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Memory-Based Exploration-Value Evaluation Model for Visual Navigation

Yongquan Feng, Liyang Xu, Minglong Li, Ruochun Jin, Da Huang, Shaowu Yang, WENJING YANG

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Abstract

We propose a hierarchical visual navigation solu- tion, called Memory-based Exploration-value Evaluation Model (MEEM), to improve the agent’s navigation performance. MEEM employs a hierarchical policy to tackle the challenge of sparse rewards, holds an episodic memory to store the historical information of the agent, and applies an Exploration-value Evaluation Model to calculate an exploration-value for action planning at each location in the observable area. We experi- mentally verify MEEM by navigation performance comparison on two datasets including the grid-map dataset and the 3D scenes Gibson dataset, where our approach achieves state-of- the-art performance on both. Specifically, the overall success rate of MEEM is 95% on the grid-map dataset while the best competitor reaches 68% only. As for the Gibson dataset, the success rate of ours and the best competitor SemExp are 69.8% and 54.4%, respectively. Ablation analysis on the tile- map dataset indicates that all three components of MEEM have positive effects.

Index terms

Vision-Based Navigation Reinforcement Learning AI-Enabled Robotics