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Mapping cultural ecosystem services 2.0 - Potential and shortcomings from unlabeled crowd sourced images

机译:映射文化生态系统服务2.0-来自未标记人群的图像的潜力和不足

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摘要

The volume of accessible geotagged crowdsourced photos has increased. Such data include spatial, temporal, and thematic information on recreation and outdoor activities, thus can be used to quantify the demand for cultural ecosystem services (CES). So far photo content has been analyzed based on user-labeled tags or the manual labeling of photos. Both approaches are challenged with respect to consistency and cost-efficiency, especially for large-scale studies with an enormous volume of photos. In this study, we aim at developing a new method to analyze the content of large volumes of photos and to derive indicators of socio-cultural usage of landscapes. The method uses machine-learning and network analysis to identify clusters of photo content that can be used as an indicator of cultural services provided by landscapes. The approach was applied in the Mulde river basin in Saxony, Germany. All public Flickr photos (n = 12,635) belonging to the basin were tagged by deep convolutional neural networks through a cloud computing platform, Clarifai. The machine-predicted tags were analyzed by a network analysis that leads to nine hierarchical clusters. Those clusters were used to distinguish between photos related to CES (65%) and not related to CES (35%). Among the nine clusters, two clusters were related to CES: ‘landscape aesthetics’ and ‘existence’. This step allowed mapping of different aspects of CES and separation of non-relevant photos from further analysis. We further analyzed the impact of protected areas on the spatial pattern of CES and not-related CES photos. The presence of protected areas had a significant positive impact on the areas with both ‘landscape aesthetics’ and ‘existence’ photos: the total number of days in each mapping unit where at least one photo was taken by a user (‘photo-user-day’) increased with the share of protected areas around the location. The presented approach has shown its potential for reliable mapping of socio-cultural uses of landscapes. It is expected to scale well with large numbers of photos and to be easily transferable to different regions.
机译:可访问带有地理标签的众包照片的数量有所增加。这些数据包括有关休闲和户外活动的空间,时间和主题信息,因此可以用来量化对文化生态系统服务(CES)的需求。到目前为止,已经根据用户标记的标签或照片的手动标签对照片内容进行了分析。两种方法在一致性和成本效率方面都面临挑战,尤其是对于具有大量照片的大规模研究而言。在这项研究中,我们旨在开发一种新方法来分析大量照片的内容并导出景观的社会文化使用指标。该方法使用机器学习和网络分析来识别照片内容集群,这些集群可以用作景观提供的文化服务的指标。该方法已在德国萨克森州的Mulde流域应用。属于该盆地的所有公开Flickr照片(n = 12,635)均通过深层卷积神经网络通过Clarifai云计算平台进行了标记。通过网络分析对机器预测的标签进行了分析,得出了九个层次集群。这些聚类用于区分与CES相关的照片(65%)和与CES不相关的照片(35%)。在这9个集群中,有两个与CES相关的集群是:“景观美学”和“存在”。此步骤允许对CES的不同方面进行映射,并从进一步的分析中分离无关的照片。我们进一步分析了保护区对CES和无关的CES照片的空间格局的影响。保护区的存在对带有“风景美学”和“存在”照片的区域产生了显着的积极影响:每个制图单位中用户至少拍摄了一张照片的总天数(“照片用户-天”)随该位置周围保护区的份额而增加。所提出的方法表明了其对景观的社会文化用途进行可靠测绘的潜力。预期可以在大量照片上很好地缩放,并且可以轻松地转移到不同区域。

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