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Analysis of Speed Sign Classification Algorithms Using Shape Based Segmentation of Binary Images

机译:基于形状的二值图像分割对速度符号分类算法的分析

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Traffic Sign Recognition is a widely studied problem and its dynamic nature calls for the application of a broad range of preprocessing, segmentation, and recognition techniques but few databases are available for evaluation. We have produced a database consisting of 1,300 images captured by a video camera. On this database we have conducted a systematic experimental study. We used four different preprocessing techniques and designed a generic speed sign segmentation algorithm. Then we selected a range of contemporary speed sign classification algorithms using shape based segmented binary images for training and evaluated their results using four metrics, including accuracy and processing speed. The results indicate that Naive Bayes and Random Forest seem particularly well suited for this recognition task. Moreover, we show that two specific preprocessing techniques appear to provide a better basis for concept learning than the others.
机译:交通标志识别是一个被广泛研究的问题,它的动态性质要求应用广泛的预处理,分段和识别技术,但是很少有数据库可用于评估。我们已经建立了一个数据库,其中包含由摄像机捕获的1,300张图像。在此数据库上,我们进行了系统的实验研究。我们使用了四种不同的预处理技术,并设计了一种通用的速度符号分割算法。然后,我们选择了一系列基于形状的分段二进制图像进行训练的当代速度标志分类算法,并使用四个指标(包括准确性和处理速度)评估了它们的结果。结果表明朴素贝叶斯和随机森林似乎特别适合此识别任务。此外,我们表明,两种特定的预处理技术似乎为其他概念提供了更好的概念学习基础。

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