A Method for Recognizing Prohibition Traffic Sign Based on HOG-SVM

Yang Liu, Wei Zhong, Wenzheng Wang, Qingxing Cao, Kaiwen Luo
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引用次数: 1

Abstract

In order to recognize prohibition traffic signs, based on the analysis of the color occupancy of prohibition traffic signs, this paper proposes a method to recognize the prohibition traffic signs based on the feature of Histogram of Oriented Gradient (HOG) and Support Vector Machine (SVM). The recognition method is mainly divided into three steps: the first step is image preprocessing, which realizes the size normalization processing, grayscale processing and Gamma correction of the image; the second step is the feature extraction of HOG; the third step is the recognition of prohibition traffic signs based on SVM. In the design and implementation of the prohibition traffic sign classifier, the prohibition traffic sign image training after linear transformation is used to train 42 binary classifiers, and then based on these 42 classifiers, the prohibition traffic sign classifier is constructed and implemented. Finally, the self-built data set was used to test and analyze the prohibition traffic sign recognition method, and the overall recognition accuracy rate was 90.2%.
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基于HOG-SVM的禁止交通标志识别方法
为了识别禁止交通标志,本文在分析禁止交通标志颜色占用情况的基础上,提出了一种基于梯度直方图(HOG)和支持向量机(SVM)特征的禁止交通标志识别方法。该识别方法主要分为三个步骤:第一步是图像预处理,实现图像的尺寸归一化处理、灰度处理和Gamma校正;第二步是HOG特征提取;第三步是基于支持向量机的禁止交通标志识别。在禁止交通标志分类器的设计与实现中,利用线性变换后的禁止交通标志图像训练来训练42个二元分类器,然后基于这42个分类器构建并实现禁止交通标志分类器。最后,利用自建数据集对禁止交通标志识别方法进行测试分析,总体识别准确率为90.2%。
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