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An overview of traffic sign detection and classification methods

机译:交通标志检测和分类方法概述

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摘要

Over the last few years, different traffic sign recognition systems were proposed. The present paper introduces an overview of some recent and efficient methods in the traffic sign detection and classification. Indeed, the main goal of detection methods is localizing regions of interest containing traffic sign, and we divide detection methods into three main categories: color-based (classified according to the color space), shape-based, and learning-based methods (including deep learning). In addition, we also divide classification methods into two categories: learning methods based on hand-crafted features (HOG, LBP, SIFT, SURF, BRISK) and deep learning methods. For easy reference, the different detection and classification methods are summarized in tables along with the different datasets. Furthermore, future research directions and recommendations are given in order to boost TSR’s performance.
机译:在过去几年中,提出了不同的交通标志识别系统。 本文介绍了在交通标志检测和分类中的一些最近有效的方法的概述。 实际上,检测方法的主要目标是含有交通标志的感兴趣区域,我们将检测方法分为三个主要类别:基于颜色的(根据颜色空间分类),形状为基础的和基于学习的方法(包括 深度学习)。 此外,我们还将分类方法分为两类:基于手工制作功能(HOG,LBP,SIFT,冲浪,快速)和深度学习方法的学习方法。 为了简单的参考,在表中汇总了不同的检测和分类方法以及不同的数据集。 此外,还有未来的研究方向和建议,以提高TSR的表现。

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