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Detection of traffic signs in real-world images: The German traffic sign detection benchmark

机译:现实图像中交通标志的检测:德国交通标志检测基准

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Real-time detection of traffic signs, the task of pinpointing a traffic sign's location in natural images, is a challenging computer vision task of high industrial relevance. Various algorithms have been proposed, and advanced driver assistance systems supporting detection and recognition of traffic signs have reached the market. Despite the many competing approaches, there is no clear consensus on what the state-of-the-art in this field is. This can be accounted to the lack of comprehensive, unbiased comparisons of those methods. We aim at closing this gap by the “German Traffic Sign Detection Benchmark” presented as a competition at IJCNN 2013 (International Joint Conference on Neural Networks). We introduce a real-world benchmark data set for traffic sign detection together with carefully chosen evaluation metrics, baseline results, and a web-interface for comparing approaches. In our evaluation, we separate sign detection from classification, but still measure the performance on relevant categories of signs to allow for benchmarking specialized solutions. The considered baseline algorithms represent some of the most popular detection approaches such as the Viola-Jones detector based on Haar features and a linear classifier relying on HOG descriptors. Further, a recently proposed problem-specific algorithm exploiting shape and color in a model-based Houghlike voting scheme is evaluated. Finally, we present the best-performing algorithms of the IJCNN competition.
机译:实时检测交通标志,即在自然图像中查明交通标志的位置,是一项与工业高度相关的具有挑战性的计算机视觉任务。已经提出了各种算法,并且支持检测和识别交通标志的高级驾驶员辅助系统已经投放市场。尽管有许多竞争方法,但对于该领域的最新技术尚无明确共识。这可以解释为这些方法缺乏全面,公正的比较。我们旨在通过在IJCNN 2013(国际神经网络联合会议)上提出的竞赛“德国交通标志检测基准”来弥补这一差距。我们引入了用于交通标志检测的真实基准数据集,以及精心选择的评估指标,基线结果以及用于比较方法的Web界面。在我们的评估中,我们将标志检测与分类分开,但仍会测量标志相关类别的性能,以便对特定的解决方案进行基准测试。所考虑的基线算法代表了一些最流行的检测方法,例如基于Haar特征的Viola-Jones检测器和依赖HOG描述符的线性分类器。此外,评估了最近提出的在基于模型的霍夫似投票方案中利用形状和颜色的问题特定算法。最后,我们提出了IJCNN竞赛中表现最佳的算法。

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