基于深度强化学习的机动机器人遥操作单眼反应性避碰

Raffaele Brilli, Marco Legittimo, F. Crocetti, Mirko Leomanni, M. L. Fravolini, G. Costante
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引用次数: 0

摘要

使微型飞行器(MAVs)具有半自主能力,以协助其远程操作在几个应用中至关重要。一般来说,远程操作人员不具备感知无人机附近障碍物的态势感知能力,也没有准备好提供避免碰撞的命令。在这项工作中,我们设计了一种新颖的远程操作设置,要求操作员提供一个简单的高级信号,编码他们期望无人机遵循的速度和方向。然后,我们赋予MAV端到端的深度强化学习(DRL)模型,该模型计算控制命令以跟踪所需的轨迹,同时执行避碰。与最先进的(SotA)作品不同,它允许机器人在3D空间中自由移动,只需要单目摄像机捕获的当前RGB图像和机器人当前位置,并且不需要对障碍物的形状和大小进行任何假设。我们通过将其与逼真模拟环境中的SotA基线进行比较,展示了我们策略的有效性和泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monocular Reactive Collision Avoidance for MAV Teleoperation with Deep Reinforcement Learning
Enabling Micro Aerial Vehicles (MAVs) with semi-autonomous capabilities to assist their teleoperation is crucial in several applications. Remote human operators do not have, in general, the situational awareness to perceive obstacles near the drone, nor the readiness to provide commands to avoid collisions. In this work, we devise a novel teleoperation setting that asks the operator to provide a simple high-level signal encoding the speed and the direction they expect the drone to follow. We then endow the MAV with an end-to-end Deep Reinforcement Learning (DRL) model that computes control commands to track the desired trajectory while performing collision avoidance. Differently from State-of-the-Art (SotA) works, it allows the robot to move freely in the 3D space, requires only the current RGB image captured by a monocular camera and the current robot position, and does not make any assumption about obstacle shape and size. We show the effectiveness and the generalization capabilities of our strategy by comparing it against a SotA baseline in photorealistic simulated environments.
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