Xu Sida, Chen Haonan
College of Humanities and Arts, Macau University of Science and Technology, Macau, 999078, China.
School of Electronic and Information Engineering, Nanjing University of Aeronautics and Astronautics, Nanjing, 211106, China.
Sci Rep. 2025 Aug 4;15(1):28408. doi: 10.1038/s41598-025-14029-5.
In recent years, with the rise of digital twin technology in the field of artificial intelligence and the continuous advancement of hardware imaging equipment, significant progress has been made in the detection of structural damage in buildings and sculptures. Structural damage to cultural heritage buildings poses a major threat to their integrity, making accurate detection of such damage crucial for cultural heritage preservation. However, existing deep learning-based object detection technologies face limitations in achieving full coverage of architectural sculptures and enabling multi-angle, free observation, while also exhibiting substantial detection errors. To address these challenges, this paper proposes a detection method that integrates digital modeling with an improved YOLO algorithm. By scanning architectural scenes to generate digital twin models, this method enables full-angle and multi-seasonal scene transformations. Specifically, the Nanjing Sheli pagoda is selected as the research subject, where drone-based panoramic scanning is employed to create a digitalized full-scene model. The improved YOLO algorithm is then used to evaluate detection performance under varying weather and lighting conditions. Finally, evaluation metrics are utilized to automatically analyze detection accuracy and the extent of damage. Compared to traditional on-site manual measurement methods, the proposed YOLO-based automatic detection technology in digitalized scenarios significantly reduces labor costs while improving detection accuracy and efficiency. This approach provides a highly effective and reliable technical solution for assessing the extent of damage in historical buildings.
近年来,随着人工智能领域数字孪生技术的兴起以及硬件成像设备的不断进步,在建筑物和雕塑结构损伤检测方面取得了重大进展。文化遗产建筑的结构损伤对其完整性构成重大威胁,因此准确检测此类损伤对于文化遗产保护至关重要。然而,现有的基于深度学习的目标检测技术在实现对建筑雕塑的全面覆盖以及进行多角度、自由观察方面存在局限性,同时还存在较大的检测误差。为应对这些挑战,本文提出了一种将数字建模与改进的YOLO算法相结合的检测方法。通过扫描建筑场景生成数字孪生模型,该方法能够实现全角度和多季节场景变换。具体而言,选取南京舍利塔作为研究对象,采用基于无人机的全景扫描创建数字化全场景模型。然后使用改进的YOLO算法在不同天气和光照条件下评估检测性能。最后,利用评估指标自动分析检测精度和损伤程度。与传统的现场人工测量方法相比,所提出的基于YOLO的数字化场景自动检测技术在显著降低劳动力成本的同时提高了检测精度和效率。该方法为评估历史建筑的损伤程度提供了一种高效可靠的技术解决方案。