Discrete Control in Real-World Driving Environments using Deep Reinforcement Learning

11/29/2022
by   Avinash Amballa, et al.
0

Training self-driving cars is often challenging since they require a vast amount of labeled data in multiple real-world contexts, which is computationally and memory intensive. Researchers often resort to driving simulators to train the agent and transfer the knowledge to a real-world setting. Since simulators lack realistic behavior, these methods are quite inefficient. To address this issue, we introduce a framework (perception, planning, and control) in a real-world driving environment that transfers the real-world environments into gaming environments by setting up a reliable Markov Decision Process (MDP). We propose variations of existing Reinforcement Learning (RL) algorithms in a multi-agent setting to learn and execute the discrete control in real-world environments. Experiments show that the multi-agent setting outperforms the single-agent setting in all the scenarios. We also propose reliable initialization, data augmentation, and training techniques that enable the agents to learn and generalize to navigate in a real-world environment with minimal input video data, and with minimal training. Additionally, to show the efficacy of our proposed algorithm, we deploy our method in the virtual driving environment TORCS.

READ FULL TEXT
research
11/11/2019

Multi-Agent Connected Autonomous Driving using Deep Reinforcement Learning

The capability to learn and adapt to changes in the driving environment ...
research
06/30/2023

Zespol: A Lightweight Environment for Training Swarming Agents

Agent-based modeling (ABM) and simulation have emerged as important tool...
research
05/30/2022

Reinforcement Learning with a Terminator

We present the problem of reinforcement learning with exogenous terminat...
research
05/13/2021

Reinforcement Learning Based Safe Decision Making for Highway Autonomous Driving

In this paper, we develop a safe decision-making method for self-driving...
research
01/17/2019

Multi-agent Reinforcement Learning Embedded Game for the Optimization of Building Energy Control and Power System Planning

Most of the current game-theoretic demand-side management methods focus ...
research
03/29/2021

Robust Reinforcement Learning under model misspecification

Reinforcement learning has achieved remarkable performance in a wide ran...
research
10/15/2022

DyFEn: Agent-Based Fee Setting in Payment Channel Networks

In recent years, with the development of easy to use learning environmen...

Please sign up or login with your details

Forgot password? Click here to reset