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Recognition of Vehicle-Logo Based on Faster-RCNN

机译:基于Faster-RCNN的车辆标志识别

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摘要

Vehicle-logo recognition, consisting of vehicle-logo location and its classification, is an important application of object detection in intelligent transportation. In this paper, we adopt the strategy of integrating Faster-RCNN model with two different convolutional neural networks (VGG-16 and ResNet-50) respectively and prepare a vehicle-logo images dataset containing 4000 vehicle images with different angles, backgrounds and resolutions for 8 different vehicle logos. In our experiments, the better mean Average Precision result of 94.33% is achieved in spite of the small proportion, huge intra-class variability and complex external environment of vehicle logos in the images, which shows that the methods based on Faster-RCNN can be used to recognize vehicle logos of road-monitoring vehicles and have good robustness. Integrating Faster-RCNN model with VGG-16 is better than ResNet-50 in the dataset we prepare, which illustrates the deeper network may not be the better for different recognition tasks with different amount of data.
机译:车辆徽标识别由车辆徽标的位置及其分类组成,是对象检测在智能交通中的重要应用。在本文中,我们采用将Faster-RCNN模型分别与两个不同的卷积神经网络(VGG-16和ResNet-50)集成的策略,并准备了包含4000个不同角度,背景和分辨率的车辆图像的车辆徽标图像数据集。 8种不同的车辆徽标。在我们的实验中,尽管图像中车辆徽标的比例小,类内差异大以及复杂的外部环境,但平均精度仍达到94.33%,这表明基于Faster-RCNN的方法可以实现较高的平均精度。用于识别道路监控车辆的车辆徽标,并且具有良好的鲁棒性。在我们准备的数据集中,将Faster-RCNN模型与VGG-16集成要比ResNet-50更好,这说明对于具有不同数据量的不同识别任务,更深的网络可能不是更好。

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