基于衍生地理层的随机森林算法改进遥感数据分类

U. Kumar, A. Dasgupta, C. Mukhopadhyay, T. Ramachandra
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引用次数: 1

摘要

有效的保护和管理自然资源需要最新的土地覆盖类型及其动态信息。利用多分辨率遥感(RS)数据和适当的分类策略捕获LC动态。然而,具有重要环境层的RS数据(无论是远程获取的还是来自地面测量的)将更有效地解决LC动态和相关变化。与传统的分类技术相比,这些辅助层为描述LC类的决策边界提供了额外的信息。这种交流确定了利用辅助和衍生地理层(如植被指数、温度、数字高程模型(DEM)、坡向、坡度和纹理)提高遥感数据分类精度的可能性。这已经在三个不同地形的地形中实现。这项研究将有助于根据地形选择适当的辅助数据,以获得更好的分类资料。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Random forest algorithm with derived geographical layers for improved classification of remote sensing data
Effective conservation and management of natural resources requires up-to-date information of the land cover (LC) types and their dynamics. The LC dynamics are being captured using multi-resolution remote sensing (RS) data with appropriate classification strategies. RS data with important environmental layers (either remotely acquired or derived from ground measurements) would however be more effective in addressing LC dynamics and associated changes. These ancillary layers provide additional information for delineating LC classes' decision boundaries compared to the conventional classification techniques. This communication ascertains the possibility of improved classification accuracy of RS data with ancillary and derived geographical layers such as vegetation index, temperature, digital elevation model (DEM), aspect, slope and texture. This has been implemented in three terrains of varying topography. The study would help in the selection of appropriate ancillary data depending on the terrain for better classified information.
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