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A Proposed License Plate Classification Method Based on Convolutional Neural Network

机译:一种基于卷积神经网络的车牌分类方法

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Nowadays convolutional neural network(CNN) has been successfully applied in image processing. At the same time license plate recognition is more and more universal. Before recognition with deep learning, we need to collect enough images to train the network. The quality of data is very important. The current methods of getting license plate based on deep learning are increasingly various, however, there are still many images where illumination, size and blurriness make it is extremely difficult to recognize. As a result, images with low quality eventually affect the accuracy of recognition. Therefore, license plate classification is essential to eliminate low quality images so that improve the quality of the dataset. In this paper, a method based on CNN is proposed to deal with license plate classification. We use a seven layers CNN and ultimately the best result reached 98.79%.
机译:如今,卷积神经网络已成功应用于图像处理。同时,车牌识别越来越普遍。在通过深度学习进行识别之前,我们需要收集足够的图像来训练网络。数据质量非常重要。当前基于深度学习获取车牌的方法越来越多样化,但是,仍然有许多图像的光照,大小和模糊性使其非常难以识别。结果,低质量的图像最终会影响识别的准确性。因此,车牌分类对于消除低质量图像至关重要,从而可以提高数据集的质量。提出了一种基于CNN的车牌分类方法。我们使用七层CNN,最终最佳结果达到98.79%。

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