Ju Fei
College of Art & Design, Nanjing Forestry University, Nanjing 210037, China.
J Imaging. 2024 Oct 26;10(11):272. doi: 10.3390/jimaging10110272.
The application of image recognition techniques in the realm of cultural heritage represents a significant advancement in preservation and analysis. However, existing scholarship on this topic has largely concentrated on specific methodologies and narrow categories, leaving a notable gap in broader understanding. This study aims to address this deficiency through a thorough bibliometric analysis of the Web of Science (WoS) literature from 1995 to 2024, integrating both qualitative and quantitative approaches to elucidate the macro-level evolution of the field. Our analysis reveals that the integration of artificial intelligence, particularly deep learning, has significantly enhanced digital documentation, artifact identification, and overall cultural heritage management. Looking forward, it is imperative that research endeavors expand the application of these techniques into multidisciplinary domains, including ecological monitoring and social policy. Additionally, this paper examines non-invasive identification methods for material classification and damage detection, highlighting the role of advanced modeling in optimizing the management of heritage sites. The emergence of keywords such as 'ecosystem services', 'models', and 'energy' in the recent literature underscores a shift toward sustainable practices in cultural heritage conservation. This trend reflects a growing recognition of the interconnectedness between heritage preservation and environmental sciences. The heightened awareness of environmental crises has, in turn, spurred the development of image recognition technologies tailored for cultural heritage applications. Prospective research in this field is anticipated to witness rapid advancements, particularly in real-time monitoring and community engagement, leading to the creation of more holistic tools for heritage conservation.
图像识别技术在文化遗产领域的应用是保护和分析方面的一项重大进展。然而,关于这一主题的现有学术研究主要集中在特定方法和狭窄类别上,在更广泛的理解方面存在明显差距。本研究旨在通过对1995年至2024年Web of Science(WoS)文献进行全面的文献计量分析来弥补这一不足,整合定性和定量方法以阐明该领域的宏观层面演变。我们的分析表明,人工智能,特别是深度学习的整合,显著增强了数字文档、文物识别和整体文化遗产管理。展望未来,研究工作必须将这些技术的应用扩展到多学科领域,包括生态监测和社会政策。此外,本文研究了用于材料分类和损伤检测的非侵入性识别方法,强调了先进建模在优化遗产地管理中的作用。近期文献中出现的“生态系统服务”、“模型”和“能源”等关键词凸显了文化遗产保护向可持续实践的转变。这一趋势反映了人们越来越认识到遗产保护与环境科学之间的相互联系。对环境危机的更高认识反过来又推动了为文化遗产应用量身定制的图像识别技术的发展。预计该领域的前瞻性研究将取得快速进展,特别是在实时监测和社区参与方面,从而产生更多用于遗产保护的整体工具。