小型导航车辆控制系统的道路交通标志引导分析

S. Kantawong
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引用次数: 5

摘要

本文介绍了应用于小型导航车辆控制系统的基于视觉的机器人引导系统中道路交通标志的检测与分类方法,该系统主要有两种作用:一是交通标志的检测,二是标志的分类。交通标志识别是一个研究较少的领域,尽管它为道路使用者提供了关于道路概况的非常有价值的信息,以使行驶更安全、更容易。本文所描述的算法利用了符号的颜色和形状与自然环境有很大不同的特点。该系统分为三个部分,第一部分用于检测和提高原始标识图像的质量。第二部分对图像进行形状分析,采用连续细化算法和图像编码方法,最后对图像进行识别和决策,采用基于模糊神经技术的反向传播神经网络(BNN)模型来显示正确的任务。这里展示了一些室内实验的结果,表明系统的性能可以很好地工作,但在真实的环境场景中,检测其他类型的信号是有效的,这些信号会训练移动机器人在那个地方执行某些任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Road traffic signs guidance analysis for small navigation vehicle control system
This paper presents the road traffic signs detection and classification methods in vision-based robot guidance system that are applied for small navigation vehicle control system which can have two main roles that first for traffic signs detection and next for signs classification. Traffic signs recognition is a less studied field even though it provided road users with very valuable information about the road profiles in order to make running safer and easier. The algorithm are described in this paper take an advantage of sign features that their color and shapes are very different from natural environments. The systems are divided into three parts, first for detected and improved the quality of raw sign image. Second part for shape analysis with a continuous thinning algorithm and image encoding method, finally for the image recognition and decision by Fuzzy-Neural technique based on Back propagation Neural Network (BNN) model to display the right task. Some results from room experimental are shown here that show the system performance can work well but in real environmental scenes are valid to detect other kinds of signs that would train the mobile robot to perform some task at that place.
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