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Evaluation of image descriptors in subspace-based classifiers for traffic sign recognition

机译:基于子空间的分类器图像描述函数对交通标志识别的评估

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In this study, the performance of some image descriptors in traffic sign recognition is obtained using the subspace-based classifiers. The subspace methods make both dimension reduction in feature space and maximize the classification rate. The feature vectors are extracted from the images containing a traffic sign by image descriptors. Gray scale, Histogram of Oriented Gradients (HOG), Local Binary Patterns (LBP), and Local Phase Quantization (LPQ) are used as image descriptors in our study. The feature vectors are processed by the subspace methods, Principle Component Analysis (PCA), Linear Discriminant Analysis (LDA), and Discriminative Common Vector (DCV), for recognizing traffic signs. In the experimental study, the database containing triangular and circular signs was used. The database also includes shifted and rotated traffic signs. The recognition performances of the subspace-based classifiers were compared with the template matching method. The best classification performances are obtained for the HOG features and DCV method. The classification rates for triangular and circular signs are 98.38% and 99.25% respectively.
机译:在这项研究中,使用基于子空间的分类器获得了交通标志识别中的一些图像描述符的性能。子空间方法使特征空间的尺寸减少并最大化分类率。特征向量从包含图像描述符的交通标志的图像中提取。灰度,面向梯度(HOG),局部二进制模式(LBP)和局部相位量化(LPQ)的灰度,直方图用作我们研究中的图像描述符。特征向量由子空间方法,原理分析分析(PCA),线性判别分析(LDA)和鉴别的常见载体(DCV)处理,用于识别交通标志。在实验研究中,使用了包含三角形和圆形标志的数据库。数据库还包括移位和旋转的交通标志。将子空间的分类器的识别性能与模板匹配方法进行比较。为猪特征和DCV方法获得了最佳分类性能。三角形和圆形标志的分类率分别为98.38%和99.25%。

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