Digital Restoration of Historical Buildings by Integrating 3D PC Reconstruction and GAN Algorithm

Tianke Fang, Zhenxing Hui, William P. Rey, Aihua Yang, Bin Liu, Zhiying Xie
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Abstract

Historical architecture is an important carrier of cultural and historical heritage in a country and region, and its protection and restoration work plays a crucial role in the inheritance of cultural heritage. However, the damage and destruction of buildings urgently need to be repaired due to the ancient age of historical buildings and the influence of natural environment and human factors. Therefore, an artificial intelligence repair technology based on three-dimensional (3D) point cloud reconstruction and generative adversarial networks was proposed to improve the precision and efficiency of repair work. Firstly, in-depth research on the principles and algorithms of 3D point cloud data processing and generative adversarial networks should be conducted. Secondly, a digital restoration framework was constructed by combining these two artificial intelligence technologies to achieve precise and efficient restoration of historical buildings through continuous adversarial learning processes. The experimental results showed that the errors in the restoration of palace buildings, defense walls, pagodas, altars, temples, and mausoleums were 0.17, 0.12, 0.13, 0.11, and 0.09, respectively. The technique can significantly reduce the error while maintaining the high precision repair effect. This technology with artificial intelligence as the core has excellent accuracy and stability in the digital restoration. It provides a new technical means for the digital restoration of historical buildings and has important practical significance for the protection of cultural heritage.
通过整合 3D PC 重建和 GAN 算法实现历史建筑的数字化修复
历史建筑是一个国家和地区文化历史遗产的重要载体,其保护和修复工作对文化遗产的传承起着至关重要的作用。然而,由于历史建筑年代久远,受自然环境和人为因素的影响,建筑的损坏和破坏亟待修复。因此,提出了一种基于三维(3D)点云重建和生成对抗网络的人工智能修缮技术,以提高修缮工作的精度和效率。首先,应深入研究三维点云数据处理和生成式对抗网络的原理和算法。其次,结合这两种人工智能技术构建数字化修复框架,通过持续对抗学习过程实现历史建筑的精准高效修复。实验结果表明,宫殿建筑、防御城墙、佛塔、祭坛、寺庙和陵墓的修复误差分别为 0.17、0.12、0.13、0.11 和 0.09。该技术在保持高精度修复效果的同时,还能大幅降低误差。这项以人工智能为核心的技术在数字化修复中具有极佳的准确性和稳定性。它为历史建筑的数字化修复提供了一种新的技术手段,对文化遗产保护具有重要的现实意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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