Image features exercise

(Adapted from Stanford University's CS231n Open Courseware)

Complete and hand in this completed worksheet (including its outputs and any supporting code outside of the worksheet) with your assignment submission. For more details see the HW page on the course website.

We have seen that we can achieve reasonable performance on an image classification task by training a linear classifier on the pixels of the input image. In this exercise we will show that we can improve our classification performance by training linear classifiers not on raw pixels but on features that are computed from the raw pixels.

All of your work for this exercise will be done in this notebook.


In [1]:
import random
import numpy as np
from cs231n.data_utils import load_CIFAR10
import matplotlib.pyplot as plt
%matplotlib inline
plt.rcParams['figure.figsize'] = (10.0, 8.0) # set default size of plots
plt.rcParams['image.interpolation'] = 'nearest'
plt.rcParams['image.cmap'] = 'gray'

# for auto-reloading extenrnal modules
# see http://stackoverflow.com/questions/1907993/autoreload-of-modules-in-ipython
%load_ext autoreload
%autoreload 2

In [2]:
# Load the CIFAR10 data
from cs231n.features import color_histogram_hsv, hog_feature

def get_CIFAR10_data(num_training=49000, num_validation=1000, num_test=1000):
  # Load the raw CIFAR-10 data
  cifar10_dir = 'cs231n/datasets/cifar-10-batches-py'
  X_train, y_train, X_test, y_test = load_CIFAR10(cifar10_dir)
  
  # Subsample the data
  mask = range(num_training, num_training + num_validation)
  X_val = X_train[mask]
  y_val = y_train[mask]
  mask = range(num_training)
  X_train = X_train[mask]
  y_train = y_train[mask]
  mask = range(num_test)
  X_test = X_test[mask]
  y_test = y_test[mask]

  return X_train, y_train, X_val, y_val, X_test, y_test

X_train, y_train, X_val, y_val, X_test, y_test = get_CIFAR10_data()

In [3]:
from cs231n.features import *

# Extract features. For each image we will compute a Histogram of Oriented
# Gradients (HOG) as well as a color histogram using the hue channel in HSV
# color space. We form our final feature vector for each image by concatenating
# the HOG and color histogram feature vectors.
#
# Roughly speaking, HOG should capture the texture of the image while ignoring
# color information, and the color histogram represents the color of the input
# image while ignoring texture. As a result, we expect that using both together
# ought to work better than using either alone. Verifying this assumption would
# be a good thing to try for the bonus section.

# The hog_feature and color_histogram_hsv functions both operate on a single
# image and return a feature vector for that image. The extract_features
# function takes a set of images and a list of feature functions and evaluates
# each feature function on each image, storing the results in a matrix where
# each column is the concatenation of all feature vectors for a single image.

num_color_bins = 10 # Number of bins in the color histogram
feature_fns = [hog_feature, lambda img: color_histogram_hsv(img, nbin=num_color_bins)]
X_train_feats = extract_features(X_train, feature_fns, verbose=True)
X_val_feats = extract_features(X_val, feature_fns)
X_test_feats = extract_features(X_test, feature_fns)

# Preprocessing: Subtract the mean feature
mean_feat = np.mean(X_train_feats, axis=1)
mean_feat = np.expand_dims(mean_feat, axis=1)
X_train_feats -= mean_feat
X_val_feats -= mean_feat
X_test_feats -= mean_feat

# Preprocessing: Divide by standard deviation. This ensures that each feature
# has roughly the same scale.
std_feat = np.std(X_train_feats, axis=1)
std_feat = np.expand_dims(std_feat, axis=1)
X_train_feats /= std_feat
X_val_feats /= std_feat
X_test_feats /= std_feat

# Preprocessing: Add a bias dimension
X_train_feats = np.vstack([X_train_feats, np.ones((1, X_train_feats.shape[1]))])
X_val_feats = np.vstack([X_val_feats, np.ones((1, X_val_feats.shape[1]))])
X_test_feats = np.vstack([X_test_feats, np.ones((1, X_test_feats.shape[1]))])


