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Intelligent trademark similarity analysis of image, spelling, and phonetic features using machine learning methodologies

机译:使用机器学习方法的图像,拼写和语音特征的智能商标相似性分析

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摘要

The rapid development of consumer products with short life spans, along with fast, global e-commerce and e-marketing distribution of products and services requires greater due diligence to protect intangible assets such as brands and corporate logos which can easily be copied or distributed through grey channels and internet sales sites. Trademarks (TMs) are government registered intellectual property rights (IPRs) used to legally protect a companies' identities and brand equity. The rapid growth of global trademark (TM) registrations and the number of TM infringement cases pose a great challenge for TM owners to detect infringement and take action to protect TMs, consumer trust, and market share. This research develops advanced TM similarity assessment models using machine learning (ML) approaches. Litigation principles over similarity follow US TM laws which are consistent with global TM protection convention under the World Intellectual Property Organization (WIPO). This research covers the similarity analysis of TM spelling, pronunciation, and images, which are most likely to cause TM confusion among customers. The research focuses on deploying machine learning for natural language (spelling and phonetic features) and image similarity analyses. The vector space modeling algorithms are trained and verified for the similarity analysis of TM wordings in both spelling and pronunciation. The convolutional neural network and Siamese neural network models are trained and verified for TM image similarity comparison. The training and testing sets consist of 250,000 and 20,000 different image pairs respectively. This research provides a significant contribution toward implementing intelligent and automated IPR protection. The system solution supports users (companies, TM attorneys, or IP officers) to identify similar registered TMs before registering new TMs ensuring uniqueness to avoid infringement disputes. The solution also supports automatic screening of online content to detect potential infringement of TM images and wording for effective global IPR protection.
机译:寿命短暂的消费产品的快速发展,以及快速,全球电子商务和产品和服务的电子营销分配需要更大的尽职调查,以保护可轻松复制或分发的品牌和公司标志等无形资产灰色频道和互联网销售网站。商标(TMS)是政府注册的知识产权(IPRS),用于合法保护公司的身份和品牌股权。全球商标(TM)注册的快速增长和TM侵权案件的数量为TM业主造成了巨大挑战,以检测侵权并采取行动,以保护TMS,消费者信任和市场份额。本研究使用机器学习(ML)方法开发先进的TM相似性评估模型。相似性的诉讼原则遵循美国的TM法,这与世界知识产权组织(WIPO)下的全球TM保护公约一致。本研究涵盖了TM拼写,发音和图像的相似性分析,最有可能导致客户之间的混淆。该研究侧重于为自然语言(拼写和语音特征)和图像相似性分析部署机器学习。矢量空间建模算法训练并验证了拼写和发音中TM丝绸的相似性分析。训练卷积神经网络和暹罗网络模型,并验证了TM图像相似性比较。培训和测试集分别由250,000和20,000种不同的图像对组成。本研究为实施智能和自动化知识产权保护提供了重大贡献。系统解决方案支持用户(公司,TM律师或知识产权官员),以识别类似的注册TMS,然后再注册新的TMS确保唯一性以避免侵权纠纷。该解决方案还支持自动筛选在线内容,以检测有效全球知识产权保护的TM图像和措辞的潜在侵犯。

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