基于压缩视觉信息的深度强化学习的自主负载载体逼近

Simon Hadwiger, Tobias Meisen
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引用次数: 1

摘要

在内部物流中,大量的任务已经完全自动化了。这尤其适用于指定并可实现严格预定义的位置和路径的任务。当情况并非如此,并且存在一个更有活力的环境时,挑战仍然存在。这种动态环境的一个例子是用叉车接近和抬起自由定位的托盘式运输船。在这项工作中,我们提出了一种基于RGB相机数据的叉车接近和拾取托盘状载体的方法。与以前的工作不同,我们的方法不需要估计负载载体的姿态。为了控制叉车,我们使用了软行为临界强化学习智能体。所需的输入包括载货车的边界框以及叉车的当前速度和转向。我们的仿真实验表明,这种压缩的视觉信息足以在减少训练时间和网络规模的同时成功地接近负载载体。在下一步中,我们将把给出的结果应用到一个真实的场景中,并研究它的可转移性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Autonomous Load Carrier Approaching Based on Deep Reinforcement Learning with Compressed Visual Information
In intralogistics, a large number of tasks are already fully automated. This holds true especially for tasks where strictly predefined positions and paths are specified and implementable. Challenges still exist when this is not the case and a more dynamic environment is present. One example of such a dynamic environment is the approaching and lifting of freely positioned pallet-like carriers with forklifts. In this work, we propose a method for approaching and picking up pallet-like carriers with a forklift based on data from an RGB camera. Unlike previous work, our method does not require an estimation of the pose of the load carrier. In order to control the forklift, we use a soft actor critical reinforcement learning agent. The required input consists of the bounding box of the load carrier in combination with the current speed and steering of the forklift. Our simulation experiments show that this compressed visual information is sufficient to successfully approach load carriers while reducing training time and network size. In a next step, we are going to apply the presented result on a real-world scenario and investigate its transferability.
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