Robot visual navigation estimation and target localization based on neural network

Yanping Zhao, R. K. Gupta, Edeh Michael Onyema
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引用次数: 5

Abstract

Abstract The high computational cost, complex external environment, and limited computing resources of embedded system are some major problems in traditional autonomous robot navigation methods. To overcome these problems, a mobile robot path planning navigation system based on panoramic vision was proposed. This method first describes the structure and functions of the navigation system. It explains how to use the environment to explore and map in order to create a panoramic vision sensor. Finally, it elaborates on the breadth-first search based on regression neural network (RNN) method, the Voronoi skeleton diagram method, the algorithm principle, and how to navigate by the planning path implementation of practical strategies. The simulation results illustrate that the breadth-first search method and the Voronoi skeleton graph method based on panoramic view have a high speed. The accessibility of RNN planning algorithm can effectively solve the difficult problems such as high computing overhead, complex navigation environment, and limited computing resources. In the actual robot navigation experiment, the difference in real-time performance and optimality performance that exists between the two algorithms is reflected in the length and duration of the course taken by the robot. When applied to a variety of site environments, the breadth-first search method requires between 23.2 and 45.3% more time to calculate the planned path than the Voronoi skeleton graph method, despite the fact that the planned path length is between 20.7 and 35.9% shorter using the breadth-first search method. It serves as a guide for choosing the appropriate algorithm to implement in practical applications.
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基于神经网络的机器人视觉导航估计与目标定位
嵌入式系统计算成本高、外部环境复杂、计算资源有限是传统自主机器人导航方法存在的主要问题。针对这些问题,提出了一种基于全景视觉的移动机器人路径规划导航系统。该方法首先描述了导航系统的结构和功能。它解释了如何使用环境来探索和映射,以创建一个全景视觉传感器。最后,详细阐述了基于回归神经网络(RNN)的广度优先搜索方法、Voronoi骨架图方法、算法原理,以及如何通过规划路径实现导航的实用策略。仿真结果表明,宽度优先搜索方法和基于全景视图的Voronoi骨架图方法具有较高的搜索速度。RNN规划算法的可及性可以有效解决计算开销高、导航环境复杂、计算资源有限等难题。在实际的机器人导航实验中,两种算法在实时性和最优性上的差异体现在机器人所走的路程长度和持续时间上。当应用于各种站点环境时,宽度优先搜索方法比Voronoi骨架图方法计算规划路径的时间多23.2% ~ 45.3%,尽管使用宽度优先搜索方法的规划路径长度缩短了20.7% ~ 35.9%。为在实际应用中选择合适的算法提供了指导。
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