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Attention Enhanced ConvNet-RNN for Chinese Vehicle License Plate Recognition

机译:用于中国车牌识别的注意力增强型ConvNet-RNN

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摘要

As an important part of intelligent transportation system, vehicle license plate recognition requires high accuracy in an open environment. While a lot of approaches have been proposed, and achieved good performance to some extent, these approaches still have problems, for example, in the condition of characters' distortion or partial occlusion. Segmentation-free VLPR systems compute the label in one pass using Long Short-Term Memory Network (LSTM), without individual segmentation step, their results tend to be not influenced by the segmentation accuracy. Based on the idea of Segmentation-free VLPR, this paper proposed an attention enhanced ConvNet-RNN (AC-RNN) for accurate Chinese Vehicle License Plate Recognition. The attention mechanism helps to locate the important instances in the step of recognition. While the ConvNet is used to extract features, the recurrent neural networks (RNN) with connectionist temporal classification (CTC) are applied for sequence labeling. The proposed AC-RNN was trained on a large generated dataset which contains various types of license plates in China. The AC-RNN could figure out the vehicle license even in cases of light changing, spatial distortion and partial blurry. Experiments showed that the AC-RNN performs better on the testing real images, increasing about 5% on accuracy, compared with classic ConvNet-RNN [8].
机译:作为智能交通系统的重要组成部分,车牌识别要求在开放环境中具有较高的准确性。尽管已经提出了许多方法,并且在一定程度上取得了良好的性能,但是这些方法仍然存在问题,例如在字符失真或部分遮挡的情况下。无分段的VLPR系统使用长短期内存网络(LSTM)一次计算标签,没有单独的分段步骤,其结果往往不受分段精度的影响。基于无分段VLPR的思想,提出了一种注意力增强的ConvNet-RNN(AC-RNN),用于准确的中国车牌识别。注意机制有助于在识别步骤中定位重要实例。使用ConvNet提取特征时,将具有连接主义时间分类(CTC)的递归神经网络(RNN)用于序列标记。拟议的AC-RNN在大量生成的数据集上进行了训练,该数据集包含中国各种类型的车牌。即使在光线变化,空间畸变和局部模糊的情况下,AC-RNN仍可以计算出车辆牌照。实验表明,与传统的ConvNet-RNN [8]相比,AC-RNN在真实图像的测试中表现更好,准确度提高了约5%。

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