Transfer Learning

Most of the time you won't want to train a whole convolutional network yourself. Modern ConvNets training on huge datasets like ImageNet take weeks on multiple GPUs. Instead, most people use a pretrained network either as a fixed feature extractor, or as an initial network to fine tune. In this notebook, you'll be using VGGNet trained on the ImageNet dataset as a feature extractor. Below is a diagram of the VGGNet architecture.

VGGNet is great because it's simple and has great performance, coming in second in the ImageNet competition. The idea here is that we keep all the convolutional layers, but replace the final fully connected layers with our own classifier. This way we can use VGGNet as a feature extractor for our images then easily train a simple classifier on top of that. What we'll do is take the first fully connected layer with 4096 units, including thresholding with ReLUs. We can use those values as a code for each image, then build a classifier on top of those codes.

You can read more about transfer learning from the CS231n course notes.

Pretrained VGGNet

We'll be using a pretrained network from https://github.com/machrisaa/tensorflow-vgg. Make sure to clone this repository to the directory you're working from. You'll also want to rename it so it has an underscore instead of a dash.

git clone https://github.com/machrisaa/tensorflow-vgg.git tensorflow_vgg

This is a really nice implementation of VGGNet, quite easy to work with. The network has already been trained and the parameters are available from this link. You'll need to clone the repo into the folder containing this notebook. Then download the parameter file using the next cell.


In [1]:
from urllib.request import urlretrieve
from os.path import isfile, isdir
from tqdm import tqdm

vgg_dir = 'tensorflow_vgg/'
# Make sure vgg exists
if not isdir(vgg_dir):
    raise Exception("VGG directory doesn't exist!")

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(vgg_dir + "vgg16.npy"):
    with DLProgress(unit='B', unit_scale=True, miniters=1, desc='VGG16 Parameters') as pbar:
        urlretrieve(
            'https://s3.amazonaws.com/content.udacity-data.com/nd101/vgg16.npy',
            vgg_dir + 'vgg16.npy',
            pbar.hook)
else:
    print("Parameter file already exists!")


VGG16 Parameters: 553MB [03:12, 2.88MB/s]                                                                                       

Flower power

Here we'll be using VGGNet to classify images of flowers. To get the flower dataset, run the cell below. This dataset comes from the TensorFlow inception tutorial.


In [2]:
import tarfile

dataset_folder_path = 'flower_photos'

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('flower_photos.tar.gz'):
    with DLProgress(unit='B', unit_scale=True, miniters=1, desc='Flowers Dataset') as pbar:
        urlretrieve(
            'http://download.tensorflow.org/example_images/flower_photos.tgz',
            'flower_photos.tar.gz',
            pbar.hook)

if not isdir(dataset_folder_path):
    with tarfile.open('flower_photos.tar.gz') as tar:
        tar.extractall()
        tar.close()


Flowers Dataset: 229MB [05:28, 696KB/s]                                                                                         

ConvNet Codes

Below, we'll run through all the images in our dataset and get codes for each of them. That is, we'll run the images through the VGGNet convolutional layers and record the values of the first fully connected layer. We can then write these to a file for later when we build our own classifier.

Here we're using the vgg16 module from tensorflow_vgg. The network takes images of size $224 \times 224 \times 3$ as input. Then it has 5 sets of convolutional layers. The network implemented here has this structure (copied from the source code):

self.conv1_1 = self.conv_layer(bgr, "conv1_1")
self.conv1_2 = self.conv_layer(self.conv1_1, "conv1_2")
self.pool1 = self.max_pool(self.conv1_2, 'pool1')

self.conv2_1 = self.conv_layer(self.pool1, "conv2_1")
self.conv2_2 = self.conv_layer(self.conv2_1, "conv2_2")
self.pool2 = self.max_pool(self.conv2_2, 'pool2')

self.conv3_1 = self.conv_layer(self.pool2, "conv3_1")
self.conv3_2 = self.conv_layer(self.conv3_1, "conv3_2")
self.conv3_3 = self.conv_layer(self.conv3_2, "conv3_3")
self.pool3 = self.max_pool(self.conv3_3, 'pool3')

