采样(信号处理)
运动规划
计算机科学
状态空间
数学优化
代表(政治)
自编码
趋同(经济学)
利用
重要性抽样
自适应采样
人工智能
机器人
数学
人工神经网络
计算机视觉
统计
蒙特卡罗方法
滤波器(信号处理)
经济
政治
法学
经济增长
计算机安全
政治学
作者
Brian Ichter,J. Michael Harrison,Marco Pavone
标识
DOI:10.1109/icra.2018.8460730
摘要
A defining feature of sampling-based motion planning is the reliance on an implicit representation of the state space, which is enabled by a set of probing samples. Traditionally, these samples are drawn either probabilistically or deterministically to uniformly cover the state space. Yet, the motion of many robotic systems is often restricted to "small" regions of the state space, due to e.g. differential constraints or collision-avoidance constraints. To accelerate the planning process, it is thus desirable to devise non-uniform sampling strategies that favor sampling in those regions where an optimal solution might lie. This paper proposes a methodology for nonuniform sampling, whereby a sampling distribution is learned from demonstrations, and then used to bias sampling. The sampling distribution is computed through a conditional variational autoencoder, allowing sample generation from the latent space conditioned on the specific planning problem. This methodology is general, can be used in combination with any sampling-based planner, and can effectively exploit the underlying structure of a planning problem while maintaining the theoretical guarantees of sampling-based approaches. Specifically, on several planning problems, the proposed methodology is shown to effectively learn representations for the relevant regions of the state space, resulting in an order of magnitude improvement in terms of success rate and convergence to the optimal cost.
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