Traffic
Due to interaction with several of the course’s projects, and given that parts of this course material were originally from 2020, the latest version of Python you should use in this course is Python 3.10.
Write an AI to identify which traffic sign appears in a photograph.
$ python traffic.py gtsrb
Epoch 1/10
500/500 [==============================] - 5s 9ms/step - loss: 3.7139 - accuracy: 0.1545
Epoch 2/10
500/500 [==============================] - 6s 11ms/step - loss: 2.0086 - accuracy: 0.4082
Epoch 3/10
500/500 [==============================] - 6s 12ms/step - loss: 1.3055 - accuracy: 0.5917
Epoch 4/10
500/500 [==============================] - 5s 11ms/step - loss: 0.9181 - accuracy: 0.7171
Epoch 5/10
500/500 [==============================] - 7s 13ms/step - loss: 0.6560 - accuracy: 0.7974
Epoch 6/10
500/500 [==============================] - 9s 18ms/step - loss: 0.5078 - accuracy: 0.8470
Epoch 7/10
500/500 [==============================] - 9s 18ms/step - loss: 0.4216 - accuracy: 0.8754
Epoch 8/10
500/500 [==============================] - 10s 20ms/step - loss: 0.3526 - accuracy: 0.8946
Epoch 9/10
500/500 [==============================] - 10s 21ms/step - loss: 0.3016 - accuracy: 0.9086
Epoch 10/10
500/500 [==============================] - 10s 20ms/step - loss: 0.2497 - accuracy: 0.9256
333/333 - 5s - loss: 0.1616 - accuracy: 0.9535
When to Do It
How to Get Help
- Ask questions via Ed!
- Ask questions via any of CS50’s communities!
Background
As research continues in the development of self-driving cars, one of the key challenges is computer vision, allowing these cars to develop an understanding of their environment from digital images. In particular, this involves the ability to recognize and distinguish road signs – stop signs, speed limit signs, yield signs, and more.
In this project, you’ll use TensorFlow to build a neural network to classify road signs based on an image of those signs. To do so, you’ll need a labeled dataset: a collection of images that have already been categorized by the road sign represented in them.
Several such data sets exist, but for this project, we’ll use the German Traffic Sign Recognition Benchmark (GTSRB) dataset, which contains thousands of images of 43 different kinds of road signs.
Getting Started
- Download the distribution code from https://cdn.cs50.net/ai/2023/x/projects/5/traffic.zip and unzip it.
- Download the data set for this project and unzip it. Move the resulting
gtsrb
directory inside of yourtraffic
directory. - Inside of the
traffic
directory, runpip3 install -r requirements.txt
to install this project’s dependencies:opencv-python
for image processing,scikit-learn
for ML-related functions, andtensorflow
for neural networks.
Understanding
First, take a look at the data set by opening the gtsrb
directory. You’ll notice 43 subdirectories in this dataset, numbered 0
through 42
. Each numbered subdirectory represents a different category (a different type of road sign). Within each traffic sign’s directory is a collection of images of that type of traffic sign.
Next, take a look at traffic.py
. In the main
function, we accept as command-line arguments a directory containing the data and (optionally) a filename to which to save the trained model. The data and corresponding labels are then loaded from the data directory (via the load_data
function) and split into training and testing sets. After that, the get_model
function is called to obtain a compiled neural network that is then fitted on the training data. The model is then evaluated on the testing data. Finally, if a model filename was provided, the trained model is saved to disk.
The load_data
and get_model
functions are left to you to implement.
Specification
An automated tool assists the staff in enforcing the constraints in the below specification. Your submission will fail if any of these are not handled properly, if you import modules other than those explicitly allowed, or if you modify functions other than as permitted.
Complete the implementation of load_data
and get_model
in traffic.py
.
- The
load_data
function should accept as an argumentdata_dir
, representing the path to a directory where the data is stored, and return image arrays and labels for each image in the data set.- You may assume that
data_dir
will contain one directory named after each category, numbered0
throughNUM_CATEGORIES - 1
. Inside each category directory will be some number of image files. - Use the OpenCV-Python module (
cv2
) to read each image as anumpy.ndarray
(anumpy
multidimensional array). To pass these images into a neural network, the images will need to be the same size, so be sure to resize each image to have widthIMG_WIDTH
and heightIMG_HEIGHT
. - The function should return a tuple
(images, labels)
.images
should be a list of all of the images in the data set, where each image is represented as anumpy.ndarray
of the appropriate size.labels
should be a list of integers, representing the category number for each of the corresponding images in theimages
list. - Your function should be platform-independent: that is to say, it should work regardless of operating system. Note that on macOS, the
/
character is used to separate path components, while the\
character is used on Windows. Useos.sep
andos.path.join
as needed instead of using your platform’s specific separator character.
- You may assume that
- The
get_model
function should return a compiled neural network model.- You may assume that the input to the neural network will be of the shape
(IMG_WIDTH, IMG_HEIGHT, 3)
(that is, an array representing an image of widthIMG_WIDTH
, heightIMG_HEIGHT
, and3
values for each pixel for red, green, and blue). - The output layer of the neural network should have
NUM_CATEGORIES
units, one for each of the traffic sign categories. - The number of layers and the types of layers you include in between are up to you. You may wish to experiment with:
- different numbers of convolutional and pooling layers
- different numbers and sizes of filters for convolutional layers
- different pool sizes for pooling layers
- different numbers and sizes of hidden layers
- dropout
- You may assume that the input to the neural network will be of the shape
- In a separate file called README.md, document (in at least a paragraph or two) your experimentation process. What did you try? What worked well? What didn’t work well? What did you notice?
Ultimately, much of this project is about exploring documentation and investigating different options in cv2
and tensorflow
and seeing what results you get when you try them!
You should not modify anything else in traffic.py
other than the functions the specification calls for you to implement, though you may write additional functions and/or import other Python standard library modules. You may also import numpy
or pandas
, if familiar with them, but you should not use any other third-party Python modules. You may modify the global variables defined at the top of the file to test your program with other values.
Hints
- Check out the official Tensorflow Keras overview for some guidelines for the syntax of building neural network layers. You may find the lecture source code useful as well.
- The OpenCV-Python documentation may prove helpful for reading images as arrays and then resizing them.
- Once you’ve resized an image
img
, you can verify its dimensions by printing the value ofimg.shape
. If you’ve resized the image correctly, its shape should be(30, 30, 3)
(assumingIMG_WIDTH
andIMG_HEIGHT
are both30
). - If you’d like to practice with a smaller data set, you can download a modified dataset that contains only 3 different types of road signs instead of 43.
How to Submit
Beginning 2024-01-01T00:00:00-05:00, submissions for this project will be temporarily suspended while we migrate to a different submission platform. The course is not ending! We just need a few days to roll out some changes. We appreciate your patience, and expect submissions will only be closed until January 4 at the latest.