基于transformer的深度度量学习的专利图像检索

IF 2.2 Q2 INFORMATION SCIENCE & LIBRARY SCIENCE World Patent Information Pub Date : 2023-09-01 DOI:10.1016/j.wpi.2023.102217
Kotaro Higuchi, Keiji Yanai
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引用次数: 0

摘要

知识产权工作涉及广泛领域。特别是,专利领域的现有技术文献检索需要从大量的过去文献中找到可用于确定新颖性和创造性步骤的文件。针对这一检索实践,人们一直希望研究和开发一种直接检索图纸和发明的基本信息的图纸检索技术。然而,除了一些国家,专利图通常被描述为黑白抽象图,其模态特征与自然图像的模态特征差异很大,因此还有待探索。本研究通过在DeepPatent (Kucer et al., 2022)数据集中引入InfoNCE和ArcFace,而不是传统的Triplet,实现了比以往更高的准确性。此外,我们开发了一个应用程序,使用户可以使用任何图像搜索专利图纸。我们的架构可以应用于专利图和许多其他类似模态的图,如机械图、设计专利、商标、图表和草图。
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Patent image retrieval using transformer-based deep metric learning

Intellectual property work covers a wide range of areas. In particular, prior art literature searching in the patent field requires finding documents that can be used to determine novelty and inventive steps from a vast amount of past literature. Concerning this search practice, research and development of a drawing search technology that directly searches drawings, and essential information about inventions, has long been desired. However, patent drawings are usually described as black-and-white abstract drawings, except in some countries, and their modal characteristics are very different from those of natural images, so they have yet to be explored. This study achieved higher accuracy than the previous ones by introducing InfoNCE and ArcFace in the DeepPatent (Kucer et al., 2022) dataset instead of the conventional Triplet. In addition, we developed an application that enables users to search for patent drawings using any images. Our architecture can be applied to patent drawings and many other modal-like drawings, such as mechanical drawings, design patents, trademarks, diagrams, and sketches.

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来源期刊
World Patent Information
World Patent Information INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
3.50
自引率
18.50%
发文量
40
期刊介绍: The aim of World Patent Information is to provide a worldwide forum for the exchange of information between people working professionally in the field of Industrial Property information and documentation and to promote the widest possible use of the associated literature. Regular features include: papers concerned with all aspects of Industrial Property information and documentation; new regulations pertinent to Industrial Property information and documentation; short reports on relevant meetings and conferences; bibliographies, together with book and literature reviews.
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