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Deep learning Convolutional Neural Network for Unconstrained License Plate Recognition

机译:深度学习卷积神经网络用于无限制车牌识别

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The evolve of neural networks algorithm into deep learning convolutional neural networks seems like the next generation for object detection. This algorithm works has a significantly better accuracy and did not tied to any particular aspect ratio. License plate and traffic signs detection and recognition have a number of different applications relevant for transportation systems, such as traffic monitoring, detection of stolen vehicles, driver navigation support or any statistical research. An exponential increase in number of vehicles necessitates the use of automated systems to maintain vehicle information. The information is highly required for both management of traffic as well as reduction of crime. Number plate recognition is an effective way for automatic vehicle identification. A number of methods have been proposed, but only for particular cases and working under constraints (e.g. known text direction or high resolution). Deep learning convolutional neural networks work well especially in handles occlusion/rotation better, therefore we believe this approach is able to provide a better solution to the unconstrained license plate recognition problem.
机译:神经网络算法向深度学习卷积神经网络的发展似乎是下一代的目标检测。该算法的工作精度显着提高,并且与任何特定的宽高比无关。车牌和交通标志的检测和识别具有与交通系统相关的许多不同应用,例如交通监控,被盗车辆的检测,驾驶员导航支持或任何统计研究。车辆数量的指数增长需要使用自动化系统来维护车辆信息。信息对于流量管理和减少犯罪都是必不可少的。车牌识别是自动识别车辆的有效方法。已经提出了许多方法,但是仅针对特定情况并且在约束条件下(例如,已知的文本方向或高分辨率)工作。深度学习卷积神经网络在处理遮挡/旋转方面效果更好,因此,我们相信这种方法能够为无约束的车牌识别问题提供更好的解决方案。

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