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A sparse representation method for traffic sign recognition based on similar class

机译:基于相似类的交通标志识别稀疏表示方法

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In this paper, we propose a sparse representation method for traffic sign recognition based on similar class. The method needs to presort traffic signs as four main class according to its similar feature. We named the four main class as speed-limiting class, warning class, directive class and no-rules class. Then the method can be divided into two phases. First, we use a combination of PCA (Principal Component Analysis) and LDA (Linear Discriminant Analysis) method to determine ‘the nearest neighbor’ for the test sample. Second, we represent the test sample as a linear combination of the training samples from the main class that ‘the nearest neighbor’ belongs to. Then we use the representation result to perform classification. Comparative experiments on German traffic signs database (GTSDB) show that the method is better than traditional methods such as OMP, PCA and LDA. Its recognition rate can reach 96%.
机译:本文提出一种基于相似类的交通标志识别稀疏表示方法。该方法需要根据其相似特征将交通标志预先分类为四个主要类别。我们将四个主要类别命名为限速类别,警告类别,指令类别和无规则类别。然后,该方法可以分为两个阶段。首先,我们结合使用PCA(主成分分析)和LDA(线性判别分析)方法来确定测试样品的“最近邻居”。其次,我们将测试样本表示为“最近的邻居”所属的主要类别的训练样本的线性组合。然后,我们使用表示结果进行分类。在德国交通标志数据库(GTSDB)上进行的比较实验表明,该方法优于传统方法,如OMP,PCA和LDA。其识别率可以达到96%。

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