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DeepSemanticHPPC: Hypothesis-based Planning over Uncertain Semantic Point Clouds

机译:DeepSemanticHPPC:不确定语义点云上基于假设的计划

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Planning in unstructured environments is challenging – it relies on sensing, perception, scene reconstruction, and reasoning about various uncertainties. We propose DeepSemanticHPPC, a novel uncertainty-aware hypothesis-based planner for unstructured environments. Our algorithmic pipeline consists of: a deep Bayesian neural network which segments surfaces with uncertainty estimates; a flexible point cloud scene representation; a next-best-view planner which minimizes the uncertainty of scene semantics using sparse visual measurements; and a hypothesis-based path planner that proposes multiple kinematically feasible paths with evolving safety confidences given next-best-view measurements. Our pipeline iteratively decreases semantic uncertainty along planned paths, filtering out unsafe paths with high confidence. We show that our framework plans safe paths in real-world environments where existing path planners typically fail.
机译:在非结构化环境中进行规划具有挑战性–它依赖于感知,感知,场景重建以及各种不确定性的推理。我们提出DeepSemanticHPPC,这是一种适用于非结构化环境的新颖的基于不确定性假设的规划器。我们的算法流水线包括:深度贝叶斯神经网络,它用不确定性估计来分割曲面;灵活的点云场景表示;下一个最佳视图计划器,使用稀疏的视觉测量将场景语义的不确定性最小化;以及一个基于假设的路径规划器,该路径规划器在给定下一个最佳视图测量值的情况下,通过不断发展的安全置信度,提出了多种运动学上可行的路径。我们的管道迭代地减少了计划路径上的语义不确定性,以高置信度过滤掉了不安全的路径。我们证明了我们的框架可以在现实环境中计划安全的路径,而现有环境中的路径规划师通常会失败。

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