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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >The impact of relative radiometric calibration on the accuracy of kNN-predictions of forest attributes
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The impact of relative radiometric calibration on the accuracy of kNN-predictions of forest attributes

机译:相对辐射定标对森林属性kNN预测准确性的影响

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摘要

The k-nearest-neighbour (kNN) algorithm is widely applied for the estimation of forest attributes using remote sensing data. It requires a large amount of reference data to achieve satisfactory results. Usually, the number of available reference plots for the kNN-prediction is limited by the size of the area covered by a terrestrial reference inventory and remotely sensed imagery collected from one overflight. The applicability of kNN could be enhanced if adjacent images of different acquisition dates could be used in the same estimation procedure. Relative radiometric calibration is a prerequisite for this. This study focuses on two empirical calibration methods. They are tested on adjacent LANDSAT TM scenes in Austria. The first, quite conventional one is based on radiometric control points in the overlap area of two images and on the determination of transformation parameters by linear regression. The other, recently developed method exploits the kNN-cross-validation procedure. Performance and applicability of both methods as well as the impact of phenology are discussed. (C) 2007 Elsevier Inc. All rights reserved.
机译:k近邻算法(kNN)被广泛用于使用遥感数据估算森林属性。需要大量参考数据才能获得满意的结果。通常,用于kNN预测的可用参考图的数量受限于地面参考清单和一次飞越收集的遥感影像所覆盖区域的大小。如果可以在同一估计程序中使用不同采集日期的相邻图像,则可以增强kNN的适用性。相对辐射定标是此的先决条件。本研究着重于两种经验校准方法。它们在奥地利的相邻LANDSAT TM场景上进行了测试。第一个非常传统的方法是基于两个图像重叠区域中的辐射控制点以及通过线性回归确定变换参数。另一种最近开发的方法利用了kNN交叉验证过程。讨论了这两种方法的性能和适用性以及物候学的影响。 (C)2007 Elsevier Inc.保留所有权利。

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