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Invasive Saltcedar (Tamarisk spp.) Distribution Mapping Using Multiresolution Remote Sensing Imagery

机译:使用多分辨率遥感影像的侵袭性Saltcedar(Tamarisk spp。)分布图

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Saltcedar is commonly recognized as one of the most threatening invasive species in the United States and has the potential to cause great environmental harm over the coming decade. Accurate mapping of saltcedar distribution and abundance in a timely manner plays a central role in assisting with effective control. Current studies have mostly concentrated on large-area detection with coarse-resolution remote sensing data. In this study, a comprehensive test was designed and carried out to examine the ability to integrate multitemporal and multiresolution imagery for differentiating saltcedar from other riparian vegetation types in the Rio Grande basin of Texas, including very high spatial resolution (QuickBird), hyperspectral resolution imagery (AISA), and moderate resolution satellite imagery (Landsat TM). Two types of analyses were fulfilled. First, five pixel-based classification methods were adopted for assessing the effectiveness of QuickBird and AISA for discerning saltcedar, respectively; that is, the maximum likelihood classifier (MLC), neural network classifier (NNC), support vector machine (SVM), spectral angle mapper (SAM), and maximum matching feature (MMF). Second, Landsat TM imagery was synthesized from AISA and tested for mapping the abundance of saltcedar with four linear spectral unmixing methods and three back-propagation neural network methods. Results indicate that AISA outperformed QuickBird imagery in differentiating saltcedar from other riparian vegetation species. SVM achieved the highest classification accuracy among the five classifiers. Linear spectral unmixingmethods exhibited similar mapping accuracy to neural network methods in estimating the abundance of saltcedar at a spatial resolution of 30 by 30 m(2) but with significantly better computing efficiency.
机译:Saltcedar通常被认为是美国最具威胁性的入侵物种之一,并有可能在未来十年内对环境造成巨大损害。及时准确地描绘出雪松的分布和丰度,对协助有效控制起着核心作用。当前的研究主要集中在具有粗分辨率遥感数据的大面积检测上。在这项研究中,设计并进行了一项综合测试,以检验整合多时相和多分辨率图像以区分德克萨斯州里约格兰德盆地的滨海植被和其他河岸植被类型的能力,包括非常高的空间分辨率(QuickBird),高光谱分辨率的图像(AISA)和中等分辨率的卫星图像(Landsat TM)。完成了两种类型的分析。首先,采用五种基于像素的分类方法分别评估QuickBird和AISA识别硝香树的有效性;即最大似然分类器(MLC),神经网络分类器(NNC),支持向量机(SVM),谱角映射器(SAM)和最大匹配特征(MMF)。其次,从AISA合成Landsat TM影像,并通过四种线性光谱分解方法和三种反向传播神经网络方法对Landsat TM影像进行测绘,以测定盐杉的丰度。结果表明,在将Saltcedar与其他河岸植被物种区分开来方面,AISA优于QuickBird图像。在五个分类器中,SVM的分类精度最高。线性光谱解混方法在估计空间分辨率为30 x 30 m(2)时的硝香丰富度方面显示出与神经网络方法相似的映射精度,但计算效率明显更高。

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