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Improved time series land cover classification by missing-observation-adaptive nonlinear dimensionality reduction

机译:通过减少观测自适应非线性维数改进的时间序列土地覆盖分类

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Dimensionality reduction (DR) is a widely used technique to address the curse of dimensionality when high-dimensional remotely sensed data, such as multi-temporal or hyperspectral imagery, are analyzed. Nonlinear DR algorithms, also referred to as manifold learning algorithms, have been successfully applied to hyperspectral data and provide improved performance compared with linear DR algorithms. However, DR algorithms cannot handle missing data that are common in multi-temporal imagery. In this paper, the Laplacian Eigenmaps (LE) nonlinear DR algorithm was refined for application to multi-temporal satellite data with large proportions of missing data. Refined LE algorithms were applied to 52-week Landsat time series for three study areas in Texas, Kansas and South Dakota that have different amounts of missing data and land cover complexity. A series of random forest classifications were conducted on the refined LE DR bands using varying proportions of training data provided by the United States Department of Agriculture (USDA) National Agricultural Statistics Service (NASS) Cropland Data Layer (CDL); these classification results were compared with conventional metrics-based random forest classifications. Experimental results show that compared with the metrics approach, higher per-class and overall classification accuracies were obtained using the refined LE DR bands of multispectral reflectance time series, and the number of training samples required to achieve a given degree of classification accuracy was also reduced. The approach of applying the refined LE to multispectral reflectance time series is promising in that it is automated and provides dimensionality-reduced data with desirable classification properties. The implications of this research and possibilities for future algorithm development and application are discussed. (C) 2014 The Authors. Published by Elsevier Inc.
机译:当分析高维遥感数据(例如多时相或高光谱图像)时,降维(DR)是解决维数诅咒的一种广泛使用的技术。非线性DR算法(也称为流形学习算法)已成功应用于高光谱数据,并且与线性DR算法相比,具有更高的性能。但是,DR算法无法处理多时间图像中常见的丢失数据。在本文中,拉普拉斯特征图(LE)非线性DR算法经过改进,可以应用于丢失大量数据的多时相卫星数据。在德克萨斯州,堪萨斯州和南达科他州的三个研究区域,将改进的LE算法应用于52周的Landsat时间序列,这三个研究区域的缺失数据量和土地覆盖复杂度不同。使用美国农业部(USDA)国家农业统计局(NASS)农田数据层(CDL)提供的不同比例的训练数据,在精炼的LE DR波段上进行了一系列随机森林分类。将这些分类结果与基于常规指标的随机森林分类进行了比较。实验结果表明,与度量方法相比,使用精制的多光谱反射时间序列的LE DR波段可获得更高的每类和整体分类精度,并且减少了达到给定分类精度所需的训练样本数量。将精化的LE应用于多光谱反射时间序列的方法是有前途的,因为它是自动化的,并提供了具有所需分类属性的降维数据。讨论了这项研究的意义以及未来算法开发和应用的可能性。 (C)2014作者。由Elsevier Inc.发布

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