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首页> 外文期刊>International Journal of Geographical Information Science >Performance of shape indices and classification schemes for characterising perceptual shape complexity of building footprints in GIS
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Performance of shape indices and classification schemes for characterising perceptual shape complexity of building footprints in GIS

机译:用于表征GIS中建筑足迹的感知形状复杂性的形状索引和分类方案的性能

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摘要

Shape characterisation is important in many fields dealing with spatial data. For this purpose, numerous shape analysis and recognition methods with different degrees of complexity have so far been developed. Among them, relatively simple indices are widely used in spatial applications, but their performance has not been investigated sufficiently, particularly for building footprints (BFs). Therefore, this article focuses on BF shape characterisation with shape indices and classification schemes in a GIS environment. This study consists of four phases. In the first phase, the criteria for BF shape complexity were identified, and accordingly, benchmark data was constructed by human experts in three shape complexity categories. In the second phase, 18 shape indices were selected from the literature and automatically computed in GIS. The performance of these indices was then statistically assessed with histograms, correlation matrix and boxplots, and consequently four indices were found to be appropriate for further investigation. In the third phase, two new indices (Equivalent Rectangular index and Roughness index) were proposedwith the objective tomeasure some BF shape characteristics more efficiently. The proposed indices also were found to be appropriate with the same statistical assessment procedures. In the final phase, BF shape complexity categories were created with the pairs of six appropriate indices and four choropleth mapping classification schemes (equal intervals, natural break, standard deviation, and custom) in GIS. The performance of the indexscheme pairs was assessed against the benchmark data. The findings demonstrated that both new indices and two of the selected indices (Convexity and Rectangularity) delivered higher performance. The custom classification scheme was found more ideal to reveal absolute shape complexity with the index value ranges derived from the boxplots while the other classification schemes were more appropriate to reveal relative shape complexity.
机译:在许多处理空间数据的领域中,形状表征很重要。为此目的,迄今为止已经开发了许多具有不同复杂度的形状分析和识别方法。其中,相对简单的索引已在空间应用中广泛使用,但尚未对其性能进行充分研究,尤其是对于建筑足迹(BF)。因此,本文将重点介绍GIS环境中具有形状指数和分类方案的高炉形状特征。这项研究包括四个阶段。在第一阶段,确定了高炉形状复杂度的标准,因此,专家们在三个形状复杂度类别中构建了基准数据。在第二阶段,从文献中选择了18种形状指数,并在GIS中自动进行计算。然后使用直方图,相关矩阵和箱线图对这些指标的性能进行统计评估,因此发现有四个指标适合进一步研究。在第三阶段,提出了两个新的指标(当量矩形指标和粗糙度指标),目的是更有效地测量某些高炉形状特征。提议的指标也被认为适用于相同的统计评估程序。在最后阶段,利用GIS中的六个适当索引对和四个Choropleth映射分类方案(等间隔,自然中断,标准偏差和自定义)对创建了BF形状复杂度类别。根据基准数据评估了索引方案对的性能。调查结果表明,新指数和选定的两个指数(凸性和矩形性)均提供了更高的性能。发现自定义分类方案更理想,以揭示绝对形状复杂性,其指数值范围源自盒图,而其他分类方案更适合显示相对形状复杂性。

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