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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Contribution of multispectral and multiternporal information from MODIS images to land cover classification
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Contribution of multispectral and multiternporal information from MODIS images to land cover classification

机译:MODIS影像中的多光谱和多孔信息对土地覆盖分类的贡献

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The goal of this study is to evaluate the relative usefulness of high spectral and temporal resolutions of MODIS imagery data for land cover classification. In particular, we highlight the individual and combinatorial influence of spectral and temporal components of MODIS reflectance data in land cover classification. Our study relies on an annual time series of twelve MODIS 8-days composited images (MOD09Al) monthly acquired during the year 2000, at a 500 in nominal resolution. As our aim is not to propose an operational classifier directed at thematic mapping based on the most efficient combination of reflectance inputs - which will probably change across geographical regions and with different land cover nomenclatures - we intentionally restrict our experimental framework to continental Portugal. Because our observation data stream contains highly correlated components, we need to rank the temporal and the spectral features according not only to their individual ability at separating the land cover classes, but also to their differential contribution to the existing information. To proceed, we resort to the median Mahalanobis distance as a statistical separability criterion. Once achieved this arrangement, we strive to evaluate, in a classification perspective, the gain obtained when the dimensionality of the input feature space grows. We then successively embedded the prior ranked measures into the multitemporal and multispectral training data set of a Support Vector Machines (SVM) classifier. In this way, we show that, only the inclusion of the approximately first three dates substantially increases the classification accuracy. Moreover, this multitemporal factor has a significant effect when coupled with combinations of few spectral bands, but it turns negligible as soon as the full spectral information is exploited. Regarding the multispectral factor, its beneficence on classification accuracy remains more constant, regardless of the number of dates being used. (C) 2007 Elsevier B.V. All rights reserved.
机译:这项研究的目的是评估MODIS影像数据的高光谱和时间分辨率对土地覆盖分类的相对有用性。特别是,我们强调了MODIS反射率数据的光谱和时间分量在土地覆盖分类中的个体和组合影响。我们的研究依赖于2000年期间每月以名义分辨率500采集的十二个MODIS 8天合成图像(MOD09A1)的年度时间序列。因为我们的目的不是基于最有效的反射输入组合(针对不同的地理区域和不同的土地覆被术语可能会发生变化)建议针对主题映射的操作分类器,所以我们有意将实验框架限制在葡萄牙大陆。由于我们的观测数据流包含高度相关的分量,因此我们不仅需要根据时间和光谱特征对土地覆盖物类别进行分类的能力,还应根据它们对现有信息的不同贡献进行排序。为了继续进行,我们求出中值马氏距离作为统计可分离性标准。一旦实现了这种安排,我们将努力从分类的角度评估当输入特征空间的维数增长时获得的增益。然后,我们先后将先前排名的度量嵌入到支持向量机(SVM)分类器的多时间和多光谱训练数据集中。这样,我们表明,仅包含大约前三个日期会大大提高分类的准确性。而且,当与几个光谱带的组合结合时,这种多时间因子具有显着的影响,但是,一旦利用了全部光谱信息,它就可以忽略不计了。关于多光谱因子,无论使用多少日期,其对分类准确性的好处都保持更恒定。 (C)2007 Elsevier B.V.保留所有权利。

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