Multimodal archive resources organization based on deep learning: a prospective framework

IF 2.4 3区 管理学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Yaolin Zhou, Zhaoyang Zhang, Xiaoyu Wang, Quanzheng Sheng, Rongying Zhao
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引用次数: 0

Abstract

Purpose

The digitalization of archival management has rapidly developed with the maturation of digital technology. With data's exponential growth, archival resources have transitioned from single modalities, such as text, images, audio and video, to integrated multimodal forms. This paper identifies key trends, gaps and areas of focus in the field. Furthermore, it proposes a theoretical organizational framework based on deep learning to address the challenges of managing archives in the era of big data.

Design/methodology/approach

Via a comprehensive systematic literature review, the authors investigate the field of multimodal archive resource organization and the application of deep learning techniques in archive organization. A systematic search and filtering process is conducted to identify relevant articles, which are then summarized, discussed and analyzed to provide a comprehensive understanding of existing literature.

Findings

The authors' findings reveal that most research on multimodal archive resources predominantly focuses on aspects related to storage, management and retrieval. Furthermore, the utilization of deep learning techniques in image archive retrieval is increasing, highlighting their potential for enhancing image archive organization practices; however, practical research and implementation remain scarce. The review also underscores gaps in the literature, emphasizing the need for more practical case studies and the application of theoretical concepts in real-world scenarios. In response to these insights, the authors' study proposes an innovative deep learning-based organizational framework. This proposed framework is designed to navigate the complexities inherent in managing multimodal archive resources, representing a significant stride toward more efficient and effective archival practices.

Originality/value

This study comprehensively reviews the existing literature on multimodal archive resources organization. Additionally, a theoretical organizational framework based on deep learning is proposed, offering a novel perspective and solution for further advancements in the field. These insights contribute theoretically and practically, providing valuable knowledge for researchers, practitioners and archivists involved in organizing multimodal archive resources.

基于深度学习的多模态档案资源组织:一个前瞻性框架
目的档案管理数字化随着数字技术的成熟而迅速发展。随着数据的指数式增长,档案资源已从文本、图像、音频和视频等单一模式过渡到综合多模式形式。本文指出了该领域的主要趋势、差距和重点领域。此外,它还提出了一个基于深度学习的理论组织框架,以应对大数据时代的档案管理挑战。设计/方法/途径作者通过全面系统的文献综述,调查了多模态档案资源组织领域以及深度学习技术在档案组织中的应用。研究结果作者的研究结果表明,大多数关于多模态档案资源的研究主要集中在与存储、管理和检索相关的方面。此外,在图像档案检索中使用深度学习技术的情况越来越多,这凸显了深度学习技术在加强图像档案组织实践方面的潜力;然而,实际研究和实施仍然很少。综述还强调了文献中的空白,强调需要更多的实际案例研究,并将理论概念应用到现实世界的场景中。针对这些见解,作者的研究提出了一个基于深度学习的创新型组织框架。该框架旨在解决多模态档案资源管理中固有的复杂问题,是朝着更高效、更有效的档案管理实践迈出的重要一步。此外,还提出了一个基于深度学习的理论组织框架,为该领域的进一步发展提供了新的视角和解决方案。这些见解在理论和实践上都有所贡献,为参与组织多模态档案资源的研究人员、从业人员和档案管理人员提供了宝贵的知识。
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来源期刊
Aslib Journal of Information Management
Aslib Journal of Information Management COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
5.30
自引率
19.20%
发文量
79
期刊介绍: Aslib Journal of Information Management covers a broad range of issues in the field, including economic, behavioural, social, ethical, technological, international, business-related, political and management-orientated factors. Contributors are encouraged to spell out the practical implications of their work. Aslib Journal of Information Management Areas of interest include topics such as social media, data protection, search engines, information retrieval, digital libraries, information behaviour, intellectual property and copyright, information industry, digital repositories and information policy and governance.
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