车牌号码识别的比较迁移学习技术

Rizki Rafiif Amaanullah, Rifqi Akmal Saputra, Faisal Dharma Adhinata, Nur Ghaniaviyanto Ramadhan
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引用次数: 1

摘要

如果发生特殊事故,需要对高速公路上和停车场等特定场所的车辆活动进行监控。意外事件如交通事故或车辆被盗随时可能发生。因此,通过车牌识别跟踪已成为一件重要的事情,并已成为一个热门话题,各种方法的使用。之前的研究使用机器学习技术来识别车牌上的字符。这种技术的使用并没有产生最佳的精度。因此,我们建议使用迁移学习技术来获得更好的准确性结果。本研究评估了三种迁移学习模型,即DenseNet121、MobileNetV2和NASNetMobile模型。本研究的实验是利用停车场的车牌数据进行的。准确性计算计算正确识别的字符数除以号牌上的字符总数。实验结果表明,DenseNet121模型的准确率最高,为96.42%。车牌书写风格的差异也影响了准确性结果。本研究为车牌识别中迁移学习技术的应用提供了新的思路。
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Comparative Transfer Learning Techniques for Plate Number Recognition
Monitoring vehicle activity both on the highway and in certain places such as parking lots needs to be done if there is a specific incident. Unexpected events such as accidents or vehicle theft may occur anytime. Therefore, tracking through number plate recognition has become something important and has become a hot topic with the various methods used. Previous research used machine learning techniques to recognize characters on number plates. The use of this technique has not produced optimal accuracy. Therefore, we propose using transfer learning techniques to achieve better accuracy results. This research evaluated three transfer learning models, namely DenseNet121, MobileNetV2, and NASNetMobile models. The experiment in this research was carried out using the data on number plates in the parking lot. The accuracy calculation counted the number of correctly recognized characters divided by the total characters on the number plate. The experimental results show that the DenseNet121 model produced the best accuracy, 96.42%. Differences in number plate writing style also affected the accuracy results. This research could provide insight into the use of transfer learning techniques in the case of number plate recognition.
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