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Learning to Segment and Represent Motion Primitives from Driving Data for Motion Planning Applications

机译:学习从驾驶数据中分割和表示运动原语,以进行运动规划应用

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Developing an intelligent vehicle which can perform human-like actions requires the ability to learn basic driving skills from a large amount of naturalistic driving data. The algorithms will become efficient if we could decompose the complex driving tasks into motion primitives which represent the elementary compositions of driving skills. Therefore, the purpose of this paper is to segment unlabeled trajectory data into a library of motion primitives. By applying a probabilistic inference based on an iterative Expectation-Maximization algorithm, our method segments the collected trajectories while learning a set of motion primitives represented by the dynamic movement primitives. The proposed method utilizes the mutual dependencies between the segmentation and representation of motion primitives and the driving-specific based initial segmentation. By utilizing this mutual dependency and the initial condition, this paper presents how we can enhance the performance of both the segmentation and the motion primitive library establishment. We also evaluate the applicability of the primitive representation method to imitation learning and motion planning algorithms. The model is trained and validated by using the driving data collected from the Beijing Institute of Technology intelligent vehicle platform. The results show that the proposed approach can find the proper segmentation and establish the motion primitive library simultaneously.
机译:开发能够执行类似人的动作的智能车辆需要具有从大量自然驾驶数据中学习基本驾驶技能的能力。如果我们能够将复杂的驾驶任务分解为运动原语(代表驾驶技能的基本组成),这些算法将变得高效。因此,本文的目的是将未标记的轨迹数据分割成运动原语库。通过应用基于迭代期望最大化算法的概率推理,我们的方法在学习由动态运动图元表示的一组运动图元的同时,对收集的轨迹进行了分段。所提出的方法利用了运动原语的分割和表示与基于驾驶的初始分割之间的相互依赖性。通过利用这种相互依赖性和初始条件,本文介绍了如何增强分割和运动原始库建立的性能。我们还评估了原始表示方法在模仿学习和运动计划算法中的适用性。该模型使用从北京理工大学智能车辆平台收集的驾驶数据进行训练和验证。结果表明,该方法能够找到合适的分割并同时建立运动图元库。

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