基于简化CNN的稳健高效车牌特征检测系统

Selena He, Tu N. Nguyen, Kun Suo
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引用次数: 0

摘要

当前的车牌识别系统在图像降噪和车牌特征检测过程中遇到了困难。本文提出了一种基于YOLO神经网络的高效、高精度车牌检测和字符检测方案。YOLO神经网络是一种简化的基于cnn的神经网络框架,用于鲁棒图像处理系统。与大多数方法不同,我们提出的系统只需要对数据集进行优先级分析,以评估图像内部的潜在噪声,以便程序实现可以更有效,更有针对性地使用YOLO神经网络进行设计和优化。该系统将车牌检测的准确率从传统图像处理方法的63%提高到90.3%。
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Robust Efficient License Plate and Character Detection System Based on Simplified CNN
Current license plate recognition systems struggle with image noise reduction and license plate feature detecting processes. This paper presents an efficient and highly accurate license plate detection and character detection program based on the YOLO neural network, which is a simplified CNN-based neural network frame for robust image processing systems. Different than most approaches, the system we proposed simply requires a prioritized analysis of the dataset in order to evaluate potential noises inside images so that program implementations could be more effective and more targeted to design and optimize with YOLO neural network. With our presented system, the accuracy of license plate detection improves from 63% which is performed by traditional image processing methods to 90.3%.
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