利用生成对抗网络研究战前城市景观的退化和战后城市景观的恢复

IF 1.6 0 ARCHITECTURE
Selen Çiçek, G. Turhan, Aybüke Taşer
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引用次数: 0

摘要

当代城市建筑环境由于自然或人为的原因,面临着不断恶化的风险。特别是政治侵略和战争冲突对建筑和文化遗产具有重大的破坏性影响。战后的城市景观显示了热战期间武装冲突的显著影响。然而,城市景观的残余物成为破坏和损失的实际指标。由于今天我们可以使用各种机器学习算法进行未来预测,因此有可能表示城市异托邦的混合预测。在此背景下,本研究建议基于现代城市的建筑风格探索战后反乌托邦的预测,并通过生成对抗网络(GAN)算法展示战后城市受损城市建筑环境修复可能性的乌托邦场景。包含战后和战前建筑立面的两个主要数据集作为CycleGAN和pix2pix GAN模型的输入数据。因此,比较了两种不同的图像对图像GAN模型在建筑特征中产生清晰建筑立面投影的能力。此外,从城市乌托邦和反乌托邦的未来预测角度讨论了机器学习过程的结果,展示了战争冲突对建筑环境的巨大影响。此外,当人工智能产生的修复潜力暴露出来时,对物质和非物质建筑遗产的破坏性侵略的直接后果将为居民和政策制定者所看到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deterioration of pre-war and rehabilitation of post-war urbanscapes using generative adversarial networks
The urban built environment of contemporary cities confronts a constant risk of deterioration due to natural or artificial reasons. Especially political aggression and war conflicts have significant destructive effects on architectural and cultural heritage buildings. The post-war urbanscapes demonstrate the striking effects of the armed conflicts during the hot war encounters. However, the residues of the urbanscapes become the actual indicators of damage and loss. Since today we can make future predictions using a variety of machine learning algorithms, it is possible to represent hybrid projections of urban heterotopias. In this context, this research proposes to explore dystopian post-war projections for modern cities based on their architectural styles and demonstrate the utopian scenarios of rehabilitation possibilities for the damaged urban built environment of post-war cities by using generative adversarial network (GAN) algorithms. Two primary datasets containing the post-war and pre-war building facades have been given as the input data for the CycleGAN and pix2pix GAN models. Thus, two different image-to-image GAN models have been compared regarding their ability to produce legible building facade projections in architectural features. Besides, the machine learning process results have been discussed in terms of cities’ utopian and dystopian future predictions, demonstrating the war conflicts’ immense effects on the built environment. Moreover, the immediate consequence of the destructive aggression on tangible and intangible architectural heritage would become visible to inhabitants and policymakers when the AI-generated rehabilitation potentials have been exposed.
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来源期刊
CiteScore
3.20
自引率
17.60%
发文量
44
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