NARMA-L2 Neuro controller for speed regulation of an intelligent vehicle based on image processing techniques

A. Sahbani
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引用次数: 1

Abstract

In order to be deployed in driving environments, intelligent transport system (ITS) must be able to recognize and respond to exceptional road conditions such as traffic signs, highway work zones and imminent road works automatically. This research presents a new vehicle speed control approach based on image processing technique. It aims to firstly recognize the road sign image and then, send the recognized speed as reference to the control unit. Obviously, recognition of traffic sign is playing a vital role in the intelligent transport system, it enhances traffic safety by providing drivers with safety and precaution information about road hazards. To recognize the traffic sign, an image processing unit ensured 3 steps: traffic board detection, feature extraction and sign classification. The detection phase is based on morphological operations, thresholding and contrast analysis. Steerable filters based technique was adopted to extract features from the segmented sign images. Finally, traffic signs classification is done by an intelligent Bayesian Regularization Neural Network (BRNN). It achieves a classification accuracy up to 97%. Once recognized, the resulting speed is taken as reference of the NARMA-L2 based control unit to regulate the speed of a DC motor. The simulation results show that our speed vehicle is controlled successfully with different speed references
基于图像处理技术的NARMA-L2智能车辆速度调节神经控制器
为了部署在驾驶环境中,智能交通系统(ITS)必须能够识别和响应特殊的道路条件,如交通标志、高速公路工作区域和即将进行的道路工程。提出了一种基于图像处理技术的车速控制新方法。它的目的是首先识别道路标志图像,然后将识别的速度作为参考发送给控制单元。显然,交通标志识别在智能交通系统中起着至关重要的作用,它通过向驾驶员提供道路危险的安全防范信息来提高交通安全。为了识别交通标志,图像处理单元确保了三个步骤:交通板检测、特征提取和标志分类。检测阶段是基于形态学运算、阈值分割和对比分析。采用基于可操纵滤波的技术对分割后的标志图像进行特征提取。最后,利用智能贝叶斯正则化神经网络(BRNN)对交通标志进行分类。其分类准确率高达97%。一旦识别,得到的速度将作为NARMA-L2控制单元的参考,以调节直流电机的速度。仿真结果表明,在不同的速度参考条件下,所设计的速度小车控制成功
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