深度学习与文化遗产:CEPROQHA项目案例研究

Abdelhak Belhi, Houssem Gasmi, A. Al-Ali, A. Bouras, S. Foufou, Xi Yu, Haiqing Zhang
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引用次数: 5

摘要

文化遗产是人类历史的重要组成部分,因为它是传递和保存道德认同的最有力工具之一。因此,这些文化资产被认为非常有价值,有时甚至是无价的。数字技术提供了多种工具,以应对文化背景下与推广和信息获取相关的挑战。然而,在这种背景下,随着人工智能(AI)在深度学习和数据挖掘工具方面的最新进展,文化信息的大型数据收集更有可能增加价值,并应对当前的挑战。通过本文,我们研究了几种已经使用或可能使用的方法,这些方法通过基于深度学习工具的新和进化技术来促进、管理、保护和珍视文化遗产。完全由我们团队开发的深度学习方法旨在对文化数据进行分类和注释,完成缺失数据,或使用语言处理工具将现有数据方案和信息映射到标准化方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning and Cultural Heritage: The CEPROQHA Project Case Study
Cultural heritage takes an important part of the history of humankind as it is one of the most powerful tools for the transfer and preservation of moral identity. As a result, these cultural assets are considered highly valuable and sometimes priceless. Digital technologies provided multiple tools that address challenges related to the promotion and information access in the cultural context. However, the large data collections of cultural information have more potential to add value and address current challenges in this context with the recent progress in artificial intelligence (AI) with deep learning and data mining tools. Through the present paper, we investigate several approaches that are used or can potentially be used to promote, curate, preserve and value cultural heritage through new and evolutionary techniques based on deep learning tools. The deep learning approaches entirely developed by our team are intended to classify and annotate cultural data, complete missing data, or map existing data schemes and information to standardized schemes with language processing tools.
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