ROAICVLGApr 21, 2025

A General Infrastructure and Workflow for Quadrotor Deep Reinforcement Learning and Reality Deployment

arXiv:2504.15129v12 citationsh-index: 5
Originality Synthesis-oriented
AI Analysis

This work addresses the problem of sim-to-real transfer and infrastructure gaps for researchers and practitioners in robotics, though it is incremental as it builds on existing methods by integrating them into a unified workflow.

The authors tackled the challenge of deploying deep reinforcement learning policies on quadrotors in unstructured outdoor environments by proposing a comprehensive platform that integrates training, simulation, and hardware, enabling policies to be trained from scratch and deployed in minutes with robust outdoor flight performance.

Deploying robot learning methods to a quadrotor in unstructured outdoor environments is an exciting task. Quadrotors operating in real-world environments by learning-based methods encounter several challenges: a large amount of simulator generated data required for training, strict demands for real-time processing onboard, and the sim-to-real gap caused by dynamic and noisy conditions. Current works have made a great breakthrough in applying learning-based methods to end-to-end control of quadrotors, but rarely mention the infrastructure system training from scratch and deploying to reality, which makes it difficult to reproduce methods and applications. To bridge this gap, we propose a platform that enables the seamless transfer of end-to-end deep reinforcement learning (DRL) policies. We integrate the training environment, flight dynamics control, DRL algorithms, the MAVROS middleware stack, and hardware into a comprehensive workflow and architecture that enables quadrotors' policies to be trained from scratch to real-world deployment in several minutes. Our platform provides rich types of environments including hovering, dynamic obstacle avoidance, trajectory tracking, balloon hitting, and planning in unknown environments, as a physical experiment benchmark. Through extensive empirical validation, we demonstrate the efficiency of proposed sim-to-real platform, and robust outdoor flight performance under real-world perturbations. Details can be found from our website https://emnavi.tech/AirGym/.

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