Assistance robots have gained widespread attention in various industries such as logistics and human assistance. The tasks of guiding or following a human in a crowded environment such as airports or train stations to carry weight or goods is still an open problem. In these use cases, the robot is not only required to intelligently interact with humans, but also to navigate safely among crowds. Thus, especially highly dynamic environments pose a grand challenge due to the volatile behavior patterns and unpredictable movements of humans. In this paper, we propose a Deep-Reinforcement-Learning-based agent for human-guiding and -following tasks in crowded environments. Therefore, we incorporate semantic information to provide the agent with high-level information like the social states of humans, safety models, and class types. We evaluate our proposed approach against a benchmark approach without semantic information and demonstrated enhanced navigational safety and robustness. Moreover, we demonstrate that the agent could learn to adapt its behavior to humans, which improves the human-robot interaction significantly.
翻译:援助机器人在后勤和人力援助等各种行业受到广泛关注。在诸如机场或火车站等拥挤环境中指导或跟踪人类以携带重量或货物的任务仍然是一个尚未解决的问题。在这些使用案例中,机器人不仅需要与人类进行智能互动,而且还需要安全地在人群中航行。因此,由于人类行为模式变化无常和不可预测的移动,特别是高度动态的环境构成巨大挑战。在本文件中,我们提议为在拥挤环境中执行人类指导和任务而设立一个基于深力学习的代理人。因此,我们纳入了语义信息,以便向该代理人提供高层次的信息,如人类的社会状况、安全模式和类别等。我们对照没有语义信息的基准方法来评估我们的拟议方法,并展示了更强的航行安全和稳健性。此外,我们证明该代理人可以学习如何使其行为适应人类,从而大大改善人类-机器人的互动。