Semantic Identification of Urban Green Spaces: Forest

I. Ismayilova, S. Timpf
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Abstract

Abstract. Urban Green Spaces (UGSs) are recognized as crucial parts of the human-nature ecosystem in densely populated urban centers. Even though they have been intensively studied, an ultimate list of all types of UGSs in Europe still does not exist. This challenges decision making on whether an area should be considered an UGS or belong to another land-use class. Furthermore, the means of precise identification of UGSs are dependent, among others, on their type and semantics. Therefore, in this paper, we investigate forests as UGSs and automatically identify them using their distinct characteristics from Sentinel-2 images as well as descriptive properties derived from them, i.e., vegetation indices and texture metrics.We enrich these properties with forest relevant features such as minimum vegetation height and homogeneity. To assess the reliability of the proposed workflow, we test our approach in two German cities and compare the results with existing governmental land use data sets. With the implemented approach we precisely identify over 90% of the existing forests in the study areas. The main restriction of the approach is the transferability of the thresholds of predictor variables such as homogeneity and dissimilarity.
城市绿地的语义识别:森林
摘要在人口密集的城市中心,城市绿地被认为是人-自然生态系统的重要组成部分。尽管已经对它们进行了深入的研究,但欧洲所有类型的UGSs的最终清单仍然不存在。这对一个地区是否应该被视为UGS或属于另一个土地使用类别的决策提出了挑战。此外,精确识别UGSs的方法依赖于它们的类型和语义。因此,在本文中,我们将森林作为UGSs进行研究,并利用Sentinel-2图像中的独特特征以及从中获得的描述性属性(即植被指数和纹理度量)自动识别森林。我们用最小植被高度和均匀性等森林相关特征来丰富这些属性。为了评估提议的工作流程的可靠性,我们在两个德国城市测试了我们的方法,并将结果与现有的政府土地使用数据集进行了比较。通过实施的方法,我们精确地识别了研究地区90%以上的现有森林。该方法的主要限制是预测变量(如同质性和不相似性)阈值的可转移性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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