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Use of logistic regression for validation of maps of the spatial distribution of vegetation species derived from high spatial resolution hyperspectral remotely sensed data

机译:使用逻辑回归来验证从高空间分辨率高光谱遥感数据得出的植被物种的空间分布图

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Logistic regression was used for validation of image-derived maps depicting large woody debris and three Populus spp. in a riparian area in Yellowstone National Park, USA. High spatial resolution hyperspectral imagery was used for data input. The logistic regression model related presence/absence field data for large woody debris and the Populus spp. to the continuous measurement scale output from matched filter image analysis. The agreement between the image analysis and field data was excellent, as measured by Model chi(2). residual deviance, and Hosmer and Lemeshow's goodness of fit for the logistic regression. Kappa analysis for all possible thresholds imposed on the image output, and receiver operating characteristic curves, also indicated excellent goodness of fit for the image analysis output. The potential for use of logistic regression for both validation of hyperspectral image classification and calibration of results is discussed. (C) 2002 Elsevier Science B.V. All rights reserved. [References: 26]
机译:Logistic回归用于验证描述大型木屑和三个胡杨属植物的图像衍生地图的有效性。在美国黄石国家公园的河岸地区。高空间分辨率高光谱图像用于数据输入。逻辑回归模型涉及大型木屑和胡杨属植物的存在/不存在数据。匹配滤镜图像分析输出的连续测量比例。图像分析和现场数据之间的一致性非常好,如模型chi(2)所述。剩余偏差,以及Hosmer和Lemeshow的逻辑回归拟合度。对施加在图像输出上的所有可能阈值进行的Kappa分析以及接收器的工作特性曲线也表明,图像分析输出的拟合度极佳。讨论了将逻辑回归用于高光谱图像分类验证和结果校准的潜力。 (C)2002 Elsevier Science B.V.保留所有权利。 [参考:26]

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