从废墟到重建:利用文本到图像的人工智能修复历史建筑

Kawsar Arzomand, Michael Rustell, T. Kalganova
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引用次数: 0

摘要

面对世界各地威胁历史遗址的冲突和自然灾害,文化遗产的保护变得越来越重要。本研究探讨了人工智能(AI)的应用,特别是文本到图像生成技术在重建受这些不利因素破坏的遗址中的应用。本研究利用详细的文字描述和历史记录,采用人工智能生成受损遗址的精确视觉呈现,弥合了传统文献和现代数字重建方法之间的差距。这种方法不仅增强了各学科的建筑设计流程,还启动了一种范式转变,使遗产保护实践更加动态、直观和高效。该方法整合了数据收集、人工智能迭代生成图像、专家审查以及与历史数据的对比分析,以评估重建的准确性和真实性。通过将人工智能与传统保护实践相结合,本研究倡导了一种平衡的文化遗产保护方法,以确保为子孙后代保护和振兴文化遗产。初步研究结果表明,人工智能生成的图像为可视化和理解历史遗址提供了新的方法,在加强数字遗产保护方面大有可为。这些发现还强调了解决伦理、技术和合作挑战的必要性,以提高人工智能技术在文化遗产领域的精确性、可靠性和适用性。这项研究为数字人文和考古保护做出了贡献,展示了人工智能在支持和补充传统遗产保护方法方面的潜力,并为该领域方法论的实质性演变提出了途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From ruins to reconstruction: Harnessing text-to-image AI for restoring historical architectures
The preservation of cultural heritage has become increasingly important in the face of conflicts and natural disasters that threaten historical sites worldwide. This study explores the application of artificial intelligence (AI), specifically text-to-image generation technologies, in reconstructing heritage sites damaged by these adversities. Utilising detailed textual descriptions and historical records, this study employed AI to produce accurate visual representations of damaged heritage sites, bridging the gap between traditional documentation and modern digital reconstruction methods. This approach not only enhances the architectural design process across various disciplines but also initiates a paradigm shift towards more dynamic, intuitive, and efficient heritage conservation practices. The methodology integrates data collection, iterative AI-generated image production, expert review, and comparative analysis against historical data to evaluate reconstruction accuracy and authenticity. By integrating AI with traditional preservation practices, this study advocates a balanced approach to conserving cultural legacies, ensuring their preservation and revitalisation for future generations. Preliminary findings suggest that AI-generated imagery holds significant promise for enhancing digital heritage preservation by offering novel approaches for visualising and understanding historical sites. These findings also highlight the need to address ethical, technical, and collaborative challenges to enhance the precision, reliability, and applicability of AI technologies in the field of cultural heritage. This study contributes to digital humanities and archaeological conservation, demonstrating AI's potential to support and complement traditional heritage preservation methods and suggests a pathway for substantial methodological evolution in the field.
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