Gabor小波用于混合分类器的道路标志检测与识别

Y. R. Fatmehsari, A. Ghahari, R. Zoroofi
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引用次数: 28

摘要

智能车辆的驾驶员支持系统(DSS)对摄像头拍摄的道路场景图像进行分析,并对道路标志进行检测。然后通过识别交通标志的类型,它可以警告司机。它们大多使用HIS色彩空间来检测道路标志。但本文使用的是YCbCr色彩空间。本文提出了一种红色道路标志检测与分类的新方法。该战略包括三个步骤。在第一步中,将输入图像从RGB色彩空间转移到YCbCr色彩空间,并提取红色像素。然后从被提取的红色物体中检测出路标物体。在第二步中,必须将该路标图像与一组Gabor小波进行卷积并提取特征向量进行分类。最后,在第三步中,这些特征向量由一个混合分类器进行分类。-rest支持向量机(OVR svm)和朴素贝叶斯(NBs)分类器。将该方法应用于四类红色道路标志的分类,准确率达到93.1%。此外,该方法对平移、旋转和尺度具有鲁棒性。
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Gabor wavelet for road sign detection and recognition using a hybrid classifier
Driver support systems (DSS) of intelligent vehicles analyze the image of road scenes captured by camera and detect the road signs. Then by recognizing the type of traffic sign, it can warn the driver. Most of them use the HIS color space for detection of road signs. But in this paper the YCbCr color space is used. This paper proposes a new method for both detection and classification of red road signs. The strategy consists of three steps. In the first step the input image has been transferred from the RGB color space to the YCbCr color space and the red pixels are extracted. Then the road sign object is detected from those that had been extracted as red objects. In the second step this road sign image must be convolved with a bank of Gabor wavelets and extract the feature vectors for classification. Finally in the third step these feature vectors are classified by a hybrid classifier that is composed of one-vs.-rest support vector machines (OVR SVMs) and naive bayes (NBs) classifier. The proposed method was implemented for classification of four classes of red road signs and achieved the accuracy of 93.1%. Moreover the proposed method is robust against the translation, rotation, and scale.
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