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Real-Time Traffic Sign Recognition Based on Efficient CNNs in the Wild

机译:基于高效CNN的实时交通标志识别

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摘要

Both unmanned vehicles and driver assistance systems require solving the problem of traffic sign recognition. A lot of work has been done in this area, but no approach has been presented to perform the task with high accuracy and high speed under various conditions until now. In this paper, we have designed and implemented a detector by adopting the framework of faster R-convolutional neural networks (CNN) and the structure of MobileNet. Here, color and shape information have been used to refine the localizations of small traffic signs, which are not easy to regress precisely. Finally, an efficient CNN with asymmetric kernels is used to be the classifier of traffic signs. Both the detector and the classifier have been trained on challenging public benchmarks. The results show that the proposed detector can detect all categories of traffic signs. The detector and the classifier proposed here are proved to be superior to the state-of-the-art method. Our code and results are available online.
机译:无人驾驶车辆和驾驶员辅助系统都需要解决交通标志识别的问题。在这一领域已经做了很多工作,但是到目前为止,还没有提出在各种条件下以高精度和高速度执行任务的方法。在本文中,我们通过采用更快的R卷积神经网络(CNN)的框架和MobileNet的结构设计并实现了一种检测器。在这里,颜色和形状信息已被用于完善小型交通标志的定位,而这些交通标志很难精确回归。最终,具有非对称内核的高效CNN被用作交通标志的分类器。检测器和分类器均经过了具有挑战性的公共基准测试。结果表明,提出的检测器可以检测到所有类型的交通标志。事实证明,此处提出的检测器和分类器优于最新方法。我们的代码和结果可在线获得。

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