Automatic traffic sign detection and recognition using moment invariants and support vector machine

Sneha Agrawal, R. Chaurasiya
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引用次数: 5

Abstract

Automatic traffic sign detection and recognition (TSDR) is one of the most significant areas of object detection. In spite of numerous researches, it has always been a challenging problem. In this paper, an approach for detecting circular and triangular traffic signs is proposed. The performance of the entire system is measured on German traffic sign detection benchmark (GTSDB) and German traffic sign recognition benchmark (GTSRB) dataset. Traffic signs are detected using color segmentation and thresholding method in Hue Saturation Intensity (HSI) color space. Then, the shape of traffic signs is detected using geometric invariant Hu moments. Further, the features are extracted using a technique called HSI-HOG descriptor where features are extracted from each channel of HSI independently. To select the most discriminant features with minimal loss of information, dimensionality reduction technique Principal Component Analysis (PCA) is applied and classification is performed using Support Vector Machine (SVM) technique.
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基于矩不变量和支持向量机的交通标志自动检测与识别
交通标志自动检测与识别(TSDR)是物体检测的重要领域之一。尽管有大量的研究,但这一直是一个具有挑战性的问题。本文提出了一种圆形和三角形交通标志的检测方法。在德国交通标志检测基准(GTSDB)和德国交通标志识别基准(GTSRB)数据集上对整个系统的性能进行了测试。在色相饱和度(HSI)颜色空间中,采用颜色分割和阈值法检测交通标志。然后,利用几何不变Hu矩检测交通标志的形状。此外,使用一种称为HSI- hog描述符的技术提取特征,其中从HSI的每个通道独立提取特征。为了在最小的信息损失下选择最具判别性的特征,采用降维技术主成分分析(PCA)和支持向量机(SVM)技术进行分类。
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