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Comparison of Tensorflow Object Detection Networks for Licence Plate Localization

机译:牌照本地化的TensoRFLOF对象检测网络的比较

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In this work, the object detection networks of TensorFlow framework are trained and tested for the automatic license plate localization task. Firstly, a new dataset is prepared for Turkish license plates. The images in the dataset are labeled with two classes which are the car and the license plate. Four different object detection networks were configured to run on Google's Colab environment. These network configurations were the Single Shot MultiBox Detector (SSD) using MobileNet features and Resnet50 features, the Faster Region Convolutional Neural Network (Faster R-CNN) using Inception layers for features, and the Region-based Fully Convolutional Networks (R-FCN) with Resnet101 features. These networks were compared to determine the performance of license plate localization. Different types of input images were used to test the algorithms. Index Terms-SSD, Faster R-CNN, R-FCN, object detection, license plate localization.
机译:在这项工作中,训练了TensoRFlow框架的对象检测网络并测试了自动许可板本地化任务。首先,为土耳其牌照准备新的数据集。数据集中的图像标有两个类,该类是汽车和车牌。四种不同的对象检测网络被配置为在Google的Colab环境上运行。这些网络配置是使用MobileNet特征和Reset50特征的单次拍摄多射门检测器(SSD),使用Inception层的Reset50功能,更快的区域卷积神经网络(更快的R-CNN),以及基于区域的完全卷积网络(R-FCN)使用Reset101功能。比较这些网络以确定车牌本地化的性能。使用不同类型的输入图像来测试算法。索引条款-SSD,更快的R-CNN,R-FCN,对象检测,车牌本地化。

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