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NavREn-Rl: Learning to fly in real environment via end-to-end deep reinforcement learning using monocular images

机译:NavREn-Rl:使用单眼图像通过端到端的深度强化学习来学习在真实环境中飞行

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We present NavREn-RL, an approach to NAVigate an unmanned aerial vehicle in an indoor Real ENvironment via end-to-end reinforcement learning (RL). A suitable reward function is designed keeping in mind the cost and weight constraints for micro drone with minimum number of sensing modalities. Collection of small number of expert data and knowledge based data aggregation is integrated into the RL process to aid convergence. Experimentation is carried out on a Parrot AR drone in different indoor arenas and the results are compared with other baseline technologies. We demonstrate how the drone successfully avoids obstacles and navigates across different arenas. Video of the drone navigating using the proposed approach can be seen at https://youtu.be/yOTkTHUPNVY.
机译:我们介绍了NavREn-RL,这是一种通过端到端强化学习(RL)在室内真实环境中对无人驾驶飞机进行导航的方法。设计适当的奖励功能时要牢记微型无人机的成本和重量限制,并采用最少数量的感应方式。少量专家数据的收集和基于知识的数据聚合被集成到RL过程中,以帮助融合。在不同室内区域的Parrot AR无人机上进行了实验,并将结果与​​其他基准技术进行了比较。我们演示了无人机如何成功避开障碍物并在不同领域中导航。使用提议的方法导航的无人机视频可以在https://youtu.be/yOTkTHUPNVY上看到。

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