Behavior Cloning for Mini Autonomous Car Path Following (2410.07209v1)
Abstract: This article presents the implementation and evaluation of a behavior cloning approach for route following with autonomous cars. Behavior cloning is a machine-learning technique in which a neural network is trained to mimic the driving behavior of a human operator. Using camera data that captures the environment and the vehicle's movement, the neural network learns to predict the control actions necessary to follow a predetermined route. Mini-autonomous cars, which provide a good benchmark for use, are employed as a testing platform. This approach simplifies the control system by directly mapping the driver's movements to the control outputs, avoiding the need for complex algorithms. We performed an evaluation in a 13-meter sizer route, where our vehicle was evaluated. The results show that behavior cloning allows for a smooth and precise route, allowing it to be a full-sized vehicle and enabling an effective transition from small-scale experiments to real-world implementations.
- Pablo Moraes (12 papers)
- Christopher Peters (8 papers)
- Hiago Sodre (12 papers)
- William Moraes (8 papers)
- Sebastian Barcelona (9 papers)
- Juan Deniz (6 papers)
- Victor Castelli (2 papers)
- Bruna Guterres (5 papers)
- Ricardo Grando (15 papers)