Reinforcement Learning with Frontier-Based Exploration via Autonomous Environment
Kenji Leong

TL;DR
This paper proposes a reinforcement learning approach integrated with frontier-based exploration and Visual-Graph SLAM to enhance the efficiency and accuracy of autonomous environment mapping in robotics.
Contribution
It introduces a novel method combining reinforcement learning with frontier-based exploration and Graph SLAM to optimize exploration routes and improve mapping accuracy.
Findings
Improved exploration efficiency in virtual environments.
Enhanced map accuracy compared to existing methods.
Effective frontier selection through reinforcement learning.
Abstract
Active Simultaneous Localisation and Mapping (SLAM) is a critical problem in autonomous robotics, enabling robots to navigate to new regions while building an accurate model of their surroundings. Visual SLAM is a popular technique that uses virtual elements to enhance the experience. However, existing frontier-based exploration strategies can lead to a non-optimal path in scenarios where there are multiple frontiers with similar distance. This issue can impact the efficiency and accuracy of Visual SLAM, which is crucial for a wide range of robotic applications, such as search and rescue, exploration, and mapping. To address this issue, this research combines both an existing Visual-Graph SLAM known as ExploreORB with reinforcement learning. The proposed algorithm allows the robot to learn and optimize exploration routes through a reward-based system to create an accurate map of the…
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Taxonomy
TopicsRobotic Path Planning Algorithms · Robotics and Sensor-Based Localization · Distributed Control Multi-Agent Systems
