Motion planning in environments with multiple agents is critical to many important autonomous applications such as autonomous vehicles and assistive robots. This paper considers the problem of motion planning, where the controlled agent shares the environment with multiple uncontrolled agents. First, a predictive model of the uncontrolled agents is trained to predict all possible trajectories within a short horizon based on the scenario. The prediction is then fed to a motion planning module based on model predictive control. We proved generalization bound for the predictive model using three different methods, post-bloating, support vector machine (SVM), and conformal analysis, all capable of generating stochastic guarantees of the correctness of the predictor. The proposed approach is demonstrated in simulation in a scenario emulating autonomous highway driving.
翻译:在有多种物剂的环境中进行运动规划对许多重要的自主应用至关重要,例如自主飞行器和辅助机器人。本文件审议了运动规划问题,受控物剂与多个不受控制的物剂共享环境。首先,对不受控制的物剂的预测模型进行了培训,以根据设想方案在短视范围内预测所有可能的轨迹。然后,将预测结果输入基于模型预测控制的运动规划模块。我们用三种不同方法,即爆炸后、辅助矢量机(SVM)和符合性分析,对预测物的正确性产生随机保证。在模拟假设方案模拟自主高速公路驱动时,示范了拟议方法。