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A Key Point-Based License Plate Detection with Pyramid Network Structure

机译:具有金字塔网络结构的基于关键点的车牌检测

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In this paper, a key point detection method of license plate based on convolution network is proposed. Traditional license plate detection methods use features like shape, texture and color to locate a license plate with defects such as pertinence, high time complexity, window redundancy and poor robustness. The license plate detection methods based on deep learning have been greatly improved in accuracy and real-time performance, but the detection results of license plates with large rotation angle, small size, less illumination and occlusion are poor. In our method, the rotation angle of the license plate is obtained by detecting four corners of the license plate, and the perspective transformation is used for correction. In order to improve the location accuracy of license plate object, this paper proposes a pyramid network structure to extract high-level and low-level semantic features. Experiments show that the proposed model can not only detect the license plate in general scenes, but also has good detection effect for license plate with large rotation angle.
机译:本文提出了一种基于卷积网络的牌照的关键点检测方法。传统牌照检测方法使用形状,纹理和颜色等功能,以定位具有缺陷的牌照,如采取的缺陷,高时间复杂性,窗口冗余,鲁棒性差。基于深度学习的牌照检测方法在准确性和实时性能方面得到了大大提高,但旋转角度大,尺寸小,照明和闭塞具有大的牌照的检测结果差。在我们的方法中,通过检测牌照的四个角来获得牌照的旋转角度,并且透视变换用于校正。为了提高牌照对象的位置准确性,本文提出了金字塔网络结构,以提取高级和低级别的语义特征。实验表明,所提出的模型不仅可以在一般场景中检测车牌,而且对具有大的旋转角度的牌照具有良好的检测效果。

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