Enhancing Exploration Efficiency using Uncertainty-Aware Information Prediction
Kim, Seunghwan, Shin, Heejung, Yim, Gaeun, Kim, Changseung, Oh, Hyondong
–arXiv.org Artificial Intelligence
Autonomous exploration is a crucial aspect of robotics, enabling robots to explore unknown environments and generate maps without prior knowledge. This paper proposes a method to enhance exploration efficiency by integrating neural network-based occupancy grid map prediction with uncertainty-aware Bayesian neural network. Uncertainty from neural network-based occupancy grid map prediction is probabilistically integrated into mutual information for exploration. To demonstrate the effectiveness of the proposed method, we conducted comparative simulations within a frontier exploration framework in a realistic simulator environment against various information metrics. The proposed method showed superior performance in terms of exploration efficiency.
arXiv.org Artificial Intelligence
Dec-17-2024