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Improving the Accuracy of License Plate Detection and Recognition in General Unconstrained Scenarios

机译:在一般无约束情况下提高车牌检测和识别的准确性

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Nowadays, Automatic License Plate Recognition (ALPR) is widely used in commercial applications. Some of the existing methods focus on the detection of license plate (LP) images with approximate frontage, while others deal with the unconstrained LP of images, but the result of LP recognition under some extreme conditions is unsatisfactory. This work mainly focuses on improving the existing unconstrained LP capturing method [1] to extract the LP and recognize it in several extreme cases as many LPs may be seriously distorted, even not parallelogram. Our main contributions are the following. First is to modify the loss function of the existing Convolutional Neural Networks (CNNs) so that the output parameters can form a parallelogram directly, then, LPs could be detected more accurate in a single input image first. Secondly, two parameters need to be estimated are added to the output of the networks’ fully connected layer structure to make the corresponding output parameters form an arbitrary quadrilateral, which is closer to the LP shape of the actual imaging. In this way, it can detect and correct LPs with various shapes (LP may be deformed into irregular quadrilateral due to various reasons) in a single image. Thirdly, a feedback mechanism would be added to identify and process the LP images which are not detected correctly after the LP characters are recognized by Optical Character Recognition (OCR) network, then, return the processed image to the detection network for re-detection. In general, LP can be detected correctly. Compared to the other benchmark methods, the experimental results have demonstrated that the proposed method achieved the best performance, especially in the extreme conditions.
机译:如今,自动许可证识别(ALPR)广泛用于商业应用。一些现有方法专注于检测具有近似正面的牌照(LP)图像,而其他方法则处理无约会的LP图像,但在某些极端条件下LP识别的结果是不令人满意的。这项工作主要集中在改善现有的无约会LP捕获方法[1],以提取LP并在几个极端情况下识别它,因为许多LP可能会严重扭曲,甚至不是平行四边形。我们的主要贡献是以下内容。首先,为了修改现有卷积神经网络(CNNS)的损耗功能,使得输出参数可以直接形成平行四边形,然后,首先可以在单个输入图像中更准确地检测LPS。其次,需要估计两个参数被添加到网络的完全连接层结构的输出中,以使相应的输出参数形成任意四边形,其更靠近实际成像的LP形状。以这种方式,它可以检测和校正具有各种形状的LPS(由于各种原因,LP可以变形为不规则的四边形)。第三,将添加反馈机制以识别和处理在通过光学字符识别(OCR)网络识别LP字符之后未正确检测到的LP图像,然后将处理后的图像返回到检测网络以进行重新检测。通常,可以正确地检测LP。与其他基准方法相比,实验结果表明该方法实现了最佳性能,特别是在极端条件下。

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