GRL-SNAM: Geometric Reinforcement Learning with Path Differential Hamiltonians for Simultaneous Navigation and Mapping in Unknown Environments
Aditya Sai Ellendula, Yi Wang, Minh Nguyen, Chandrajit Bajaj

TL;DR
GRL-SNAM introduces a geometric reinforcement learning framework that enables robots to navigate and map unknown environments efficiently using local sensory data and Hamiltonian optimization, without relying on global maps.
Contribution
It presents a novel Hamiltonian-based approach for simultaneous navigation and mapping using local observations, avoiding global map construction.
Findings
Preserves clearance and safety in navigation tasks
Generalizes well to unseen environments
Achieves high-quality navigation with minimal exploration
Abstract
We present GRL-SNAM, a geometric reinforcement learning framework for Simultaneous Navigation and Mapping(SNAM) in unknown environments. A SNAM problem is challenging as it needs to design hierarchical or joint policies of multiple agents that control the movement of a real-life robot towards the goal in mapless environment, i.e. an environment where the map of the environment is not available apriori, and needs to be acquired through sensors. The sensors are invoked from the path learner, i.e. navigator, through active query responses to sensory agents, and along the motion path. GRL-SNAM differs from preemptive navigation algorithms and other reinforcement learning methods by relying exclusively on local sensory observations without constructing a global map. Our approach formulates path navigation and mapping as a dynamic shortest path search and discovery process using controlled…
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Taxonomy
TopicsRobotic Path Planning Algorithms · Reinforcement Learning in Robotics · Robot Manipulation and Learning
