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Using multi-seasonal Landsat imagery for rapid identification of abandoned land in areas affected by urban sprawl

机译:使用多季节Landsat影像快速识别受城市蔓延影响的地区的荒地

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摘要

Studies have shown that spatial information on abandoned land could play an important role in urban land management, as land abandonment was proven capable of revealing future trajectories of change. However, mapping land abandonment with traditional methods (e.g., field work, digitization of aerial images) can be time consuming, expensive, and require considerable man-power. In this context, Landsat imagery proves to be a reliable source of data. To our knowledge, the potential of Landsat imagery for mapping abandoned land has not been tested in heterogeneous and highly fragmented urban settings. The aim of our paper is to propose a resource-efficient (i.e., in terms of time and manpower) method for the assessment of land abandonment in areas affected by urban sprawl, by using seasonal time series of Landsat data. Bucharest, Romania was chosen as case study area. Landsat scenes from the year 2013 are grouped based on vegetation phenology into four PGSs (periods of the growing season). NDVI values corresponding to land abandonment are analyzed with Classification and Regression Trees. A total of 23 models—representing combinations of PGSs—are tested in order to determine what period of the vegetation growing season fits best for mapping abandoned land, and for the purpose of deriving such a map for Bucharest. Finally, results are validated against independent data and a resource estimation for the entire mapping process is performed. Results show that abandoned land can be mapped with Landsat imagery with accuracies above 80%. Higher accuracies are obtained when scenes encompassing the beginning of the vegetation growing season are included in the models. We also observed that accuracy tends to decrease from models which include PGSs representing the beginning of the vegetation growing season towards those representing the end. Estimation showed that mapping land abandonment with Landsat data could reduce time and workforce resources by almost half compared with aerial imagery and field work. As our method is rapid, easy to implement, and based on freely available data, it can be used by local authorities that cannot allocate significant resources for land change monitoring. Furthermore, the approach could provide objective information to municipalities where official statistics on land abandonment are unreliable or of low quality.
机译:研究表明,关于废弃土地的空间信息可能在城市土地管理中发挥重要作用,因为已证明土地遗弃能够揭示未来的变化轨迹。然而,用传统方法(例如,野外工作,航空图像的数字化)绘制土地遗弃图可能是耗时,昂贵且需要大量人力的。在这种情况下,Landsat影像被证明是可靠的数据源。据我们所知,Landsat影像用于绘制废弃土地的潜力尚未在异构且高度分散的城市环境中得到检验。本文的目的是通过使用Landsat数据的季节性时间序列,提出一种资源高效的方法(即时间和人力)来评估受城市蔓延影响的地区的土地放弃。罗马尼亚布加勒斯特被选为案例研究区域。根据植被物候,将2013年的Landsat场景分为四个PGS(生长季节的时期)。使用分类树和回归树分析与土地遗弃相对应的NDVI值。总共测试了23个代表PGS组合的模型,以确定哪个植被生长季节的时期最适合绘制废弃土地的图,并得出布加勒斯特的这种图。最后,针对独立数据验证结果,并执行整个映射过程的资源估算。结果表明,可以使用Landsat影像对废弃土地进行制图,其准确率超过80%。当包含植被生长季节开始的场景包括在模型中时,可以获得更高的精度。我们还观察到,从包括代表植物生长季节开始的PGS到代表植物生长季节的PGS的模型,精度往往会降低。估计表明,与航空影像和野外作业相比,用Landsat数据绘制土地遗弃图可将时间和劳动力资源减少近一半。由于我们的方法快速,易于实施,并且基于免费可用的数据,因此无法为土地变化监测分配大量资源的地方当局可以使用它。此外,该方法可以为市政当局提供客观信息,这些政府的土地弃置官方统计数据不可靠或质量低下。

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