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Deep Neural Network Enhanced Sampling-Based Path Planning in 3D Space

机译:基于深度神经网络的三维空间增强采样路径规划

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Robot path planning in 3D space is a challenging problem for its complex configuration. Sampling-based algorithms have gained great success in solving path planning problems in 3D space, but the quality of the initial path is not guaranteed and the convergence to the optimal solution is slow. To address these problems, in this article, we present a novel sampling-based path planning framework enhanced by the deep neural network (DNN) with applications to 3D space. In the proposed framework, we first train the DNN with a number of successful path planning cases in 3D space. Then the DNN is utilized to predict the promising region where the feasible path probably exists for a given path planning problem. This predicted promising region serves as a nonuniform sampling heuristic to bias the sampling process of the path planner. In this way, the path planner can focus on the promising region in the exploration and exploitation process so that the path planning speed gets accelerated. We conduct numerical simulations to evaluate the performance of the proposed algorithm and the results show that it can perform much better than conventional path planning algorithms. Furthermore, we also investigate the performance of different DNN architectures for path planning in 3D space. Note to Practitioners—In this work, we aim to provide an efficient learning-based method to accelerate the robot path planning process in 3D space. Conventional path planning algorithms need to perceive the environment first, and then implement a series of calculations such as collision checking and data storing to generate a feasible path. When facing complex and high-dimensional environments, they do not perform well. But the proposed neural network method in this article can predict the promising region where the feasible path exists for any given environment. This prediction result is used to guide the path planning process so that the algorithm performance can get significantly improved. Apart from sampling-based algorithms, the proposed neural network model can also be extended to other types of path planning algorithms.
机译:3D空间中的机器人路径规划因其复杂的配置而是一个具有挑战性的问题。基于采样的算法在求解三维空间路径规划问题方面取得了巨大成功,但初始路径质量无法保证,向最优解的收敛速度较慢。为了解决这些问题,在本文中,我们提出了一种基于采样的新型路径规划框架,该框架由深度神经网络(DNN)增强,并应用于3D空间。在所提出的框架中,我们首先在 3D 空间中使用许多成功的路径规划案例来训练 DNN。然后,利用 DNN 来预测给定路径规划问题可能存在可行路径的有希望的区域。这个预测的有希望的区域用作非均匀采样启发式方法,使路径规划器的采样过程产生偏差。这样,路径规划者就可以在勘探开发过程中专注于有前途的区域,从而加快路径规划速度。通过数值仿真对所提算法的性能进行了评价,结果表明,该算法的性能远优于传统的路径规划算法。此外,我们还研究了不同 DNN 架构在 3D 空间中路径规划的性能。从业者须知 - 在这项工作中,我们旨在提供一种基于学习的高效方法,以加速 3D 空间中的机器人路径规划过程。传统的路径规划算法需要先感知环境,然后实现碰撞检查、数据存储等一系列计算,生成可行的路径。在面对复杂和高维的环境时,它们的表现并不好。但是,本文提出的神经网络方法可以预测任何给定环境存在可行路径的有希望的区域。该预测结果用于指导路径规划过程,从而显着提高算法性能。除了基于采样的算法外,所提出的神经网络模型还可以扩展到其他类型的路径规划算法。

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