基于生成对抗网络技术的车牌动态模糊修复

Yu-Huei Cheng, Po-Yun Chen
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引用次数: 0

摘要

近年来,由于人工智能的快速发展,许多相关技术在各个领域得到了广泛的应用,其中包括基于深度学习的车牌识别技术。然而,基于深度学习的车牌识别技术仍然存在一些问题,如不能处理弱光和动态模糊的车牌图像。此外,在现实生活中,由于车辆运动速度和相机曝光时间等因素,车牌往往会出现模糊,给车牌识别带来困难。因此,本研究提出了一种基于生成对抗网络(GAN)技术的动态模糊车牌复原方法。利用16900个原始车牌数据集和25000次迭代训练,训练出高保真车牌模型,随机生成3000个高保真车牌数据集,并在高保真车牌数据集上加入动态模糊效果。然后,利用基于pix2pix技术的cGAN网络结构,从动态模糊车牌中恢复出清晰的车牌;在数据集上的初步实验中,我们的模型能够有效地恢复3000个模糊等级为85或更高的车牌中的2873个动态模糊车牌,恢复率为95.7%。与传统的图像处理方法相比,该方法具有更好的性能和对大多数物理环境的适应性。未来,我们将进一步对模型进行改进和优化,引入污染、曝光、黑暗、障碍物等效应,训练出具有多种功能的车牌恢复模型,以满足日益广泛的车牌识别应用需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Generative Adversarial Network Technology for Repairing Dynamically Blurred License Plates
In recent years, due to the rapid development of artificial intelligence, many related technologies have been widely used in various fields, including the deep learning-based license plate recognition technology. However, there are still some problems with the deep learning-based license plate recognition technology, such as the inability to process license plate images with low light and dynamic blur. In addition, in real life, due to factors such as the speed of vehicle movement and camera exposure time, license plates often appear blurred, causing difficulties in license plate recognition. Therefore, this study proposes a method for restoring dynamic blur license plates based on Generative Adversarial Network (GAN) technology. Using a dataset of 16,900 original license plates and 25,000 iterations of training, a high-fidelity license plate model was trained and a dataset of 3,000 high-fidelity license plates was randomly generated, with dynamic blur effects added to the high-fidelity license plate dataset. Then, using the structure of the cGAN network in the pix2pix technology, the clear license plate was restored from the dynamic blur license plate. Our model was able to effectively restore 2,873 dynamic blur license plates out of 3,000 license plates with a blur level of 85 or more in the preliminary experiment on the dataset, with a restoration rate of 95.7%. The proposed method is more excellent and adaptable to most physical environments than traditional image processing methods. In the future, we will further improve and optimize the model, and introduce effects such as pollution, exposure, darkness, and obstruction to train a license plate restoration model with multiple functions to meet the increasingly wide-ranging needs of license plate recognition applications.
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