Two-Stage Pre-processing for License Recognition

J. Zhang, Cheng-Tsung Chan, Minmin Sun
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Abstract

Various financial insurance and investment application websites require customers to upload identity documents, such as vehicle licenses, to verify their identities. Manual verification of these documents is costly. Hence, there is a clear demand for automatic document recognition. This study proposes a two-stage method to pre-process a vehicle license for a better text recognition. In the first stage, the distortion that often appears in photographed documents is repaired. In the second stage, each data field is carefully located. The subsequent captured fields are then processed by a commercial text recognition software. Due to the sensitivity of vehicle licenses, it is difficult to collect enough data for model training. Consequently, artificial vehicle licenses are synthesized for model training to mitigate overfitting. In addition, an encoder is applied to reduce the background noise, remove the border crossing over text, and make the blurred text clearer before text recognition. The proposed method on a real dataset shows that the accuracy is close to 90%.
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许可证识别的两阶段预处理
各种金融保险和投资应用网站要求客户上传身份证明文件,如车辆牌照,以验证其身份。手工验证这些文件的成本很高。因此,对自动文档识别有明确的需求。本研究提出了一种两阶段的机动车牌照预处理方法,以获得更好的文本识别效果。在第一阶段,对拍摄文件中经常出现的失真进行修复。在第二阶段,仔细定位每个数据字段。随后捕获的字段然后由商业文本识别软件处理。由于车辆牌照的敏感性,很难收集到足够的数据进行模型训练。因此,合成人工车辆牌照用于模型训练,以减轻过拟合。此外,在文本识别之前,使用编码器来降低背景噪声,去除文本上的边框,使模糊的文本更清晰。在实际数据集上,该方法的准确率接近90%。
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