Assessing Perceived Landscape Change from Opportunistic Spatiotemporal Occurrence Data

Land Pub Date : 2024-07-19 DOI:10.3390/land13071091
A. Dunkel, Dirk Burghardt
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Abstract

The exponential growth of user-contributed data provides a comprehensive basis for assessing collective perceptions of landscape change. A variety of possible public data sources exist, such as geospatial data from social media or volunteered geographic information (VGI). Key challenges with such “opportunistic” data sampling are variability in platform popularity and bias due to changing user groups and contribution rules. In this study, we use five case studies to demonstrate how intra- and inter-dataset comparisons can help to assess the temporality of landscape scenic resources, such as identifying seasonal characteristics for a given area or testing hypotheses about shifting popularity trends observed in the field. By focusing on the consistency and reproducibility of temporal patterns for selected scenic resources and comparisons across different dimensions of data, we aim to contribute to the development of systematic methods for disentangling the perceived impact of events and trends from other technological and social phenomena included in the data. The proposed techniques may help to draw attention to overlooked or underestimated patterns of landscape change, fill in missing data between periodic surveys, or corroborate and support field observations. Despite limitations, the results provide a comprehensive basis for developing indicators with a high degree of timeliness for monitoring perceived landscape change over time.
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从机会性时空出现数据评估感知到的景观变化
用户贡献数据的指数级增长为评估景观变化的集体感知提供了一个全面的基础。目前存在各种可能的公共数据来源,例如来自社交媒体的地理空间数据或志愿地理信息(VGI)。此类 "机会主义 "数据采样面临的主要挑战是平台受欢迎程度的变化以及因用户群体和贡献规则的变化而产生的偏差。在本研究中,我们使用五个案例研究来展示数据集内部和数据集之间的比较如何帮助评估景观风景资源的时间性,例如识别特定区域的季节性特征或测试实地观察到的流行趋势变化的假设。通过关注选定景观资源时间模式的一致性和可重复性,以及不同数据维度之间的比较,我们旨在为开发系统方法做出贡献,以便将事件和趋势的感知影响与数据中包含的其他技术和社会现象区分开来。所提出的技术可能有助于引起人们对被忽视或低估的景观变化模式的关注,填补定期调查之间缺失的数据,或证实和支持实地观察。尽管还存在局限性,但研究结果为制定具有高度时效性的指标提供了全面的基础,可用于监测感知到的景观随时间的变化。
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