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Approaches to fractional land cover and continuous field mapping: A comparative assessment over the BOREAS study region

机译:分数土地覆盖和连续田间制图的方法:BOREAS研究区域的比较评估

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Subpixel land cover mapping involves the estimation of surface properties using sensors whose spatial sampling is coarse enough to produce mixtures of the properties within each pixel. This study evaluates five algorithms for mapping subpixel land cover fractions and continuous fields of vegetation properties within the BOREAS study area. The algorithms include a conventional "hard", per-pixel classifier, a neural network, a clustering/look-up-table approach, multivariate regression, and linear least squares inversion. A land cover map prepared using a Landsat TM mosaic was adopted as the source of fine scale calibration and validation data. Coarse scale mixtures of five basic land cover classes and continuous vegetation fields, both corresponding to the field of view of SPOT-VEGETATION imagery (1.15-km pixel size), were synthesised from the TM mosaic using a modelled point spread function. Two measures of land cover distribution were used, fractions of fine scale land cover categories and continuous fields of vegetation structural characteristics. The subpixel algorithms were applied using both proximate (< 100 km) and distant (> 400 km) separation between training and validation regions. "Hard" classification performed poorly in estimating proportions or continuous fields. The neural network, look-up-table and multivariate regression algorithms produced good matches of spatial patterns and regional land cover composition for the proximate treatment. However, all three methods exhibited substantial biases with the distant treatment due to the characteristics of the training data. Linear least squares inversion offers a relatively unbiased but less precise alternative for subpixel proportion and fraction mapping as it avoids calibration to the a priori distribution of land cover in the training data. In general, a combination of multivariate regression for proximate training data and linear least squares inversion for distant training data resulted in woody fraction estimates within 20% of the Landsat TM classification-based estimates.
机译:亚像素土地覆盖制图涉及使用传感器进行表面特性的估计,这些传感器的空间采样足够粗糙,以在每个像素内产生特性的混合。这项研究评估了BOREAS研究区域内用于绘制亚像素土地覆盖率和植被属性连续场的五种算法。该算法包括常规的“硬”,按像素分类器,神经网络,聚类/查找表方法,多元回归和线性最小二乘反演。采用Landsat TM镶嵌图制作的土地覆盖图被用作精细标定和验证数据的来源。使用建模的点扩散函数从TM马赛克合成了五个基本土地覆盖类别和连续植被场的粗尺度混合物,这两个区域都对应于SPOT-VEGETATION影像的视场(1.15 km像素大小)。使用了两种土地覆盖分布量度,即精细尺度的土地覆盖类别的分数和植被结构特征的连续场。使用训练区域和验证区域之间的近距离(<100 km)和远距离(> 400 km)来应用亚像素算法。 “硬”分类在估计比例或连续字段方面表现不佳。神经网络,查找表和多元回归算法为附近处理提供了空间模式和区域土地覆盖组成的良好匹配。但是,由于训练数据的特性,这三种方法在远距离处理上均表现出明显的偏差。线性最小二乘反演为子像素比例和分数映射提供了相对无偏但不太精确的替代方案,因为它避免了对训练数据中土地覆盖的先验分布进行校准。通常,将最近训练数据的多元回归与远距离训练数据的线性最小二乘反演相结合,可得出木质成分分数估计值在基于Landsat TM分类的估计值的20%之内。

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