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A computational framework for generalized moving windows and its application to landscape pattern analysis

机译:广义移动窗口的计算框架及其在景观格局分析中的应用

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摘要

Land cover products based on remotely sensed data are commonly investigated in terms of landscape composition and configuration; i.e. landscape pattern. Traditional landscape pattern indicators summarize an aspect of landscape pattern over the full study area. Increasingly, the advantages of representing the scale-specific spatial variation of landscape patterns as continuous surfaces are being recognized. However, technical and computational barriers hinder the uptake of this approach. This article reduces such barriers by introducing a computational framework for moving window analysis that separates the tasks of tallying pixels, patches and edges as a window moves over the map from the internal logic of landscape indicators. The framework is applied on data covering the UK and Ireland at 250 m resolution, evaluating a variety of indicators including mean patch size, edge density and Shannon diversity at window sizes ranging from 2.5 km to 80 km. The required computation time is in the order of seconds to minutes on a regular personal computer. The framework supports rapid development of indicators requiring little coding. The computational efficiency means, that methods can be integrated in iterative computational tasks such as multi-scale analysis, optimization, sensitivity analysis and simulation modelling. (C) 2015 Elsevier B.V. All rights reserved.
机译:通常根据景观组成和配置来研究基于遥感数据的土地覆盖产品;即景观模式。传统的景观格局指标总结了整个研究区域景观格局的一个方面。越来越多地认识到将景观图案的比例特定空间变化表示为连续表面的优点。但是,技术和计算方面的障碍阻碍了这种方法的采用。本文通过介绍用于移动窗口分析的计算框架来减少此类障碍,该框架将窗口在地图上移动时将计数像素,斑块和边缘的任务与景观指示符的内部逻辑分开。该框架适用于以250 m分辨率覆盖英国和爱尔兰的数据,评估了各种指标,包括2.5 km至80 km窗口大小的平均斑块大小,边缘密度和香农多样性。在普通的个人计算机上,所需的计算时间为几秒到几分钟。该框架支持需要很少编码的指标的快速发展。计算效率意味着可以将这些方法集成到迭代计算任务中,例如多尺度分析,优化,灵敏度分析和仿真建模。 (C)2015 Elsevier B.V.保留所有权利。

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