 0.6164
Epoch 24, CIFAR-10 Batch 2:  loss: 1.07143 validation accuracy: 0.6184
Epoch 24, CIFAR-10 Batch 3:  loss: 0.837919 validation accuracy: 0.6146
Epoch 24, CIFAR-10 Batch 4:  loss: 0.922455 validation accuracy: 0.613
Epoch 24, CIFAR-10 Batch 5:  loss: 0.983114 validation accuracy: 0.6032
Epoch 25, CIFAR-10 Batch 1:  loss: 1.27938 validation accuracy: 0.619
Epoch 25, CIFAR-10 Batch 2:  loss: 1.06358 validation accuracy: 0.6194
Epoch 25, CIFAR-10 Batch 3:  loss: 0.833809 validation accuracy: 0.6134
Epoch 25, CIFAR-10 Batch 4:  loss: 0.916641 validation accuracy: 0.6112
Epoch 25, CIFAR-10 Batch 5:  loss: 0.972614 validation accuracy: 0.605
Epoch 26, CIFAR-10 Batch 1:  loss: 1.27393 validation accuracy: 0.6214
Epoch 26, CIFAR-10 Batch 2:  loss: 1.05524 validation accuracy: 0.6192
Epoch 26, CIFAR-10 Batch 3:  loss: 0.825745 validation accuracy: 0.6142
Epoch 26, CIFAR-10 Batch 4:  loss: 0.911811 validation accuracy: 0.6136
Epoch 26, CIFAR-10 Batch 5:  loss: 0.95934 validation accuracy: 0.6074
Epoch 27, CIFAR-10 Batch 1:  loss: 1.26539 validation accuracy: 0.6258
Epoch 27, CIFAR-10 Batch 2:  loss: 1.04777 validation accuracy: 0.6198
Epoch 27, CIFAR-10 Batch 3:  loss: 0.823448 validation accuracy: 0.6156
Epoch 27, CIFAR-10 Batch 4:  loss: 0.905933 validation accuracy: 0.6138
Epoch 27, CIFAR-10 Batch 5:  loss: 0.946974 validation accuracy: 0.6096
Epoch 28, CIFAR-10 Batch 1:  loss: 1.26104 validation accuracy: 0.625
Epoch 28, CIFAR-10 Batch 2:  loss: 1.04186 validation accuracy: 0.6208
Epoch 28, CIFAR-10 Batch 3:  loss: 0.820837 validation accuracy: 0.617
Epoch 28, CIFAR-10 Batch 4:  loss: 0.902428 validation accuracy: 0.617
Epoch 28, CIFAR-10 Batch 5:  loss: 0.929736 validation accuracy: 0.6102
Epoch 29, CIFAR-10 Batch 1:  loss: 1.25787 validation accuracy: 0.6272
Epoch 29, CIFAR-10 Batch 2:  loss: 1.0347 validation accuracy: 0.6214
Epoch 29, CIFAR-10 Batch 3:  loss: 0.816652 validation accuracy: 0.6196
Epoch 29, CIFAR-10 Batch 4:  loss: 0.898383 validation accuracy: 0.62
Epoch 29, CIFAR-10 Batch 5:  loss: 0.920166 validation accuracy: 0.6102
Epoch 30, CIFAR-10 Batch 1:  loss: 1.25752 validation accuracy: 0.6262
Epoch 30, CIFAR-10 Batch 2:  loss: 1.03089 validation accuracy: 0.6214
Epoch 30, CIFAR-10 Batch 3:  loss: 0.810299 validation accuracy: 0.6204
Epoch 30, CIFAR-10 Batch 4:  loss: 0.896118 validation accuracy: 0.6202
Epoch 30, CIFAR-10 Batch 5:  loss: 0.912355 validation accuracy: 0.6116

Checkpoint

The model has been saved to disk.

Test Model

Test your model against the test dataset. This will be your final accuracy. You should have an accuracy greater than 50%. If you don't, keep tweaking the model architecture and parameters.


In [18]:
"""
DON'T MODIFY ANYTHING IN THIS CELL
"""
%matplotlib inline
%config InlineBackend.figure_format = 'retina'

import tensorflow as tf
import pickle
import helper
import random

# Set batch size if not already set
try:
    if batch_size:
        pass
except NameError:
    batch_size = 64

save_model_path = './image_classification'
n_samples = 4
top_n_predictions = 3

def test_model():
    """
    Test the saved model against the test dataset
    """

    test_features, test_labels = pickle.load(open('preprocess_test.p', mode='rb'))
    loaded_graph = tf.Graph()

    with tf.Session(graph=loaded_graph) as sess:
        # Load model
        loader = tf.train.import_meta_graph(save_model_path + '.meta')
        loader.restore(sess, save_model_path)

        # Get Tensors from loaded model
        loaded_x = loaded_graph.get_tensor_by_name('x:0')
        loaded_y = loaded_graph.get_tensor_by_name('y:0')
        loaded_keep_prob = loaded_graph.get_tensor_by_name('keep_prob:0')
        loaded_logits = loaded_graph.get_tensor_by_name('logits:0')
        loaded_acc = loaded_graph.get_tensor_by_name('accuracy:0')
        
        # Get accuracy in batches for memory limitations
        test_batch_acc_total = 0
        test_batch_count = 0
        
        for test_feature_batch, test_label_batch in helper.batch_features_labels(test_features, test_labels, batch_size):
            test_batch_acc_total += sess.run(
                loaded_acc,
                feed_dict={loaded_x: test_feature_batch, loaded_y: test_label_batch, loaded_keep_prob: 1.0})
            test_batch_count += 1

        print('Testing Accuracy: {}\n'.format(test_batch_acc_total/test_batch_count))

        # Print Random Samples
        random_test_features, random_test_labels = tuple(zip(*random.sample(list(zip(test_features, test_labels)), n_samples)))
        random_test_predictions = sess.run(
            tf.nn.top_k(tf.nn.softmax(loaded_logits), top_n_predictions),
            feed_dict={loaded_x: random_test_features, loaded_y: random_test_labels, loaded_keep_prob: 1.0})
        helper.display_image_predictions(random_test_features, random_test_labels, random_test_predictions)


test_model()


Testing Accuracy: 0.6100716560509554

Why 50-70% Accuracy?

You might be wondering why you can't get an accuracy any higher. First things first, 50% isn't bad for a simple CNN. Pure guessing would get you 10% accuracy. However, you might notice people are getting scores well above 70%. That's because we haven't taught you all there is to know about neural networks. We still need to cover a few more techniques.

Submitting This Project

When submitting this project, make sure to run all the cells before saving the notebook. Save the notebook file as "dlnd_image_classification.ipynb" and save it as a HTML file under "File" -> "Download as". Include the "helper.py" and "problem_unittests.py" files in your submission.