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Extending traffic light recognition: Efficient classification of phase and pictogram

机译:扩展交通信号灯识别:相位和象形图的有效分类

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While much work in the domain of traffic lights recognition is invested in the detection of traffic lights, classification of their exact state (including color phase and possible arrow pictogram) is often neglected. In this paper, we propose a robust approach for efficient video-based classification of said state with particular attention to the displayed pictogram and an additional ability to reject false detections. The currently active lights are identified and used to classify the phase. The lights are extracted and transformed into a HOG feature representation that is used to classify the pictogram with the help of machine learning classifiers. In order to gain optimal results, we compared the performance of different algorithms, namely LDA, kNN, and SVM. We provide an evaluation of our method on individual images and demonstrate that the classification rate of the phase lies at 96.7% and at 92.8% for the pictogram, with the use of SVMs providing best results. This leads to an overall classification quality of 89.9%. With a runtime of less than 1ms per image section our algorithm can easily be integrated in every traffic light recognition pipeline.
机译:尽管在交通信号灯识别领域进行了大量工作,但交通信号灯的准确状态(包括色相和可能的箭头象形图)的分类却经常被忽略。在本文中,我们提出了一种针对上述状态进行基于视频的有效分类的鲁棒方法,尤其要注意所显示的象形图以及拒绝误检测的其他功能。识别当前活动的灯光并将其用于对阶段进行分类。提取灯光并将其转换为HOG特征表示形式,用于借助机器学习分类器对象形图进行分类。为了获得最佳结果,我们比较了LDA,kNN和SVM等不同算法的性能。我们对单个图像的方法进行了评估,并证明了象形图的相位分类率为96.7%,象形图的分类率为92.8%,使用SVM可以提供最佳效果。这导致整体分类质量为89.9%。每个图像段的运行时间少于1毫秒,因此我们的算法可以轻松集成到每个交通信号灯识别管道中。

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