The License Plate Recognition (LPR) field has made impressive advances in the last decade due to novel deep learning approaches combined with the increased availability of training data. However, it still has some open issues, especially when the data come from low-resolution (LR) and low-quality images/videos, as in surveillance systems. This work focuses on license plate (LP) reconstruction in LR and low-quality images. We present a Single-Image Super-Resolution (SISR) approach that extends the attention/transformer module concept by exploiting the capabilities of PixelShuffle layers and that has an improved loss function based on LPR predictions. For training the proposed architecture, we use synthetic images generated by applying heavy Gaussian noise in terms of Structural Similarity Index Measure (SSIM) to the original high-resolution (HR) images. In our experiments, the proposed method outperformed the baselines both quantitatively and qualitatively. The datasets we created for this work are publicly available to the research community at https://github.com/valfride/lpr-rsr/
翻译:在过去十年里,由于新颖的深层次学习方法,加上培训数据增加,许可证板识别(LPR)领域取得了令人印象深刻的进展,然而,它仍有一些尚未解决的问题,特别是数据来自低分辨率(LR)和低质量图像/视频,如监测系统。这项工作侧重于LR的牌照(LP)重建和低质量图像。我们提出了一个单一图像超级分辨率(SISR)方法,通过利用PixelShuffle层的能力扩大关注/传输模块概念,并根据LPR预测改进了损失功能。为培训拟议的结构结构,我们使用从结构相似度指数测量(SSIM)到原始高分辨率图像的重高斯噪音产生的合成图像。在我们的实验中,拟议方法在数量上和质量上都超越了基线。我们为这项工作创建的数据集在https://github.com/valfride/lpr-rrrr/ 上向研究界公开提供。