self.conv4_1 = self.conv_layer(self.pool3, "conv4_1")
self.conv4_2 = self.conv_layer(self.conv4_1, "conv4_2")
self.conv4_3 = self.conv_layer(self.conv4_2, "conv4_3")
self.pool4 = self.max_pool(self.conv4_3, 'pool4')

self.conv5_1 = self.conv_layer(self.pool4, "conv5_1")
self.conv5_2 = self.conv_layer(self.conv5_1, "conv5_2")
self.conv5_3 = self.conv_layer(self.conv5_2, "conv5_3")
self.pool5 = self.max_pool(self.conv5_3, 'pool5')

self.fc6 = self.fc_layer(self.pool5, "fc6")
self.relu6 = tf.nn.relu(self.fc6)

So what we want are the values of the first fully connected layer, after being ReLUd (self.relu6). To build the network, we use

with tf.Session() as sess:
    vgg = vgg16.Vgg16()
    input_ = tf.placeholder(tf.float32, [None, 224, 224, 3])
    with tf.name_scope("content_vgg"):
        vgg.build(input_)

This creates the vgg object, then builds the graph with vgg.build(input_). Then to get the values from the layer,

feed_dict = {input_: images}
codes = sess.run(vgg.relu6, feed_dict=feed_dict)

In [3]:
import os

import numpy as np
import tensorflow as tf

from tensorflow_vgg import vgg16
from tensorflow_vgg import utils

In [4]:
data_dir = 'flower_photos/'
contents = os.listdir(data_dir)
classes = [each for each in contents if os.path.isdir(data_dir + each)]

Below I'm running images through the VGG network in batches.

Exercise: Below, build the VGG network. Also get the codes from the first fully connected layer (make sure you get the ReLUd values).


In [5]:
# Set the batch size higher if you can fit in in your GPU memory
batch_size = 10
codes_list = []
labels = []
batch = []

codes = None

with tf.Session() as sess:
    
    # TODO: Build the vgg network here
    vgg = vgg16.Vgg16()
    input_ = tf.placeholder(tf.float32, [None, 224, 224, 3])
    with tf.name_scope("content_vgg"):
        vgg.build(input_)
        
    for each in classes:
        print("Starting {} images".format(each))
        class_path = data_dir + each
        files = os.listdir(class_path)
        for ii, file in enumerate(files, 1):
            # Add images to the current batch
            # utils.load_image crops the input images for us, from the center
            img = utils.load_image(os.path.join(class_path, file))
            batch.append(img.reshape((1, 224, 224, 3)))
            labels.append(each)
            
            # Running the batch through the network to get the codes
            if ii % batch_size == 0 or ii == len(files):
                
                # Image batch to pass to VGG network
                images = np.concatenate(batch)
                
                # TODO: Get the values from the relu6 layer of the VGG network
                feed_dict = {input_: images}
                codes_batch = sess.run(vgg.relu6, feed_dict=feed_dict)
                
                # Here I'm building an array of the codes
                if codes is None:
                    codes = codes_batch
                else:
                    codes = np.concatenate((codes, codes_batch))
                
                # Reset to start building the next batch
                batch = []
                print('{} images processed'.format(ii))


C:\Users\Ian\Google Drive\Learning\Deep Learning Nanodegree\deep-learning\transfer-learning\tensorflow_vgg\vgg16.npy
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In [6]:
# write codes to file
with open('codes', 'w') as f:
    codes.tofile(f)
    
# write labels to file
import csv
with open('labels', 'w') as f:
    writer = csv.writer(f, delimiter='\n')
    writer.writerow(labels)

Building the Classifier

Now that we have codes for all the images, we can build a simple classifier on top of them. The codes behave just like normal input into a simple neural network. Below I'm going to have you do most of the work.


In [11]:
# read codes and labels from file
import csv

with open('labels') as f:
    reader = csv.reader(f, delimiter='\n')
    labels = np.array([each for each in reader if len(each) > 0]).squeeze()
with open('codes') as f:
    codes = np.fromfile(f, dtype=np.float32)
    codes = codes.reshape((len(labels), -1))

Data prep

As usual, now we need to one-hot encode our labels and create validation/test sets. First up, creating our labels!

