See self-driving in action
This project builds a self-driving RC car using Raspberry Pi, Arduino and open source software. Raspberry Pi collects inputs from a camera module and an ultrasonic sensor, and sends data to a computer wirelessly. The computer processes input images and sensor data for object detection (stop sign and traffic light) and collision avoidance respectively. A neural network model runs on computer and makes predictions for steering based on input images. Predictions are then sent to the Arduino for RC car control.
-
Install
miniconda
on your computer -
Create
auto-rccar
environment with all necessary libraries for this project
conda env create -f environment.yml
-
Activate
auto-rccar
environment
source activate auto-rccar
To exit, simply close the terminal window. More info about managing Anaconda environment, please see here.
test/
rc_control_test.py
: RC car control with keyboard
stream_server_test.py
: video streaming from Pi to computer
ultrasonic_server_test.py
: sensor data streaming from Pi to computer
model_train_test/
data_test.npz
: sample data
train_predict_test.ipynb
: a jupyter notebook that goes through neural network model in OpenCV3
raspberryPi/
stream_client.py
: stream video frames in jpeg format to the host computer
ultrasonic_client.py
: send distance data measured by sensor to the host computer
arduino/
rc_keyboard_control.ino
: control RC car controller
computer/
cascade_xml/
trained cascade classifiers
chess_board/
images for calibration, captured by pi camera
picam_calibration.py
: pi camera calibration
collect_training_data.py
: collect images in grayscale, data saved as *.npz
model.py
: neural network model
model_training.py
: model training and validation
rc_driver_helper.py
: helper classes/functions for rc_driver.py
rc_driver.py
: receive data from raspberry pi and drive the RC car based on model prediction
Traffic_signal
trafic signal sketch contributed by @geek111
-
Testing: Flash
rc_keyboard_control.ino
to Arduino and runrc_control_test.py
to drive the RC car with keyboard. Runstream_server_test.py
on computer and then runstream_client.py
on raspberry pi to test video streaming. Similarly,ultrasonic_server_test.py
andultrasonic_client.py
can be used for sensor data streaming testing. -
Pi Camera calibration (optional): Take multiple chess board images using pi camera module at various angles and put them into
chess_board
folder, runpicam_calibration.py
and returned parameters from the camera matrix will be used inrc_driver.py
. -
Collect training/validation data: First run
collect_training_data.py
and then runstream_client.py
on raspberry pi. Press arrow keys to drive the RC car, pressq
to exit. Frames are saved only when there is a key press action. Once exit, data will be saved into newly createdtraining_data
folder. -
Neural network training: Run
model_training.py
to train a neural network model. Please feel free to tune the model architecture/parameters to achieve a better result. After training, model will be saved into newly createdsaved_model
folder. -
Cascade classifiers training (optional): Trained stop sign and traffic light classifiers are included in the
cascade_xml
folder, if you are interested in training your own classifiers, please refer to OpenCV doc and this great tutorial. -
Self-driving in action: First run
rc_driver.py
to start the server on the computer, and then runstream_client.py
andultrasonic_client.py
on raspberry pi.
中文文档 (感谢zhaoying9105)