Abstract

An effective way to achieve intelligence is to simulate various intelligent behaviors in the human brain. In recent years, bio-inspired learning methods have emerged, and they are different from the classical mathematical programming principle. From the perspective of brain inspiration, reinforcement learning has gained additional interest in solving decision-making tasks as increasing neuroscientific research demonstrates that significant links exist between reinforcement learning and specific neural substrates. Because of the tremendous research that focuses on human brains and reinforcement learning, scientists have investigated how robots can autonomously tackle complex tasks in the form of making a self-driving agent control in a human-like way. In this study, we propose an end-to-end architecture using novel deep-Q-network architecture in conjunction with a recurrence to resolve the problem in the field of simulated self-driving. The main contribution of this study is that we trained the driving agent using a brain-inspired trial-and-error technique, which was in line with the real world situation. Besides, there are three innovations in the proposed learning network: raw screen outputs are the only information which the driving agent can rely on, a weighted layer that enhances the differences of the lengthy episode, and a modified replay mechanism that overcomes the problem of sparsity and accelerates learning. The proposed network was trained and tested under a third-party OpenAI Gym environment. After training for several episodes, the resulting driving agent performed advanced behaviors in the given scene. We hope that in the future, the proposed brain-inspired learning system would inspire practicable self-driving control solutions.

Highlights

  • Research in brain science has gradually received the public’s attention

  • The human brain is the only truly general intelligent system that can cope with different cognitive functions with extremely low energy consumption

  • Some bio-inspired intelligent methods have emerged (Marblestone et al, 2016; Gershman and Daw, 2017; Hassabis et al, 2017; Botvinick et al, 2019), and they are clearly different from the classical mathematical programming principle

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Summary

Introduction

Research in brain science has gradually received the public’s attention. The human brain is the only truly general intelligent system that can cope with different cognitive functions with extremely low energy consumption. Learning from the information processing mechanisms of the brain is clearly the key to building stronger and more efficient machine intelligence. Brain-Inspired Self-Driving (Poo et al, 2016). Some bio-inspired intelligent methods have emerged (Marblestone et al, 2016; Gershman and Daw, 2017; Hassabis et al, 2017; Botvinick et al, 2019), and they are clearly different from the classical mathematical programming principle. Bio-inspired intelligence has the advantages of strong robustness and an efficient, well distributed computing mechanism. It is easy to combine with other methods

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