Exercise: From scikit-learn, use LabelBinarizer to create one-hot encoded vectors from the labels.


In [12]:
from sklearn.preprocessing import LabelBinarizer
lb = LabelBinarizer()
labels_vecs = lb.fit_transform(labels)

Now you'll want to create your training, validation, and test sets. An important thing to note here is that our labels and data aren't randomized yet. We'll want to shuffle our data so the validation and test sets contain data from all classes. Otherwise, you could end up with testing sets that are all one class. Typically, you'll also want to make sure that each smaller set has the same the distribution of classes as it is for the whole data set. The easiest way to accomplish both these goals is to use StratifiedShuffleSplit from scikit-learn.

You can create the splitter like so:

ss = StratifiedShuffleSplit(n_splits=1, test_size=0.2)

Then split the data with

splitter = ss.split(x, y)

ss.split returns a generator of indices. You can pass the indices into the arrays to get the split sets. The fact that it's a generator means you either need to iterate over it, or use next(splitter) to get the indices. Be sure to read the documentation and the user guide.

Exercise: Use StratifiedShuffleSplit to split the codes and labels into training, validation, and test sets.


In [13]:
from sklearn.model_selection import StratifiedShuffleSplit

ss = StratifiedShuffleSplit(n_splits=1, test_size=0.2)

train_idx, val_idx = next(ss.split(codes, labels))

half_val_len = int(len(val_idx)/2)
val_idx, test_idx = val_idx[:half_val_len], val_idx[half_val_len:]

train_x, train_y = codes[train_idx], labels_vecs[train_idx]
val_x, val_y = codes[val_idx], labels_vecs[val_idx]
test_x, test_y = codes[test_idx], labels_vecs[test_idx]

In [14]:
print("Train shapes (x, y):", train_x.shape, train_y.shape)
print("Validation shapes (x, y):", val_x.shape, val_y.shape)
print("Test shapes (x, y):", test_x.shape, test_y.shape)


Train shapes (x, y): (2936, 4096) (2936, 5)
Validation shapes (x, y): (367, 4096) (367, 5)
Test shapes (x, y): (367, 4096) (367, 5)

If you did it right, you should see these sizes for the training sets:

Train shapes (x, y): (2936, 4096) (2936, 5)
Validation shapes (x, y): (367, 4096) (367, 5)
Test shapes (x, y): (367, 4096) (367, 5)

Classifier layers

Once you have the convolutional codes, you just need to build a classfier from some fully connected layers. You use the codes as the inputs and the image labels as targets. Otherwise the classifier is a typical neural network.

Exercise: With the codes and labels loaded, build the classifier. Consider the codes as your inputs, each of them are 4096D vectors. You'll want to use a hidden layer and an output layer as your classifier. Remember that the output layer needs to have one unit for each class and a softmax activation function. Use the cross entropy to calculate the cost.


In [15]:
inputs_ = tf.placeholder(tf.float32, shape=[None, codes.shape[1]])
labels_ = tf.placeholder(tf.int64, shape=[None, labels_vecs.shape[1]])

# TODO: Classifier layers and operations

fc = tf.contrib.layers.fully_connected(inputs_, 256)
    
logits = tf.contrib.layers.fully_connected(fc, labels_vecs.shape[1], activation_fn=None)
cross_entropy = tf.nn.softmax_cross_entropy_with_logits(labels=labels_, logits=logits)
cost = tf.reduce_mean(cross_entropy)

optimizer = tf.train.AdamOptimizer().minimize(cost)

# Operations for validation/test accuracy
predicted = tf.nn.softmax(logits)
correct_pred = tf.equal(tf.argmax(predicted, 1), tf.argmax(labels_, 1))
accuracy = tf.reduce_mean(tf.cast(correct_pred, tf.float32))

Batches!

Here is just a simple way to do batches. I've written it so that it includes all the data. Sometimes you'll throw out some data at the end to make sure you have full batches. Here I just extend the last batch to include the remaining data.


