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Traffic sign recognition using edge detection and eigen-face: Comparison between with and without color pre-classification based on Hue

机译:使用边缘检测和eIgen-face的交通标志识别:与基于色调的彩色预分类之间的比较

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Most traffic sign recognition algorithms utilize Template Matching which compare detected sign with templates. Studies on this method have shown outstanding recognition accuracy. Nevertheless, the Template Matching burdens a system in term of memory usage since it has to store numerous templates. Eigen-face is a basic method originated to recognize faces. It is efficient and practical since system only needs to store an Eigenface-image and Weights that associated with it. This paper developed a traffic sign recognition using Eigen-Face algorithm. Instead of using RGB images, the learning was utilized edges. It is more distinctive feature compare to color intensity which varies from yellow, red and blue and additional black symbol. The template signs were first converted into grayscale intensity. Its edges were detected using common Sobel approximation and then concatenated into one matrix. Eigenvalues and Eigenvectors of the matrix's Covariance were then calculated. In this algorithm, the biggest Eigenvector was selected and projected as Eigenface-image. Each traffic sign had unique Weight associated with the Eigenface-image that could be used for recognition. This paper compares how to disperse and distinct each sign's weights with and without color pre-classification based on median of Hue. The recognition with color pre-classification shown clearer weights' distinction between each type of traffic sign yet lower weights' disparity within types.
机译:大多数流量标志识别算法利用模板匹配,该模板匹配与模板进行比较检测到的符号。对该方法的研究表明了出色的识别准确性。尽管如此,模板匹配在内存使用期间负担系统,因为它必须存储众多模板。尖端是一种旨在识别面孔的基本方法。它是有效实用的,因为系统只需要存储与其相关联的特征面图像和权重。本文开发了使用特征面算法的交通标志识别。该学习而不是使用RGB图像,而不是使用RGB图像。它与颜色强度比黄色,红色和蓝色和额外的黑色符号变化是更明显的功能。首先将模板标志转换为灰度强度。使用常见的Sobel近似检测其边缘,然后将其连接成一个矩阵。然后计算矩阵协方差的特征值和特征向量。在该算法中,选择最大的特征向量并投影为特征映像。每个流量标志具有与可用于识别的特征面图像相关的唯一权重。本文比较了如何通过基于色调的中位数分散和不同的每个符号的权重,而不是基于色调的中位数的颜色预分类。使用颜色预分类的识别显示在类型中的每种类型的交通标志且较低的权重的差异之间的重量之间的分化显示。

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