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首页> 外文期刊>Intelligent Transportation Systems, IEEE Transactions on >Vehicle Logo Recognition System Based on Convolutional Neural Networks With a Pretraining Strategy
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Vehicle Logo Recognition System Based on Convolutional Neural Networks With a Pretraining Strategy

机译:基于卷积神经网络的带预训练的车辆标志识别系统

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摘要

Since a vehicle logo is the clearest indicator of a vehicle manufacturer, most vehicle manufacturer recognition (VMR) methods are based on vehicle logo recognition. Logo recognition can be still a challenge due to difficulties in precisely segmenting the vehicle logo in an image and the requirement for robustness against various imaging situations simultaneously. In this paper, a convolutional neural network (CNN) system has been proposed for VMR that removes the requirement for precise logo detection and segmentation. In addition, an efficient pretraining strategy has been introduced to reduce the high computational cost of kernel training in CNN-based systems to enable improved real-world applications. A data set containing 11 500 logo images belonging to 10 manufacturers, with 10 000 for training and 1500 for testing, is generated and employed to assess the suitability of the proposed system. An average accuracy of 99.07% is obtained, demonstrating the high classification potential and robustness against various poor imaging situations.
机译:由于车辆徽标是车辆制造商最清楚的指标,因此大多数车辆制造商识别(VMR)方法都基于车辆徽标识别。由于难以在图像中精确分割车辆徽标,并且同时需要针对各种成像情况的鲁棒性,徽标识别仍然是一个挑战。本文提出了一种用于VMR的卷积神经网络(CNN)系统,该系统消除了对精确徽标检测和分段的要求。另外,已经引入了一种有效的预训练策略,以减少基于CNN的系统中内核训练的高计算成本,以实现改进的实际应用。生成了一个数据集,该数据集包含属于10个制造商的11×500个徽标图像,其中10×000用于培训,1500用于测试,用于评估所提议系统的适用性。获得了99.07%的平均准确度,证明了在各种不良成像情况下的高分类潜力和鲁棒性。

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