Learning to Drive with Deep Reinforcement Learning

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Autonomous driving cars are important due to improved safety and fuel efficiency. Various techniques have been described to consider only a single task, for example, recognition, prediction, and planning with supervised learning techniques. Some limitations of previous studies are: (1) human bias from human demonstration; (2) the need for multiple components such as localization, road mapping etc. with a complicated fusion logic; (3) in reinforcement learning, the focus was mostly on the learning algorithms but less on the evaluation of different sensors and reward functions. We describe end-to-end reinforcement learning for an autonomous car, which used only a single reinforcement learning model to create the autonomous car. Further, we designed a new efficient reward function to make the agent learn faster (18% improvement for all settings compared to the baseline reward function) and build the car with only the necessary perceptions and sensors. We show that it performed better with state-of-the-art off-policy reinforcement learning for continuous action (SAC, TD3).

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