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An intelligent content-based image retrieval methodology using transfer learning for digital IP protection

机译:基于智能内容的图像检索方法,使用转移学习数字IP保护

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摘要

Trademarks are used by companies to help customers identify products or services using images or logos in addition to slogans, words, names, sounds, smells, color, and motions. Trademark logos are widely distributed through advertising and published through online media websites and social networks such as Facebook, Pin-terest, and Flicker. The intellectual property (IP) rights of the trademark owners have strong legal protection when registered with international intellectual property platforms such as the US Patent and Trademark Office and the World Intellectual Property Office. Using a registered trademark without prior consent of the owner may result in intellectual property infringement with severe legal consequences under civil or criminal law. Companies invest large capital resources in protecting their trademark from being copied or misused in ways that confuse the customers or steal market share. This research focuses on trademark (TM) logo image retrieval systems used in the cyber marketplaces to identify similar TM logo images online automatically and intelligently. The methodology developed for TM logo similarity measurement is based on content-based image retrieval. Content retrieval reduces the gap between high-level semantic interpretation of human vision and the low-level features processed by the machine. The proposed transfer learning methodology uses embedded learning with triplet loss to fine-tune a pre-trained convolutional neural network model. The Logo-2K+ large-scale logo dataset is re-organized and divided into the top 70% as the training set and the remaining 30% as the testing set. The results show that the novel transfer learning approach is developed and demonstrated in this research for the intelligent automatic detection of similar TM logo images with high accuracy. The verification experiments (trained with 7625 logos and tested with 3221 logos) demonstrates that the Recall@10 of the test set can reach 95% using the advanced convolutional neural network model (VGG19) adjusted with the novel transfer learning methodology.
机译:公司使用商标来帮助客户使用图像或徽标来识别产品或服务,除了口号,单词,名称,声音,嗅觉,颜色和动作。商标徽标通过广告和通过在线媒体网站和社交网络(如Facebook,Pin-Terest和Flicker)广泛分发。商标所有者的知识产权(知识产权)权利当在美国专利和商标办公室等国际知识产权平台上注册时,商标所有者具有很强的法律保护。未经主人事先同意使用注册商标可能导致知识产权侵犯民事或刑法严重的法律后果。公司投资大量资本资源,保护其商标以困扰客户或窃取市场份额的方式复制或滥用。本研究侧重于网络市场中使用的商标(TM)徽标图像检索系统,以便自动且智能地识别类似的TM徽标映像。为TM徽标相似度测量开发的方法基于基于内容的图像检索。内容检索降低了人类视觉的高级语义解释与机器处理的低级功能之间的差距。该提议的转移学习方法使用嵌入式学习,以三重态丢失来微调预先训练的卷积神经网络模型。 Logo-2K +大型徽标数据集重新组织并分为培训集的前70%,剩余30%作为测试集。结果表明,在本研究中开发和展示了新的转移学习方法,以实现高精度的类似TM徽标图像的智能自动检测。验证实验(用7625个徽标培训并用3221个徽标测试)表明测试集的召回@ 10使用新颖的转移学习方法调整的先进卷积神经网络模型(VGG19)可以达到95%。

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