A Time Efficient Model for Region of Interest Extraction in Real Time Traffic Signs Recognition System

Fareed Qararyah, Yousef-Awwad Daraghmi, E. Daraghmi, S. Rajora, Chin-Teng Lin, M. Prasad
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引用次数: 2

Abstract

Computation intelligence plays a major role in developing intelligent vehicles, which contains a Traffic Sign Recognition (TSR) system for increasing vehicle safety. Traffic sign recognition systems consist of an initial phase called Traffic Sign Detection (TSD), where images and colors are segmented and fed to the recognition phase. The most challenging process in TSR systems in terms of time consumption is the detection phase. The previous studies proposed different models for traffic sign detection, however, the computation time of these models still requires improvement for enabling real time systems. Therefore, this paper focuses on the computational time and proposes a novel time efficient color segmentation model based on logistic regression. This paper uses RGB color space as the domain to extract the features of our hypothesis; this has boosted the speed of the proposed model, since no color conversion is needed. The trained segmentation classifier is tested on 1000 traffic sign images taken in different lighting conditions. The experimental results show that the proposed model segmented 974 of these images correctly and in a time less than one-fifth of the time needed by any other robust segmentation methods.
实时交通标志识别系统中一种高效的兴趣区域提取模型
计算智能在智能汽车的发展中起着重要的作用,其中包括交通标志识别(TSR)系统,以提高车辆的安全性。交通标志识别系统包括称为交通标志检测(TSD)的初始阶段,其中图像和颜色被分割并馈送到识别阶段。就时间消耗而言,TSR系统中最具挑战性的过程是检测阶段。以往的研究提出了不同的交通标志检测模型,但为了实现实时系统,这些模型的计算时间仍有待改进。因此,本文从计算时间的角度出发,提出了一种新的基于逻辑回归的时间效率高的颜色分割模型。本文以RGB色彩空间为域提取假设的特征;这提高了模型的速度,因为不需要颜色转换。将训练好的分割分类器在1000张不同光照条件下的交通标志图像上进行了测试。实验结果表明,该模型对974幅图像进行了正确分割,所用时间不到其他鲁棒分割方法的五分之一。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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