In [16]:
def get_batches(x, y, n_batches=10):
    """ Return a generator that yields batches from arrays x and y. """
    batch_size = len(x)//n_batches
    
    for ii in range(0, n_batches*batch_size, batch_size):
        # If we're not on the last batch, grab data with size batch_size
        if ii != (n_batches-1)*batch_size:
            X, Y = x[ii: ii+batch_size], y[ii: ii+batch_size] 
        # On the last batch, grab the rest of the data
        else:
            X, Y = x[ii:], y[ii:]
        # I love generators
        yield X, Y

Training

Here, we'll train the network.

Exercise: So far we've been providing the training code for you. Here, I'm going to give you a bit more of a challenge and have you write the code to train the network. Of course, you'll be able to see my solution if you need help. Use the get_batches function I wrote before to get your batches like for x, y in get_batches(train_x, train_y). Or write your own!


In [17]:
epochs = 10
iteration = 0
saver = tf.train.Saver()
with tf.Session() as sess:
    
    sess.run(tf.global_variables_initializer())
    for e in range(epochs):
        for x, y in get_batches(train_x, train_y):
            feed = {inputs_: x,
                    labels_: y}
            loss, _ = sess.run([cost, optimizer], feed_dict=feed)
            print("Epoch: {}/{}".format(e+1, epochs),
                  "Iteration: {}".format(iteration),
                  "Training loss: {:.5f}".format(loss))
            iteration += 1
            
            if iteration % 5 == 0:
                feed = {inputs_: val_x,
                        labels_: val_y}
                val_acc = sess.run(accuracy, feed_dict=feed)
                print("Epoch: {}/{}".format(e, epochs),
                      "Iteration: {}".format(iteration),
                      "Validation Acc: {:.4f}".format(val_acc))
    saver.save(sess, "checkpoints/flowers.ckpt")


