SOCIALGYM: A Framework for Benchmarking Social Robot Navigation
Jarrett Holtz, Joydeep Biswas

TL;DR
SOCIALGYM is a lightweight 2D simulation framework designed to benchmark social robot navigation, enabling evaluation of various learning approaches in a safe, extensible environment that focuses on social compliance and transferability.
Contribution
The paper introduces SOCIALGYM, a novel extensible 2D simulation environment and benchmark scenario for social robot navigation, addressing limitations of existing simulators.
Findings
Model-based approaches show higher data efficiency.
Reinforcement learning policies achieve better social compliance.
Benchmark results highlight transferability of learned behaviors.
Abstract
Robots moving safely and in a socially compliant manner in dynamic human environments is an essential benchmark for long-term robot autonomy. However, it is not feasible to learn and benchmark social navigation behaviors entirely in the real world, as learning is data-intensive, and it is challenging to make safety guarantees during training. Therefore, simulation-based benchmarks that provide abstractions for social navigation are required. A framework for these benchmarks would need to support a wide variety of learning approaches, be extensible to the broad range of social navigation scenarios, and abstract away the perception problem to focus on social navigation explicitly. While there have been many proposed solutions, including high fidelity 3D simulators and grid world approximations, no existing solution satisfies all of the aforementioned properties for learning and evaluating…
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Taxonomy
TopicsSocial Robot Interaction and HRI · Reinforcement Learning in Robotics · Evacuation and Crowd Dynamics
