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Landscape aesthetics: Spatial modelling and mapping using social media images and machine learning

机译:景观美学:使用社交媒体图像和机器学习的空间建模和映射

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摘要

Cultural ecosystem services such as aesthetic value are highly context-specific and often present difficulties in their assessment. Here we present a case study in the northern English Protected Area of the Yorkshire Dales National Park. Utilising publicly available images, paired-comparison surveys, probability modelling, machine-learning based text annotations, natural language processing and regression analysis, we developed a spatial model to predict and map landscape aesthetics across the whole site. The predictive model found eighteen significant variables, including the positive role of rural areas, mountainous landforms and vegetation for aesthetic value. Finally, we demonstrate the potential of our approach to varying size datasets and partial paired-comparison matrices, finding a very good agreement with only 20% of paired comparisons. This study demonstrates the use of freely available data and mostly open source tools to ascertain landscape aesthetic value in a large Protected Area.
机译:审美价值等文化生态系统服务是高度背景特定的,并且通常在评估中呈现困难。在这里,我们在约克夏·博尔斯国家公园北方英语保护区出现了一个案例研究。利用公开的图像,配对比较调查,概率建模,基于机器学习的文本注释,自然语言处理和回归分析,我们开发了一种空间模型,以预测整个网站的景观美学。预测模型发现了十八个重要变量,包括农村地区,山地地貌和审美价值植被的积极作用。最后,我们展示了我们对不同大小的数据集和部分配对 - 比较矩阵的方法的潜力,找到了一个非常良好的协议,只有20%的配对比较。本研究表明,使用自由可用的数据和主要开源工具,以确定大保护区中的景观美学价值。

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