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Measuring continuous landscape patterns with Gray-Level Co-Occurrence Matrix (GLCM) indices: An alternative to patch metrics?

机译:使用灰度共生矩阵(GLCM)指数测量连续的景观格局:补丁度量的替代方法?

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Characterizing landscape patterns is an important analytical step towards understanding the effects of physical layouts on ecological and social processes. While a continuous representation of landscape structure has great potential as a realistic alternative to traditional patch-based models, its empirical merits have been limited by the lack of measures for quantifying patterns from such continuous surface. This paper examines the utility of Gray-Level Co-Occurrence Matrix (GLCM) indices as spatial metrics applied to the landscape level for measuring underlying spatial properties. Eight GLCM indices (contrast, dissimilarity, homogeneity, energy, entropy, mean, variance, correlation) are compared to most commonly used 18 landscape metrics (LMs) featuring landscape composition, aggregation, dominance, dispersion, and shape complexity, with an application to urban tree canopy landscape. Two different types of map, sub-pixel tree canopy cover percentage map versus binary tree-pixel map, are used to compute GLCM indices and class-level LMs with a moving window approach across 4556 focal points. The data, extracted from the National Land Cover Database (NLCD) and the National Agricultural Imagery Program (NAIP), characterize the city of Columbus and Franklin County, Ohio. Correlation and regression analyses demonstrate that there is a strong and robust analogy between textural traits implied by GLCM indices and patch-based characteristics measured by LMs. Four LM components generated by principal component analysis contribute differently to individual GLCM indices, enabling more nuanced interpretation of GLCM indices in terms of LMs. The identified meanings consist of a unique mix of patch abundance, aggregation, dispersion, large patch dominance, patch size variability, and landscape homogeneity. The prediction of landscape patterns by GLCM indices increases in accuracy with landscape size, to a scale comparable to census tracts, while staying robust to the variation in GLCM bin width. GLCM indices can serve as reliable indicators of spatial configuration, and therefore provide an effective tool for researchers to better utilize continuous landscape models.
机译:表征景观格局是了解物理布局对生态和社会过程影响的重要分析步骤。尽管景观结构的连续表示法有可能作为传统基于补丁的模型的现实替代方法,但由于缺乏从此类连续表面量化模式的措施,其经验价值受到限制。本文研究了灰度共生矩阵(GLCM)索引作为应用于景观级别以测量​​基础空间特性的空间度量的实用性。将八个GLCM指标(对比度,相异性,同质性,能量,熵,均值,方差,相关性)与最常用的18个景观指标(LM)进行了比较,这些指标具有景观组成,聚集,优势,色散和形状复杂度,并应用于城市的树冠景观。两种不同类型的地图(亚像素树冠覆盖百分比图和二叉树像素图)用于通过4556个焦点的移动窗口方法来计算GLCM索引和类级别LM。从国家土地覆被数据库(NLCD)和国家农业影像计划(NAIP)中提取的数据表征了俄亥俄州的哥伦布市和富兰克林县。相关性和回归分析表明,GLCM指数所隐含的纹理特征与LM所测得的基于补丁的特征之间存在强大而强大的类比。由主成分分析生成的四个LM成分对单个GLCM指数的贡献不同,从而使从LM角度更详尽地解释GLCM指数。所确定的含义包括斑块丰度,聚集,分散,大斑块优势,斑块大小可变性和景观同质性的独特组合。 GLCM指数对景观格局的预测随着景观大小的准确性提高,达到与普查区域相当的规模,同时对GLCM箱宽的变化保持稳健。 GLCM指数可以作为空间配置的可靠指标,因此为研究人员更好地利用连续景观模型提供了有效的工具。

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