Epoch: 1/10 Iteration: 0 Training loss: 9.57162
Epoch: 1/10 Iteration: 1 Training loss: 13.00344
Epoch: 1/10 Iteration: 2 Training loss: 16.20609
Epoch: 1/10 Iteration: 3 Training loss: 18.24859
Epoch: 1/10 Iteration: 4 Training loss: 11.19467
Epoch: 0/10 Iteration: 5 Validation Acc: 0.6131
Epoch: 1/10 Iteration: 5 Training loss: 11.63111
Epoch: 1/10 Iteration: 6 Training loss: 6.66610
Epoch: 1/10 Iteration: 7 Training loss: 5.47366
Epoch: 1/10 Iteration: 8 Training loss: 3.17677
Epoch: 1/10 Iteration: 9 Training loss: 1.97091
Epoch: 0/10 Iteration: 10 Validation Acc: 0.7411
Epoch: 2/10 Iteration: 10 Training loss: 1.17652
Epoch: 2/10 Iteration: 11 Training loss: 0.78083
Epoch: 2/10 Iteration: 12 Training loss: 1.12477
Epoch: 2/10 Iteration: 13 Training loss: 0.95348
Epoch: 2/10 Iteration: 14 Training loss: 1.03252
Epoch: 1/10 Iteration: 15 Validation Acc: 0.7384
Epoch: 2/10 Iteration: 15 Training loss: 0.95030
Epoch: 2/10 Iteration: 16 Training loss: 0.75913
Epoch: 2/10 Iteration: 17 Training loss: 0.64871
Epoch: 2/10 Iteration: 18 Training loss: 0.63559
Epoch: 2/10 Iteration: 19 Training loss: 0.79836
Epoch: 1/10 Iteration: 20 Validation Acc: 0.7657
Epoch: 3/10 Iteration: 20 Training loss: 0.51024
Epoch: 3/10 Iteration: 21 Training loss: 0.58347
Epoch: 3/10 Iteration: 22 Training loss: 0.72989
Epoch: 3/10 Iteration: 23 Training loss: 0.43739
Epoch: 3/10 Iteration: 24 Training loss: 0.50398
Epoch: 2/10 Iteration: 25 Validation Acc: 0.7766
Epoch: 3/10 Iteration: 25 Training loss: 0.53749
Epoch: 3/10 Iteration: 26 Training loss: 0.48741
Epoch: 3/10 Iteration: 27 Training loss: 0.60157
Epoch: 3/10 Iteration: 28 Training loss: 0.57567
Epoch: 3/10 Iteration: 29 Training loss: 0.47914
Epoch: 2/10 Iteration: 30 Validation Acc: 0.8065
Epoch: 4/10 Iteration: 30 Training loss: 0.42763
Epoch: 4/10 Iteration: 31 Training loss: 0.34144
Epoch: 4/10 Iteration: 32 Training loss: 0.45031
Epoch: 4/10 Iteration: 33 Training loss: 0.30645
Epoch: 4/10 Iteration: 34 Training loss: 0.31167
Epoch: 3/10 Iteration: 35 Validation Acc: 0.8501
Epoch: 4/10 Iteration: 35 Training loss: 0.31586
Epoch: 4/10 Iteration: 36 Training loss: 0.31835
Epoch: 4/10 Iteration: 37 Training loss: 0.30758
Epoch: 4/10 Iteration: 38 Training loss: 0.34998
Epoch: 4/10 Iteration: 39 Training loss: 0.33633
Epoch: 3/10 Iteration: 40 Validation Acc: 0.8638
Epoch: 5/10 Iteration: 40 Training loss: 0.24922
Epoch: 5/10 Iteration: 41 Training loss: 0.25469
Epoch: 5/10 Iteration: 42 Training loss: 0.39798
Epoch: 5/10 Iteration: 43 Training loss: 0.23100
Epoch: 5/10 Iteration: 44 Training loss: 0.23309
Epoch: 4/10 Iteration: 45 Validation Acc: 0.8719
Epoch: 5/10 Iteration: 45 Training loss: 0.23463
Epoch: 5/10 Iteration: 46 Training loss: 0.24633
Epoch: 5/10 Iteration: 47 Training loss: 0.23628
Epoch: 5/10 Iteration: 48 Training loss: 0.25043
Epoch: 5/10 Iteration: 49 Training loss: 0.20906
Epoch: 4/10 Iteration: 50 Validation Acc: 0.8856
Epoch: 6/10 Iteration: 50 Training loss: 0.19478
Epoch: 6/10 Iteration: 51 Training loss: 0.15685
Epoch: 6/10 Iteration: 52 Training loss: 0.29657
Epoch: 6/10 Iteration: 53 Training loss: 0.15339
Epoch: 6/10 Iteration: 54 Training loss: 0.17663
Epoch: 5/10 Iteration: 55 Validation Acc: 0.8801
Epoch: 6/10 Iteration: 55 Training loss: 0.19702
Epoch: 6/10 Iteration: 56 Training loss: 0.19179
Epoch: 6/10 Iteration: 57 Training loss: 0.18220
Epoch: 6/10 Iteration: 58 Training loss: 0.17356
Epoch: 6/10 Iteration: 59 Training loss: 0.15390
Epoch: 5/10 Iteration: 60 Validation Acc: 0.8747
Epoch: 7/10 Iteration: 60 Training loss: 0.15732
Epoch: 7/10 Iteration: 61 Training loss: 0.12526
Epoch: 7/10 Iteration: 62 Training loss: 0.24607
Epoch: 7/10 Iteration: 63 Training loss: 0.11382
Epoch: 7/10 Iteration: 64 Training loss: 0.12383
Epoch: 6/10 Iteration: 65 Validation Acc: 0.8883
Epoch: 7/10 Iteration: 65 Training loss: 0.13280
Epoch: 7/10 Iteration: 66 Training loss: 0.15291
Epoch: 7/10 Iteration: 67 Training loss: 0.14246
Epoch: 7/10 Iteration: 68 Training loss: 0.13751
Epoch: 7/10 Iteration: 69 Training loss: 0.11509
Epoch: 6/10 Iteration: 70 Validation Acc: 0.8937
Epoch: 8/10 Iteration: 70 Training loss: 0.11880
Epoch: 8/10 Iteration: 71 Training loss: 0.08792
Epoch: 8/10 Iteration: 72 Training loss: 0.17794
Epoch: 8/10 Iteration: 73 Training loss: 0.08689
Epoch: 8/10 Iteration: 74 Training loss: 0.09198
Epoch: 7/10 Iteration: 75 Validation Acc: 0.8883
Epoch: 8/10 Iteration: 75 Training loss: 0.10315
Epoch: 8/10 Iteration: 76 Training loss: 0.09822
Epoch: 8/10 Iteration: 77 Training loss: 0.11465
Epoch: 8/10 Iteration: 78 Training loss: 0.09705
Epoch: 8/10 Iteration: 79 Training loss: 0.08670
Epoch: 7/10 Iteration: 80 Validation Acc: 0.8910
Epoch: 9/10 Iteration: 80 Training loss: 0.09718
Epoch: 9/10 Iteration: 81 Training loss: 0.08032
Epoch: 9/10 Iteration: 82 Training loss: 0.14435
Epoch: 9/10 Iteration: 83 Training loss: 0.06745
Epoch: 9/10 Iteration: 84 Training loss: 0.06601
Epoch: 8/10 Iteration: 85 Validation Acc: 0.8910
Epoch: 9/10 Iteration: 85 Training loss: 0.08219
Epoch: 9/10 Iteration: 86 Training loss: 0.08084
Epoch: 9/10 Iteration: 87 Training loss: 0.09065
Epoch: 9/10 Iteration: 88 Training loss: 0.07869
Epoch: 9/10 Iteration: 89 Training loss: 0.06943
Epoch: 8/10 Iteration: 90 Validation Acc: 0.8883
Epoch: 10/10 Iteration: 90 Training loss: 0.07245
Epoch: 10/10 Iteration: 91 Training loss: 0.06096
Epoch: 10/10 Iteration: 92 Training loss: 0.11826
Epoch: 10/10 Iteration: 93 Training loss: 0.05430
Epoch: 10/10 Iteration: 94 Training loss: 0.05313
Epoch: 9/10 Iteration: 95 Validation Acc: 0.8992
Epoch: 10/10 Iteration: 95 Training loss: 0.06050
Epoch: 10/10 Iteration: 96 Training loss: 0.06016
Epoch: 10/10 Iteration: 97 Training loss: 0.07015
Epoch: 10/10 Iteration: 98 Training loss: 0.05784
Epoch: 10/10 Iteration: 99 Training loss: 0.05519
Epoch: 9/10 Iteration: 100 Validation Acc: 0.8937

