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Discrete and Continuous, Probabilistic Anticipation for Autonomous Robots in Urban Environments

机译:城市环境中自主机器人的离散和连续概率概率预测

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This paper develops a probabilistic anticipation algorithm for dynamic objects observed by an autonomous robot in an urban environment. Predictive Gaussian mixture models are used due to their ability to probabilistically capture continuous and discrete obstacle decisions and behaviors; the predictive system uses the probabilistic output (state estimate and covariance) of a tracking system and map of the environment to compute the probability distribution over future obstacle states for a specified anticipation horizon. A Gaussian splitting method is proposed based on the sigma-point transform and the nonlinear dynamics function, which enables increased accuracy as the number of mixands grows. An approach to caching elements of this optimal splitting method is proposed, in order to enable real-time implementation. Simulation results and evaluations on data from the research community demonstrate that the proposed algorithm can accurately anticipate the probability distributions over future states of nonlinear systems.
机译:本文针对城市环境中自主机器人观测到的动态物体,提出了一种概率预测算法。使用预测性高斯混合模型是因为它们具有概率性地捕获连续和离散障碍物决策和行为的能力。预测系统使用跟踪系统的概率输出(状态估计和协方差)和环境图来计算指定预期范围内未来障碍物状态的概率分布。提出了一种基于西格玛点变换和非线性动力学函数的高斯分裂方法,该方法可以随着混合数的增加而提高精度。为了实现实时实现,提出了一种缓存此最佳拆分方法的元素的方法。仿真结果和对研究团体数据的评估表明,该算法可以准确预测非线性系统未来状态的概率分布。

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