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Random forest classification of urban landscape using Landsat archive and ancillary data: combining seasonal maps with decision level fusion.

机译:使用Landsat档案和辅助数据对城市景观进行随机森林分类:将季节性地图与决策级融合相结合。

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Mapping landscapes in a rapidly urbanizing region can contribute significantly to quantifying, monitoring and understanding the complex process of urbanization. However, mapping such urban areas is a challenging task due to issues of spatial heterogeneity and dynamic land use practices. In this study we propose an operational mapping algorithm using multi-season Landsat and ancillary data with minimum image pre-processing and limited training samples. The methodology was applied to produce a detailed land use land cover (LULC) map of National Capital Region of India. Seasonal maps (with nine LULC classes) were produced by using Random forest (RF). A second classification involving seasonal maps with decision level fusion based on expert knowledge resulted in an annual composite map with increased number (eleven) of LULC classes. These detailed maps have moderately high (>60%) overall accuracies. The maps generated over different seasons are especially significant in identifying areas with mixed land use practices (like agriculture) occurring over an annual cycle. The annual map as the end product of the decision fusion summarizes the LULC dynamics of the study area with the help of eleven LULC classes. The significance of this work lies not only in generating accurately classified LULC maps, but also in detecting the seasonal dynamics of land use practices in a complex urbanizing landscape. Furthermore, reproducibility of the developed methodology will aid the extension of research for different time periods and with newer sensors in investigating the patterns and dynamics of land use and urban planning activities.
机译:在快速城市化地区绘制地形图可以极大地有助于量化,监控和理解复杂的城市化过程。但是,由于空间异质性和动态土地使用方式的问题,绘制此类城市区域的地图是一项艰巨的任务。在这项研究中,我们提出了一种使用多季节Landsat和辅助数据并具有最少图像预处理和有限训练样本的操作映射算法。该方法用于制作印度国家首都地区的详细土地利用土地覆盖图(LULC)。使用随机森林(RF)制作了季节性地图(具有9个LULC类)。第二次分类包括基于专家知识的决策层次融合的季节性地图和季节性地图,导致年度综合地图的LULC类别数量增加(十一)。这些详细的地图具有较高的整体准确度(> 60%)。在识别不同季节使用的土地混合使用(例如农业)的地区时,不同季节生成的地图尤其重要。作为决策融合的最终产品的年度地图在11个LULC类的帮助下总结了研究区域的LULC动态。这项工作的意义不仅在于生成准确分类的LULC图,而且在于检测复杂的城市化景观中土地使用做法的季节动态。此外,已开发方法的可重复性将有助于扩大研究在不同时间段的范围,并借助新型传感器来调查土地利用和城市规划活动的模式和动态。

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