安全校园的匿名车辆检测:使用深度学习的车牌识别框架

Crystal Dias, Astha Jagetiya, Sandeep Chaurasia
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引用次数: 9

摘要

自车牌自动识别问世以来,已被广泛应用于众多领域。准确获取车牌号码的能力在维护交通规则、停车执法和安全方面是有益的。在本文中,我们讨论了使用ALPR来识别进入我们大学校园的匿名车辆的结果。我们使用深度学习进行车牌定位,使用Tesseract OCR进行车牌识别。通过这样做,我们可以读取进入特定校园的车辆的车牌,并通过将其与预定义的授权车辆列表进行比较来验证车辆是否获得授权。为了有效地提取这些车牌,我们使用Faster RCNN训练我们的模型,并对其进行调整以获得最佳输出。本文对其结果进行了讨论。此外,本文还提到了用于预处理所识别车牌的图像处理技术。对于字符分割和字符识别,我们使用了tesseract。在训练我们的车牌提取模型时,RMSprop优化器在初始学习率为0.002时获得的最小损失为0.011。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anonymous Vehicle Detection for Secure Campuses: A Framework for License Plate Recognition using Deep Learning
Automatic license plate recognition is being widely used for numerous applications since its inception. The ability to procure license plate numbers accurately has been beneficial in maintaining traffic rules, parking enforcement, and security. In this paper, we have discussed the results of using ALPR for recognition of anonymous vehicles entering our university campus. We used deep learning for license plate localization and Tesseract OCR for license plate recognition. By doing so we could read the license plates of vehicles entering a particular campus and verify if the vehicle is authorized by comparing it with a predefined list of authorized vehicles. To efficiently extract these number plates we have trained our model using Faster RCNN and tuned it to get the best output. The results of which have been discussed in this paper. Further, the image processing techniques used for preprocessing the identified number plate have been mentioned here. For character segmentation and character recognition, we have used tesseract. While training our model for number plate extraction the minimum loss obtained was 0.011 with RMSprop optimizer at initial learning rate 0.002.
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