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AgilePilot: DRL-Based Drone Agent for Real-Time Motion Planning in Dynamic Environments by Leveraging Object Detection

Roohan Ahmed Khan,Valerii Serpiva, Demetros Aschalew,Aleksey Fedoseev,Dzmitry Tsetserukou

arXiv · Robotics(2025)

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Abstract
Autonomous drone navigation in dynamic environments remains a critical challenge, especially when dealing with unpredictable scenarios including fast-moving objects with rapidly changing goal positions. While traditional planners and classical optimisation methods have been extensively used to address this dynamic problem, they often face real-time, unpredictable changes that ultimately leads to sub-optimal performance in terms of adaptiveness and real-time decision making. In this work, we propose a novel motion planner, AgilePilot, based on Deep Reinforcement Learning (DRL) that is trained in dynamic conditions, coupled with real-time Computer Vision (CV) for object detections during flight. The training-to-deployment framework bridges the Sim2Real gap, leveraging sophisticated reward structures that promotes both safety and agility depending upon environment conditions. The system can rapidly adapt to changing environments, while achieving a maximum speed of 3.0 m/s in real-world scenarios. In comparison, our approach outperforms classical algorithms such as Artificial Potential Field (APF) based motion planner by 3 times, both in performance and tracking accuracy of dynamic targets by using velocity predictions while exhibiting 90 experiments. This work highlights the effectiveness of DRL in tackling real-time dynamic navigation challenges, offering intelligent safety and agility.
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要点】:论文提出了一种基于深度强化学习(DRL)的实时动态环境中的无人机运动规划器AgilePilot,通过结合实时计算机视觉进行物体检测,实现高效适应动态环境并提高导航性能。

方法】:AgilePilot使用DRL进行训练,结合实时计算机视觉技术进行物体检测,并采用先进的奖励结构来优化安全性与敏捷性。

实验】:实验在90次测试中完成,使用未知的数据集,结果显示AgilePilot在性能和跟踪动态目标的准确性上比基于人工势场(APF)的运动规划器高出3倍,且在真实世界场景中达到最大速度3.0 m/s。