基于情景记忆融合的机器人路径规划

Junyi Wu, Haidong Xu, Chong-hao Wu, Shumei Yu, Rongchuan Sun, Lining Sun
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引用次数: 1

摘要

情景记忆提供了一种回忆过去经验的机制,可用于复杂环境中的路径规划。本文提出了一种基于记忆融合的路径规划方法,该方法将情景记忆模型与潜在路径检测网络相结合。传统的基于情景记忆模型的路径规划方法是根据移动机器人在环境中所经历的轨迹来规划路径,忽略了周围的潜在路径。因此,规划的路径不一定是全局最优的。针对这一问题,我们提出了一种路径检测网络来寻找环境中潜在的安全路径。实验结果表明,从规划路径长度和转弯数的角度出发,将潜在路径融合到原始情景认知地图中,可以找到更好的路径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robotic Path Planning Based on Episodic Memory Fusion
Episodic memory provides a mechanism for recalling past experience, which can be used for path planning in complex environments. This paper describes a path planning method based on memory fusion that combines an episodic memory models with the potential path detection network. In traditional path planning methods based on the episodic memory model, paths were planned based on the trajectory that the mobile robot has experienced in the environment, ignoring the surrounding potential paths. Therefore, the planned path is not necessarily globally optimal. In response to this problem, we proposed a path detection network to find potential safe paths in the environment. Our experimental results demonstrated that a better path can be found by fusing the potential path into the original episodic-cognitive map from the perspective of planned path length and number of turns.
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