We present a novel continuous time trajectory representation based on a Chebyshev polynomial basis, which when governed by known dynamics models, allows for full trajectory and robot dynamics estimation, particularly useful for high-performance robotics applications such as unmanned aerial vehicles. We show that we can gracefully incorporate model dynamics to our trajectory representation, within a factor-graph based framework, and leverage ideas from pseudo-spectral optimal control to parameterize the state and the control trajectories as interpolating polynomials. This allows us to perform efficient optimization at specifically chosen points derived from the theory, while recovering full trajectory estimates. Through simulated experiments we demonstrate the applicability of our representation for accurate flight dynamics estimation for multirotor aerial vehicles. The representation framework is general and can thus be applied to a multitude of high-performance applications beyond multirotor platforms.
翻译:我们以切比谢夫多元模型为基础,提出了一个新的连续时间轨迹说明,在采用已知动态模型时,允许对轨迹和机器人动态进行全面估计,对于无人驾驶飞行器等高性能机器人应用特别有用。 我们显示,我们可以在一个基于要素的参数框架内,将模型动态优雅地纳入我们的轨迹说明,并利用假光谱最佳控制的想法,将状态和控制轨迹参数化为相互交错的多边模型。这使我们能够在从理论中具体选择的点进行高效优化,同时恢复完整的轨迹估计。 通过模拟实验,我们展示了我们的代表性对多色飞行器精确飞行动态估计的适用性。 代表性框架是一般性的,因此可以适用于多色平台以外的多种高性能应用。