
Accelerating the training of deep reinforcement learning in autonomous driving
Author(s) -
Emmanuel Ifeanyi Iroegbu,
Madhavi Devaraj
Publication year - 2021
Publication title -
iaes international journal of artificial intelligence
Language(s) - English
Resource type - Journals
eISSN - 2252-8938
pISSN - 2089-4872
DOI - 10.11591/ijai.v10.i3.pp649-656
Subject(s) - reinforcement learning , autoencoder , artificial intelligence , deep learning , computer science , pixel , training (meteorology) , quality (philosophy) , reinforcement , computer vision , raw data , machine learning , engineering , philosophy , physics , epistemology , meteorology , structural engineering , programming language
Deep reinforcement learning has been successful in solving common autonomous driving tasks such as lane-keeping by simply using pixel data from the front view camera as input. However, raw pixel data contains a very high-dimensional observation that affects the learning quality of the agent due to the complexity imposed by a 'realistic' urban environment. Ergo, we investigate how compressing the raw pixel data from high-dimensional state to low-dimensional latent space offline using a variational autoencoder can significantly improve the training of a deep reinforcement learning agent. We evaluated our method on a simulated autonomous vehicle in car learning to act and compared our results with many baselines including deep deterministic policy gradient, proximal policy optimization, and soft actorcritic. The result shows that the method greatly accelerates the training time and there was a remarkable improvement in the quality of the deep reinforcement learning agent.