Mobile robots have become more and more popular in our daily life. In large-scale and crowded environments, how to navigate safely with localization precision is a critical problem. To solve this problem, we proposed a curiosity-based framework that can find an effective path with the consideration of human comfort, localization uncertainty, crowds, and the cost-to-go to the target. Three parts are involved in the proposed framework: the distance assessment module, the curiosity gain of the information-rich area, and the curiosity negative gain of crowded areas. The curiosity gain of the information-rich area was proposed to provoke the robot to approach localization referenced landmarks. To guarantee human comfort while coexisting with robots, we propose curiosity gain of the spacious area to bypass the crowd and maintain an appropriate distance between robots and humans. The evaluation is conducted in an unstructured environment. The results show that our method can find a feasible path, which can consider the localization uncertainty while simultaneously avoiding the crowded area. Curiosity-based Robot Navigation under Uncertainty in Crowded Environments
翻译:移动机器人在我们日常生活中越来越受欢迎。 在大规模和拥挤的环境下,如何以本地化精确度安全导航是一个关键问题。为了解决这个问题,我们提出了一个基于好奇心的框架,这个框架可以找到一条有效的路径,其中考虑到人类舒适度、本地化不确定性、人群和对目标的成本。有三个部分涉及拟议框架:远程评估模块、信息丰富地区的好奇度增益以及拥挤地区的好奇度负增。信息丰富地区的好奇度收益是为了促使机器人接近本地化参考地标而提出的。为了保证人类在与机器人共存的同时舒适,我们建议从宽广地区获取好奇心,绕过人群,保持机器人与人类之间的适当距离。评估是在一个没有结构的环境中进行的。结果显示,我们的方法可以找到一条可行的路径,既考虑本地化不确定性,又避免拥挤地区。 Clod Enct 环境中的不确定性下基于好奇力的机器人导航。