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Man vs. computer: Benchmarking machine learning algorithms for traffic sign recognition

机译:人与计算机:用于交通标志识别的基准机器学习算法

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Traffic signs are characterized by a wide variability in their visual appearance in real-world environments. For example, changes of illumination, varying weather conditions and partial occlusions impact the perception of road signs. In practice, a large number of different sign classes needs to be recognized with very high accuracy. Traffic signs have been designed to be easily readable for humans, who perform very well at this task. For computer systems, however, classifying traffic signs still seems to pose a challenging pattern recognition problem. Both image processing and machine learning algorithms are continuously refined to improve on this task. But little systematic comparison of such systems exist. What is the status quo? Do today's algorithms reach human performance? For assessing the performance of state-of-the-art machine learning algorithms, we present a publicly available traffic sign dataset with more than 50,000 images of German road signs in 43 classes. The data was considered in the second stage of the German Traffic Sign Recognition Benchmark held at IJCNN 2011. The results of this competition are reported and the best-performing algorithms are briefly described. Convolutional neural networks (CNNs) showed particularly high classification accuracies in the competition. We measured the performance of human subjects on the same data-and the CNNs outperformed the human test persons.
机译:在实际环境中,交通标志的视觉外观变化很大。例如,照明的变化,变化的天气条件和部分遮挡都会影响道路标志的感知。实际上,需要非常高精度地识别大量不同的符号类别。交通标志的设计易于人类理解,他们在这项任务中表现出色。但是,对于计算机系统,对交通标志进行分类似乎仍然构成了一个具有挑战性的模式识别问题。图像处理和机器学习算法均不断完善,以改进此任务。但是这种系统几乎没有系统的比较。现状如何?当今的算法能达到人的性能吗?为了评估最先进的机器学习算法的性能,我们提供了一个公开可用的交通标志数据集,其中包含43种类别的50,000多个德国道路标志图像。该数据已在2011年IJCNN举行的德国交通标志识别基准测试的第二阶段进行了审议。报告了本次比赛的结果,并简要介绍了性能最佳的算法。卷积神经网络(CNN)在比赛中显示出特别高的分类精度。我们在同一数据上测量了人类受试者的表现,而CNN的表现优于人类测试者。

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