基于深度学习的商标图像图形元素识别方法

Arjeton Uzairi, Arianit Kurti, Zenun Kastrati
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引用次数: 0

摘要

使用维也纳分类中的维也纳代码对商标图像进行标注是由领域专家使用特定关键词在商标图像数据库中进行检索的人工过程。手动贴标是一个既耗时又容易出错的过程。因此,在本文中,我们研究了深度学习技术如何改进和自动标记新的未标记商标图像。本文对CNN、LSTM和GRU三种不同的深度学习模型进行了训练和测试,并收集了从欧盟知识产权局开放数据门户中提取的14,500个独特徽标组成的数据集。在数据集上建立基线结果的一组对照实验表明,CNN在准确率和训练时间上都优于其他两种模型。实验结果还表明,深度学习模型是知识产权局在实际应用中自动化商标图像分类任务的重要工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Learning-based Solution for Identification of Figurative Elements in Trademark Images
Labeling of trademark images with Vienna codes from the Vienna classification is a manual process carried out by domain experts by searching trademark image databases using specific keywords. Manual labeling is both a time-consuming and error-prone process. Therefore, in this paper, we investigate how deep learning techniques can improve and automate labeling of new unlabeled trademark images. Three different deep learning models, namely CNN, LSTM and GRU, are trained and tested on a collected dataset composed of 14,500 unique logos extracted from the European Union Intellectual Property Office Open Data Portal. A set of controlled experiments establishing baseline results on the dataset showed that CNN outperforms the other two models in terms of both accuracy and training time. The experimental results also suggest that deep learning models are an important tool that can be applied by Intellectual Property Offices in real-world applications to automate the trademark image classification task.
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