基于光流的无人行星探测移动机器人障碍物检测与避障行为

E. Dur
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引用次数: 10

摘要

利用光流计算和多层感知器人工神经网络(ANN),尝试了一种移动机器人障碍物检测和避障行为的方法。该方法的研究得到了Matlab仿真环境下的实验结果的支持。从真实的导航环境中获取视图图像,然后通过事先创建的Matlab simulink块获得所有图像的光流计算,作为一种可以从立体视觉中计算光流的算法。在导出每对立体视图的光流的基础上,建立了一个数据库来训练多层感知器。利用数据集和Levenberg-Marquardt学习算法,在Matlab环境下建立了一个经过良好训练的神经网络,以检测障碍物的存在。在研究过程中获得的实验结果加强了支持在移动机器人中使用人工神经网络进行障碍物检测和回避行为的光流的想法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optical Flow-based obstacle detection and avoidance behaviors for mobile robots used in unmaned planetary exploration
Using optical flow calculations and a multilayer perceptron Artificial Neural Network (ANN), a methodology has been tried for mobile-robot obstacle detection and avoidance behavior. The study of the methodology has been supported by experimental results that were obtained from Matlab simulation environments. The images of the views were taken from a real navigation environment and then optical flow calculations for all images were obtained via Matlab simulink blocks created in advance, as an algorithm which can calculate optical flows from stereo visions. As optical flows of each pair of stereo views were derived, a database was constituted to train the multilayer perceptron. Using the data set and the Levenberg-Marquardt learning algorithm, a neural network was created that was well trained in Matlab environment in order to detect the presence of obstacles. Experimental results, obtained during the study have strengthened the ideas which have supported the usage of the optical flow via an ANN in mobile robotics for obstacle detection and avoidance behaviors.
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