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Tree density estimation in a tropical woodland ecosystem with multiangular MISR and MODIS data

机译:利用多角度MISR和MODIS数据估算热带林地生态系统树木密度

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In this paper we evaluate the potential of spectral, temporal and angular aspect of remotely sensed data for quantitative extraction of forest structure information in tropical woodlands. Moderate resolution imaging spectroradiometer (MODIS) multispectral data at 500-meter spatial resolution from different dates, multiangle imaging spectroradiometer (MISR) bidirectional reflectance factors (BRF) and normalized difference angular index (NDAI) derived from MISR data at 275-meter spatial resolution were used as input data. The number of trees per hectare bigger than 20cm in diameter at breast height was taken as variable of interest. Simple and multiple ordinary least square regressions and artificial neural networks (ANN) were tested to understand the relationships between the various sources of remotely sensed data and the output variable. An experimental design technique, followed by a classification of the input variables and a factor analysis were implemented in order to understand the structure, reduce the dimensionality of the data and avoid the overfitting of the neural network. The results show that there is a significant amount of independent information in the angular dimension, and this information is highly relevant to the estimation of tree densities in the study area. The MISR NDAI indexes improved the performance of the MISR BRF. The non-linear ANN outperformed the linear regressions. The best results were obtained with the ANN after selecting the input variables according to the results of the experimental design, the classification and the factor analysis, with a 0.71 correlation coefficient against the 0.58 of the best linear regression model. (C) 2007 Elsevier Inc. All rights reserved.
机译:在本文中,我们评估了遥感数据的频谱,时间和角度方面对定量提取热带林地森林结构信息的潜力。来自不同日期的500米空间分辨率的中分辨率成像光谱仪(MODIS)多光谱数据,空间分辨率为275米的MISR数据得出的多角度成像光谱仪(MISR)双向反射系数(BRF)和归一化差角指数(NDAI)分别为用作输入数据。乳房高度处每公顷大于直径20厘米的树木数量被视为关注变量。测试了简单的多个普通最小二乘回归和人工神经网络(ANN),以了解各种遥感数据源与输出变量之间的关系。为了理解结构,减少数据的维数并避免神经网络的过度拟合,实施了一种实验设计技术,然后对输入变量进行分类并进行因子分析。结果表明,在角度维度上存在大量独立信息,并且该信息与研究区域树木密度的估计高度相关。 MISR NDAI索引提高了MISR BRF的性能。非线性ANN优于线性回归。根据实验设计,分类和因子分析的结果选择输入变量后,使用ANN获得最佳结果,相关系数为0.71,而最佳线性回归模型为0.58。 (C)2007 Elsevier Inc.保留所有权利。

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