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Symbolic road marking recognition using convolutional neural networks

机译:使用卷积神经网络的符号道路标记识别

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This paper investigates the use of Convolutional Neural Networks for classification of painted symbolic road markings. Previous work on road marking recognition is mostly based on either template matching or on classical feature extraction followed by classifier training which is not always effective and based on feature engineering. However, with the rise of deep neural networks and their success in ADAS systems, it is natural to investigate the suitability of CNN for road marking recognition. Unlike others, our focus is solely on road marking recognition and not detection; which has been extensively explored and conventionally based on MSER feature extraction of the IPM images. We train five different CNN architectures with variable number of convolution/max-pooling and fully connected layers, and different resolution of road mark patches. We use a publicly available road marking data set and incorporate data augmentation to enhance the size of this data set which is required for training deep nets. The augmented data set is randomly partitioned in 70% and 30% for training and testing. The best CNN network results in an average recognition rate of 99.05% for 10 classes of road markings on the test set.
机译:本文研究了使用卷积神经网络对绘制的符号道路标记进行分类。先前关于道路标记识别的工作主要基于模板匹配或经典特征提取,然后基于分类器训练,而分类器训练并不总是有效且基于特征工程。然而,随着深度神经网络的兴起及其在ADAS系统中的成功,自然而然地研究了CNN在道路标记识别中的适用性。与其他人不同,我们的重点仅在于道路标记的识别而不是检测。传统上基于IPM图像的MSER特征提取已经对其进行了广泛的探索。我们训练了五种不同的CNN体​​系结构,它们具有可变数量的卷积/最大合并和完全连接的层,以及不同的路标补丁分辨率。我们使用可公开获得的道路标记数据集,并结合数据增强功能来增加训练深网所需的该数据集的大小。扩充后的数据集被随机分为70%和30%进行训练和测试。最佳的CNN网络对测试集上的10类道路标记产生的平均识别率为99.05%。

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