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首页> 外文期刊>International journal of applied earth observation and geoinformation >The use of airborne hyperspectral data for tree species classification in a species-rich Central European forest area
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The use of airborne hyperspectral data for tree species classification in a species-rich Central European forest area

机译:利用机载高光谱数据对中欧一个物种丰富的森林地区的树种进行分类

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The success of remote sensing approaches to assess tree species diversity in a heterogeneously mixed forest stand depends on the availability of both appropriate data and suitable classification algorithms. To separate the high number of in total ten broadleaf tree species in a small structured floodplain forest, the Leipzig Riverside Forest, we introduce a majority based classification approach for Discriminant Analysis based on Partial Least Squares (PLS-DA), which was tested against Random Forest (RF) and Support Vector Machines (SVM). The classifier performance was tested on different sets of airborne hyperspectral image data (AISA DUAL) that were acquired on single dates in August and September and also stacked to a composite product. Shadowed gaps and shadowed crown parts were eliminated via spectral mixture analysis (SMA) prior to the pixel-based classification. Training and validation sets were defined spectrally with the conditioned Latin hypercube method as a stratified random sampling procedure. In the validation, PIS-DA consistently outperformed the RF and SVM approaches on all datasets. The additional use of spectral variable selection (CARS, "competitive adaptive reweighted sampling") combined with PLS-DA further improved classification accuracies. Up to 78.4% overall accuracy was achieved for the stacked dataset. The image recorded in August provided slightly higher accuracies than the September image, regardless of the applied classifier. (C) 2016 Elsevier B.V. All rights reserved.
机译:在异质混交林中评估树木物种多样性的遥感方法的成功取决于适当数据和适当分类算法的可用性。为了在小型结构性洪泛区森林莱比锡河畔森林中分离出十种阔叶树种中的大量,我们引入了基于偏最小二乘(PLS-DA)的基于多数的判别分析分类方法,并针对随机森林(RF)和支持向量机(SVM)。分类器的性能已在不同的航空高光谱图像数据集(AISA DUAL)上进行了测试,这些数据是在8月和9月的单个日期获取的,并且还叠加到复合产品中。在基于像素的分类之前,通过光谱混合分析(SMA)消除了阴影间隙和阴影冠部。训练和验证集通过条件拉丁超立方体方法在频谱上定义为分层随机抽样程序。在验证中,PIS-DA在所有数据集上始终优于RF和SVM方法。结合使用光谱变量选择(CARS,“竞争性自适应加权采样”)和PLS-DA,可以进一步提高分类精度。堆叠数据集的整体精度高达78.4%。不管使用何种分类器,八月记录的图像提供的准确度均比九月图像高。 (C)2016 Elsevier B.V.保留所有权利。

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