人工智能在气候中性文化遗产中的应用

Tolga Bakirman, Bahadır Kulavuz, B. Bayram
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引用次数: 2

摘要

文化遗产(CH)旨在为适应气候变化制定新的战略和政策。此外,可持续发展的目标旨在保护、监测和维护世界的碳,并采取紧急行动应对气候变化及其影响。因此,开发高效和准确的技术来实现碳中和和更有弹性是至关重要的。本研究旨在提供一个整体的解决方案,以可持续的方式监测和保护中国免受气候变化、自然灾害和人为影响的影响。在我们的研究中,研究了使用低成本无人机和相机图像进行深度学习的效率,以记录和监测CHis。在文献中首次使用用于边缘检测的密集极值初始网络和更丰富的卷积特征架构来从CHstructures中提取轮廓和裂缝。研究结果表明,两种结构的F1得分分别为61.38%和61.50%。结果表明,所提出的解决方案有助于监测对气候变化、自然灾害和人为影响的保护。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use of Artificial Intelligence Toward Climate-neutral Cultural Heritage
Cultural heritage (CH) aims to create new strategies and policies for adapting to climate change. Additionally, the goals of sustainable development aim to protect, monitor, and preserve the world's CH and to take urgent action to combat climate change and its effects. Therefore, developing efficient and accurate techniques toward making CH climate neutral and more resilient is of vital importance. This study aims to provide a holistic solution to monitor and protect CHfrom climate change, natural hazards, and anthropogenic effects in a sustainable way. In our study, the efficiency of deep learning using low-cost unmanned aerial vehicles and camera images for the documentation and monitoring of CHis investigated. The dense extreme inception network for edge detection and richer convolu- tional feature architectures have been used for the first time in the literature to extract contours and cracks from CHstructures. As a result of the study, F1 scores of 61.38% and 61.50% for both architectures, respectively, were obtained. The results show that the proposed solution can aid in monitoring the protection of CHfrom climate change, natural disasters, and anthropogenic effects.
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