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Logo Recognition by Combining Deep Convolutional Models in a Parallel Structure

机译:通过在并行结构中组合深度卷积模型来识别徽标

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In this paper, a new approach is proposed for logo recognition using deep convolutional neural networks. Precise recognition of logos is of high importance in several applications like intelligent traffic control systems and copyright infringement. To enhance the efficiency of logo recognition, we have employed several strategies. In the first strategy, pre-trained deep models are employed for deep feature extraction and classification using the Support Vector Machine (SVM) classifiers. In the second strategy, existing pre-trained deep models are modified for logo recognition after transfer learning and fine-tuning. Finally, fine-tuned models are employed in a parallel structure to enhance the efficiency of logo recognition. We tested the proposed structures with Logos32-plus dataset and the results showed that combining fine-tuned deep models using a voting algorithm gives rise to the best recognition rate of 98.4%. The comparison of results of the proposed structure with a state-of-art deep approach for logo recognition shows the efficiency of the proposed approach.
机译:在本文中,提出了一种使用深度卷积神经网络进行徽标识别的新方法。徽标的精确识别在智能交通控制系统和版权侵权等多种应用中非常重要。为了提高徽标识别的效率,我们采用了几种策略。在第一种策略中,使用支持向量机(SVM)分类器对预训练的深度模型进行深度特征提取和分类。在第二种策略中,对现有的预训练深层模型进行了修改,以在进行转移学习和微调后对徽标进行识别。最后,在并行结构中采用了经过微调的模型,以提高徽标识别的效率。我们使用Logos32-plus数据集测试了所提出的结构,结果表明,使用投票算法将经过微调的深度模型组合在一起,可以达到98.4%的最佳识别率。所提出的结构的结果与最先进的徽标识别深层方法的比较表明了所提出方法的效率。

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