ArXiv TLDR

NEAT-NC: NEAT guided Navigation Cells for Robot Path Planning

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2604.15076

Hibatallah Meliani, Khadija Slimani, Samira Khoulji

cs.ROcs.AIcs.NE

TLDR

NEAT-NC introduces bio-inspired navigation cells to enhance NEAT's robot path planning in dynamic environments, evolving recurrent neural networks.

Key contributions

  • Developed NEAT-NC, a bio-inspired approach for robot path planning using navigation cells.
  • Enhances NEAT algorithm performance in complex, dynamic environments.
  • Evolves recurrent neural networks with navigation cell inputs, mimicking the brain's hippocampus.
  • Demonstrated adaptability for real-time dynamic path planning in robotics and games.

Why it matters

This paper introduces a novel bio-inspired method for robust robot navigation. Its success in dynamic environments suggests significant potential for real-time applications in robotics and gaming, leveraging biological theories for practical AI.

Original Abstract

To navigate a space, the brain makes an internal representation of the environment using different cells such as place cells, grid cells, head direction cells, border cells, and speed cells. All these cells, along with sensory inputs, enable an organism to explore the space around it. Inspired by these biological principles, we developed NEATNC, a Neuro-Evolution of Augmenting Topology guided Navigation Cells. The goal of the paper is to improve NEAT algorithm performance in path planning in dynamic environments using spatial cognitive cells. This approach uses navigation cells as inputs and evolves recurrent neural networks, representing the hippocampus part of the brain. The performance of the proposed algorithm is evaluated in different static and dynamic scenarios. This study highlights NEAT's adaptability to complex and different environments, showcasing the utility of biological theories. This suggests that our approach is well-suited for real-time dynamic path planning for robotics and games.

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