Both pedestrian and robot comfort are of the highest priority whenever a robot is placed in an environment containing human beings. In the case of pedestrian-unaware mobile robots this desire for safety leads to the freezing robot problem, where a robot confronted with a large dynamic group of obstacles (such as a crowd of pedestrians) would determine all forward navigation unsafe causing the robot to stop in place. In order to navigate in a socially compliant manner while avoiding the freezing robot problem we are interested in understanding the flow of pedestrians in crowded scenarios. By treating the pedestrians in the crowd as particles moved along by the crowd itself we can model the system as a time dependent flow field. From this flow field we can extract different flow segments that reflect the motion patterns emerging from the crowd. These motion patterns can then be accounted for during the control and navigation of a mobile robot allowing it to move safely within the flow of the crowd to reach a desired location within or beyond the flow. We combine flow-field extraction with a discrete heuristic search to create Flow-Informed path planning (FIPP). We provide empirical results showing that when compared against a trajectory-rollout local path planner, a robot using FIPP was able not only to reach its goal more quickly but also was shown to be more socially compliant than a robot using traditional techniques both in simulation and on real robots.
翻译:当机器人被安置在包含人类的环境中时,行人和机器人的舒适度都是最优先的。对于行人和无防护的移动机器人来说,这种对安全的渴望会导致冷冻的机器人问题,因为机器人面对大量动态障碍(如行人群)将决定所有前方导航不安全,使机器人停止工作。为了在社会上遵守规则,避免冷冻机器人问题,我们有兴趣了解行人在拥挤环境中的流动情况。通过将人群中的行人看成由人群本身移动的粒子来对待行人,我们可以将系统模拟成一个取决于时间的流流场。从这个流场中,我们可以抽出反映从人群中产生的运动模式的不同流程段。在移动机器人的控制和航行期间,这些运动模式可以算出所有前方导航不安全,使机器人在人群流动中安全地移动,以便到达流动中或流动之外的理想位置。我们有兴趣将流动场的抽取与离心搜索结合起来,以创建流动化路径规划(FIPP)。我们提供经验结果,表明,与轨迹滚动的路径规划相比,我们无法将系统快速地展示,但使用更符合社会性的机器人的模拟技术则无法快速地在机器人上显示,在更符合现实的机器人模拟技术上也无法很快地实现。