EDEN: Entorhinal Driven Egocentric Navigation Toward Robotic Deployment
Mikolaj Walczak, Romina Aalishah, Wyatt Mackey, Brittany Story, David L. Boothe Jr., Nicholas Waytowich, Xiaomin Lin, Tinoosh Mohsenin

TL;DR
EDEN is a biologically inspired navigation framework that combines entorhinal-like grid cell representations with reinforcement learning, enabling robots to perform accurate, goal-directed egocentric navigation in complex environments.
Contribution
The paper introduces EDEN, integrating learned grid cell representations with reinforcement learning for improved robotic navigation, including a trainable grid cell encoder from sensory data.
Findings
EDEN achieves over 94% success in complex environments.
The grid cell encoder produces interpretable spatial embeddings.
EDEN outperforms baseline agents using raw inputs.
Abstract
Deep reinforcement learning agents are often fragile while humans remain adaptive and flexible to varying scenarios. To bridge this gap, we present EDEN, a biologically inspired navigation framework that integrates learned entorhinal-like grid cell representations and reinforcement learning to enable autonomous navigation. Inspired by the mammalian entorhinal-hippocampal system, EDEN allows agents to perform path integration and vector-based navigation using visual and motion sensor data. At the core of EDEN is a grid cell encoder that transforms egocentric motion into periodic spatial codes, producing low-dimensional, interpretable embeddings of position. To generate these activations from raw sensory input, we combine fiducial marker detections in the lightweight MiniWorld simulator and DINO-based visual features in the high-fidelity Gazebo simulator. These spatial representations…
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Taxonomy
TopicsRobotic Path Planning Algorithms · Robotics and Automated Systems · Control and Dynamics of Mobile Robots
