Abstract

This report demonstrates several methods used to make a self-driving vehicle using a supervised learning algorithm and a forward-facing RGBD camera. The project originally involved research in creating an adversarial attack on the vehicle’s model, but due to difficulties with the initial training of the car, the plans were discarded in favor of completing the imitation learning portion of the project. Many approaches were explored, but due to challenges introduced by an unbalanceddata set, the approaches had limited effectiveness.

Publication
Autonomous Driving Through Imitation Learning
CNN RNN Robotics Self Driving ComputerVision Indoo Navigation Depth Sensing PID Control