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Big data and evaluation of cultural ecosystem services: an analysis based on geotagged photographs from social media in Tuscan forest (Italy)

机译:大数据和文化生态系统服务评估:基于来自托斯卡纳森林(意大利)的社交媒体中带有地理标签的照片的分析

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The paper presents a methodology to quantify the suitability of forest stands for the potential delivery of cultural ecosystem services (CES). The quantification of CES represents a complicated task in the framework of ecosystem service valuation. Compared to traditional investigations, focusing on the study of the aesthetic appreciation of a particular territory, the use of geotagged photographs seems to be a promising alternative to appraise CES. Thus, in order to analyse CES with a particular focus on the aesthetic appreciation of forest stands, this study exploits big data through the analysis of photos shared on the Flickr social network. Crowdsourced datasets are used to depict the geographic location and density of pictures - expressed as the number of photos per unit of surface - as well as their relationship to forest variables and logistic characteristics. The implemented geostatistical model is used to spatialise the results at the regional level (Tuscany forests, Italy). Among the outputs, high values of CES are stressed for high forest and protected areas. From a forest species viewpoint, silver fir, coastal Mediterranean pine, beech and mixed forests seem to be more appreciated compared to other stand typologies such as oaks (e.g., pubescent or Turkey oak) and thermophilic broad-leaved species. Additional quantitative parameters (e.g., elevation, biomass stock and distance to main roads) were significant to the CES assessment. The potential applications of the technique to support forest planning and management are discussed.
机译:本文提出了一种方法,可以量化林分对文化生态系统服务(CES)潜在交付的适用性。在生态系统服务评估框架内,CES的量化代表了一项复杂的任务。与传统的调查相比,重点研究特定区域的美学欣赏,使用带地理标记的照片似乎是评估CES的有前途的选择。因此,为了分析CES,尤其是对林分的美学欣赏,本研究通过分析Flickr社交网络上共享的照片来利用大数据。众包数据集用于描述图片的地理位置和密度(表示为每单位表面的图片数量)及其与森林变量和逻辑特征的关系。实施的地统计模型用于在区域级别(意大利的托斯卡纳森林)对结果进行空间化处理。在产出中,高森林和保护区强调了CES的高价值。从森林物种的角度来看,与其他林分类型(例如橡树(例如,短毛的或火鸡的橡树)和嗜热的阔叶树种)相比,银杉,地中海沿岸的松树,山毛榉和混交林似乎更受欢迎。其他定量参数(例如海拔,生物量储备和到主要道路的距离)对于CES评估很重要。讨论了该技术在支持森林规划和管理方面的潜在应用。

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