Object-oriented Map Exploration and Construction Based on Auxiliary Task Aided DRL

Junzhe Xu, Jianhua Zhang, Shengyong Chen, Honghai Liu
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Abstract

Environment exploration by autonomous robots through deep reinforcement learning (DRL) based methods has attracted more and more attention. However, existing methods usually focus on robot navigation to single or multiple fixed goals, while ignoring the perception and construction of external environments. In this paper, we propose a novel environment exploration task based on DRL, which requires a robot fast and completely perceives all objects of interest, and reconstructs their poses in a global environment map, as much as the robot can do. To this end, we design an auxiliary task aided DRL model, which is integrated with the auxiliary object detection and 6-DoF pose estimation components. The outcome of auxiliary tasks can improve the learning speed and robustness of DRL, as well as the accuracy of object pose estimation. Comprehensive experimental results on the indoor simulation platform AI2-THOR have shown the effectiveness and robustness of our method.
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基于辅助任务辅助DRL的面向对象地图勘探与构建
基于深度强化学习(DRL)的自主机器人环境探索方法越来越受到人们的关注。然而,现有的方法通常侧重于机器人导航到单个或多个固定目标,而忽略了外部环境的感知和构建。在本文中,我们提出了一种基于DRL的新型环境探索任务,该任务要求机器人能够快速完整地感知所有感兴趣的物体,并在全局环境地图中尽可能多地重建它们的姿态。为此,我们设计了一种辅助任务辅助DRL模型,该模型集成了辅助目标检测和六自由度姿态估计组件。辅助任务的结果可以提高DRL的学习速度和鲁棒性,以及目标姿态估计的准确性。在室内仿真平台AI2-THOR上的综合实验结果表明了该方法的有效性和鲁棒性。
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