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Fast Lane-Level Intersection Estimation using Markov Chain Monte Carlo Sampling and B-Spline Refinement

机译:使用马尔可夫链Monte Carlo采样和B样条细化的快速车道级交叉口估计

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Estimating the current scene and understanding the potential maneuvers are essential capabilities of automated vehicles. Most approaches rely heavily on the correctness of maps, but neglect the possibility of outdated information. We present an approach that is able to estimate lanes without relying on any map prior. The estimation is based solely on the trajectories of other traffic participants and is thereby able to incorporate complex environments. In particular, we are able to estimate the scene in the presence of heavy traffic and occlusions. The algorithm first estimates a coarse lane-level intersection model by Markov chain Monte Carlo sampling and refines it later by aligning the lane course with the measurements using a non-linear least squares formulation. We model the lanes as 1D cubic B-splines and can achieve error rates of less than 10cm within real-time.
机译:估计当前的场景并理解潜在的演习是自动车辆的必备能力。大多数方法严重依赖地图的正确性,但忽略了过时信息的可能性。我们提出了一种能够估算车道的方法,而无需依赖于任何地图。估计仅基于其他交通参与者的轨迹,从而能够包含复杂的环境。特别是,我们能够在繁忙的交通和闭塞存在下估计场景。该算法首先通过Markov链蒙特卡罗采样进行估计粗车道级交叉点模型,并通过使用非线性最小二乘配方对准车道课程来使车道课程与测量对准。我们将车道塑造为1D立方B样条,可以在实时达到10cm的误差率。

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