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License Plate Recognition via Convolutional Neural Networks

机译:通过卷积神经网络识别牌照

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The problem of license plate recognition has traditionally been tackled by methods such as optical character recognition and multi-layer perceptron + SVM, and these methods have been widely deployed in practice. Despite their success, they can only be used in idea situations. Recently, several attempts have been made to exploit the representation power of deep convolutional neural networks (CNN). In this paper, we also try to exploit the power of CNN in license plate recognition. In the proposed system, the SSD detector [1] is firstly used to detect the license plate. Then after obtaining the rough location of the license plate, we use the vertical projection method for character segmentation. Finally, characters are classified with a small but powerful CNN network. The proposed license plate recognition system achieves a very high accuracy with a high speed in a test dataset collected by ourselves.
机译:传统上通过诸如光学字符识别和多层的Perceptron + SVM等方法来解决许可证识别问题,并且这些方法在实践中被广泛部署。尽管取得了成功,但它们只能用于想法情况。最近,已经进行了几次尝试利用深卷积神经网络(CNN)的表示力。在本文中,我们还尝试利用CNN在车牌识别中的力量。在所提出的系统中,首先使用SSD检测器[1]来检测车牌。然后在获得牌照的粗糙位置后,我们使用垂直投影方法进行字符分割。最后,字符用一个小而强大的CNN网络分类。建议的牌照识别系统在自己收集的测试数据集中实现了高精度,高速。

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