We focus on the utilisation of reactive trajectory imitation controllers for goal-directed mobile robot navigation. We propose a topological navigation graph (TNG) - an imitation-learning-based framework for navigating through environments with intersecting trajectories. The TNG framework represents the environment as a directed graph composed of deep neural networks. Each vertex of the graph corresponds to a trajectory and is represented by a trajectory identification classifier and a trajectory imitation controller. For trajectory following, we propose the novel use of neural object detection architectures. The edges of TNG correspond to intersections between trajectories and are all represented by a classifier. We provide empirical evaluation of the proposed navigation framework and its components in simulated and real-world environments, demonstrating that TNG allows us to utilise non-goal-directed, imitation-learning methods for goal-directed autonomous navigation.
翻译:我们的重点是将反应轨迹仿制控制器用于定向移动机器人导航。我们建议使用一个地形导航图(TNG)——一个模拟学习框架,用于在有交叉轨迹的环境中航行。TNG框架代表环境,作为由深神经网络组成的定向图。图的每个顶端都对应一个轨迹,由轨迹识别分级器和轨迹仿制控制器代表。对于随后的轨迹,我们提议使用新颖的神经物体探测结构。TNG的边缘与轨迹之间的交叉点相对应,全部由分类器代表。我们对模拟和实际环境中的拟议导航框架及其组成部分进行实证评估,表明TNG允许我们利用非目标导向的模拟学习方法进行目标导向自主导航。