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In [5]:
# Use the validation set to tune the learning rate and regularization strength

from cs231n.classifiers.linear_classifier import LinearSVM

learning_rates = [1e-9, 1e-8, 1e-7]
regularization_strengths = [1e5, 1e6, 1e7]

results = {}
best_val = -1
best_svm = None

################################################################################
# TODO:                                                                        #
# Use the validation set to set the learning rate and regularization strength. #
# This should be identical to the validation that you did for the SVM; save    #
# the best trained softmax classifer in best_svm. You might also want to play  #
# with different numbers of bins in the color histogram. If you are careful    #
# you should be able to get accuracy of near 0.44 on the validation set.       #
################################################################################
for learning in learning_rates:
    for regularization in regularization_strengths:
        svm = LinearSVM()
        svm.train(X_train_feats, y_train, learning_rate=learning, reg=regularization,
                  num_iters=1000)
        y_train_pred = svm.predict(X_train_feats)
        train_accuracy = np.mean(y_train == y_train_pred)
        print 'training accuracy: %f' % (train_accuracy)
        y_val_pred = svm.predict(X_val_feats)
        val_accuracy = np.mean(y_val == y_val_pred)
        print 'validation accuracy: %f' % (val_accuracy)
        
        if val_accuracy > best_val:
            best_val = val_accuracy
            best_svm = svm
        
        results[(learning, regularization)] = (train_accuracy, val_accuracy)
################################################################################
#                              END OF YOUR CODE                                #
################################################################################

# Print out results.
for lr, reg in sorted(results):
    train_accuracy, val_accuracy = results[(lr, reg)]
    print 'lr %e reg %e train accuracy: %f val accuracy: %f' % (
                lr, reg, train_accuracy, val_accuracy)
    
print 'best validation accuracy achieved during cross-validation: %f' % best_val


training accuracy: 0.093388
validation accuracy: 0.107000
training accuracy: 0.112653
validation accuracy: 0.110000
training accuracy: 0.087918
validation accuracy: 0.096000
training accuracy: 0.089020
validation accuracy: 0.069000
training accuracy: 0.091633
validation accuracy: 0.073000
training accuracy: 0.085837
validation accuracy: 0.081000
training accuracy: 0.109286
validation accuracy: 0.091000
training accuracy: 0.098408
validation accuracy: 0.102000
training accuracy: 0.107020
validation accuracy: 0.102000
lr 1.000000e-09 reg 1.000000e+05 train accuracy: 0.093388 val accuracy: 0.107000
lr 1.000000e-09 reg 1.000000e+06 train accuracy: 0.112653 val accuracy: 0.110000
lr 1.000000e-09 reg 1.000000e+07 train accuracy: 0.087918 val accuracy: 0.096000
lr 1.000000e-08 reg 1.000000e+05 train accuracy: 0.089020 val accuracy: 0.069000
lr 1.000000e-08 reg 1.000000e+06 train accuracy: 0.091633 val accuracy: 0.073000
lr 1.000000e-08 reg 1.000000e+07 train accuracy: 0.085837 val accuracy: 0.081000
lr 1.000000e-07 reg 1.000000e+05 train accuracy: 0.109286 val accuracy: 0.091000
lr 1.000000e-07 reg 1.000000e+06 train accuracy: 0.098408 val accuracy: 0.102000
lr 1.000000e-07 reg 1.000000e+07 train accuracy: 0.107020 val accuracy: 0.102000
best validation accuracy achieved during cross-validation: 0.110000

In [6]:
# Evaluate your classifier on the test set
y_test_pred = best_svm.predict(X_test_feats)
test_accuracy = np.mean(y_test == y_test_pred)
print test_accuracy


0.082

In [7]:
# An important way to gain intuition about how an algorithm works is to
# visualize the mistakes that it makes. In this visualization, we show examples
# of images that are misclassified by our current system. The first column
# shows images that our system labeled as "plane" but whose true label is
# something other than "plane".

examples_per_class = 8
classes = ['plane', 'car', 'bird', 'cat', 'deer', 'dog', 'frog', 'horse', 'ship', 'truck']
for cls, cls_name in enumerate(classes):
    idxs = np.where((y_test != cls) & (y_test_pred == cls))[0]
    idxs = np.random.choice(idxs, examples_per_class, replace=False)
    for i, idx in enumerate(idxs):
        plt.subplot(examples_per_class, len(classes), i * len(classes) + cls + 1)
        plt.imshow(X_test[idx].astype('uint8'))
        plt.axis('off')
        if i == 0:
            plt.title(cls_name)
plt.show()


Inline question 1:

Describe the misclassification results that you see. Do they make sense?

We can say that animal categories are a major source of confusion. Classifier confuses many animals with different ones. Other than that, these results make sense. For instance confusing plane with car and truck is expected as they are quite similar in shape.

Bonus: Design your own features!

You have seen that simple image features can improve classification performance. So far we have tried HOG and color histograms, but other types of features may be able to achieve even better classification performance.

For bonus points, design and implement a new type of feature and use it for image classification on CIFAR-10. Explain how your feature works and why you expect it to be useful for image classification. Implement it in this notebook, cross-validate any hyperparameters, and compare its performance to the HOG + Color histogram baseline.