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Non-parametric and parametric methods using satellite images for estimating growing stock volume in alpine and Mediterranean forest ecosystems

机译:使用卫星图像的非参数和参数方法来估计高山和地中海森林生态系统中不断增长的种群数量

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This paper describes applications of non-parametric and parametric methods for estimating forest growing stock volume using Landsat images on the basis of data measured in the field, integrated with ancillary information. Several k-Nearest Neighbors (k-NN) algorithm configurations were tested in two study areas in Italy belonging to Mediterranean and Alpine ecosystems. Field data were acquired by the regional forest inventory and forest management plans, and satellite images are from Landsat 5 TM and Landsat 7 ETM+. The paper describes the data used, the methodologies adopted and the results achieved in terms of pixel level accuracy of forest growing stock volume estimates. The results show that several factors affect estimation accuracy when using the k-NN method. For the two test areas a total of 3500 different configurations of the k-NN algorithm were systematically tested by changing the number and type of spectral and ancillary input variables, type of multidimensional distance measures, number of nearest neighbors and methods for spectral feature extraction using the leave-one-out (LOO) procedure. The best k-NN configurations were then used for pixel level estimation; the accuracy was estimated with a bootstrapping procedure; and the results were compared to estimates obtained using parametric regression methods implemented on the same data set. The best k-NN growing stock volume pixel level estimates in the Alpine area have a Root Mean Square Error (RMSE) ranging between 74 and 96 m(3) ha(-1) (respectively, 22% and 28% of the mean measured value) and between 106 and 135 m(3) ha(-1) (respectively, 44% and 63% of the mean measured value) in the Mediterranean area. On the whole, the results cast a promising light on the use of non-parametric techniques for forest attribute estimation and mapping with accuracy high enough to support forest planning activities in such complex landscapes. The results of the LOO analyses also highlight the importance of a local empirical optimization phase of the k-NN procedure before defining the best algorithm configuration. In the tests performed the pixel level accuracy increased, depending on the k-NN configuration, as much as 100%. (C) 2008 Elsevier Inc. All rights reserved.
机译:本文介绍了非参数和参数方法在基于Landsat图像估算野外森林蓄积量的基础上的应用,这些数据是在实地测得的数据基础上结合辅助信息而得出的。在意大利的两个研究区域(属于地中海和高山生态系统)中测试了几种k最近邻(k-NN)算法配置。实地数据是通过区域森林清单和森林管理计划获得的,而卫星图像则来自Landsat 5 TM和Landsat 7 ETM +。该文件以森林种植量估算的像素级精度描述了所使用的数据,采用的方法和取得的结果。结果表明,使用k-NN方法时,有几个因素会影响估计精度。通过更改光谱和辅助输入变量的数量和类型,多维距离度量的类型,最近邻的数量以及使用光谱特征提取方法,对这两个测试区域总共测试了3500种不同的k-NN算法配置留一法(LOO)程序。然后将最佳的k-NN配置用于像素级别估计;准确性是通过引导程序估算的;并将结果与​​使用在同一数据集上实施的参数回归方法获得的估计值进行比较。阿尔卑斯地区最佳的k-NN生长种群像素水平估计值的均方根误差(RMSE)在74至96 m(3)ha(-1)之间(分别为所测平均值的22%和28%值)和在地中海地区介于106和135 m(3)ha(-1)之间(分别为平均测量值的44%和63%)。总体而言,研究结果为使用非参数技术进行森林属性估计和制图提供了希望,该技术的精度足以支持这种复杂景观中的森林规划活动。 LOO分析的结果还突出了在定义最佳算法配置之前,k-NN过程的局部经验优化阶段的重要性。在执行的测试中,取决于k-NN的配置,像素级精度提高了100%。 (C)2008 Elsevier Inc.保留所有权利。

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