We present a self-supervised approach for learning to predict traversable paths for wheeled mobile robots that require good traction to navigate. Our algorithm, termed WayFAST (Waypoint Free Autonomous Systems for Traversability), uses RGB and depth data, along with navigation experience, to autonomously generate traversable paths in outdoor unstructured environments. Our key inspiration is that traction can be estimated for rolling robots using kinodynamic models. Using traction estimates provided by an online receding horizon estimator, we are able to train a traversability prediction neural network in a self-supervised manner, without requiring heuristics utilized by previous methods. We demonstrate the effectiveness of WayFAST through extensive field testing in varying environments, ranging from sandy dry beaches to forest canopies and snow covered grass fields. Our results clearly demonstrate that WayFAST can learn to avoid geometric obstacles as well as untraversable terrain, such as snow, which would be difficult to avoid with sensors that provide only geometric data, such as LiDAR. Furthermore, we show that our training pipeline based on online traction estimates is more data-efficient than other heuristic-based methods.
翻译:我们提出了一种自我监督的方法来学习如何预测需要良好引力才能导航的轮式移动机器人的可穿行路径。我们的算法,即WayFAST(Waypoint Free Adower Systems for Transversity),使用RGB和深度数据,加上导航经验,在室外无结构环境中自主生成可穿行路径。我们的主要灵感是,可以对使用运动动力模型的滚动机器人进行牵引估计。使用由在线后退地平线测量仪提供的牵引估计,我们能够以自我监督的方式培训可穿行预测神经网络,而不需要使用以往方法的超光学。我们通过在从干沙滩到森林树冠和雪覆盖草场等不同环境中进行的广泛实地测试,展示了WayFAST的有效性。我们的结果清楚地表明,WayFAST可以学会避免几何障碍和不易变的地形,例如雪,因为只有只提供测地数据的传感器,例如LDAR,所以很难避免。此外,我们展示了我们基于在线平面估计的训练管道比其他数据更有效率的方法。