Testing

Below you see the test accuracy. You can also see the predictions returned for images.


In [18]:
with tf.Session() as sess:
    saver.restore(sess, tf.train.latest_checkpoint('checkpoints'))
    
    feed = {inputs_: test_x,
            labels_: test_y}
    test_acc = sess.run(accuracy, feed_dict=feed)
    print("Test accuracy: {:.4f}".format(test_acc))


Test accuracy: 0.9046

In [19]:
%matplotlib inline

import matplotlib.pyplot as plt
from scipy.ndimage import imread

Below, feel free to choose images and see how the trained classifier predicts the flowers in them.


In [20]:
test_img_path = 'flower_photos/roses/10894627425_ec76bbc757_n.jpg'
test_img = imread(test_img_path)
plt.imshow(test_img)


Out[20]:
<matplotlib.image.AxesImage at 0x6800fc84e0>

In [21]:
# Run this cell if you don't have a vgg graph built
if 'vgg' in globals():
    print('"vgg" object already exists.  Will not create again.')
else:
    #create vgg
    with tf.Session() as sess:
        input_ = tf.placeholder(tf.float32, [None, 224, 224, 3])
        vgg = vgg16.Vgg16()
        vgg.build(input_)


"vgg" object already exists.  Will not create again.

In [22]:
with tf.Session() as sess:
    img = utils.load_image(test_img_path)
    img = img.reshape((1, 224, 224, 3))

    feed_dict = {input_: img}
    code = sess.run(vgg.relu6, feed_dict=feed_dict)
        
saver = tf.train.Saver()
with tf.Session() as sess:
    saver.restore(sess, tf.train.latest_checkpoint('checkpoints'))
    
    feed = {inputs_: code}
    prediction = sess.run(predicted, feed_dict=feed).squeeze()

In [23]:
plt.imshow(test_img)


Out[23]:
<matplotlib.image.AxesImage at 0x6800ef8cc0>

In [24]:
plt.barh(np.arange(5), prediction)
_ = plt.yticks(np.arange(5), lb.classes_)



In [ ]: