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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Comparing endmember selection techniques for accurate mapping of plant species and land cover using imaging spectrometer data
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Comparing endmember selection techniques for accurate mapping of plant species and land cover using imaging spectrometer data

机译:比较终端成员选择技术,以使用成像光谱仪数据准确绘制植物物种和土地覆盖物

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Building representative spectral libraries and quantitatively selecting a subset of spectra for mapping plant species and land cover/land use within remotely sensed imagery remain challenging for accurate classification. Multiple Endmember Spectral Mixture Analysis (MESMA) can be used for both classification and modeling fractional composition, and has been applied to map multiple biogeophysical variables. Our major objectives in this research were to 1) test a sampling design for building independent and representative training and validation spectral libraries; 2) compare endmember selection by a combination of two established techniques (count-based selection (CoB) and endmember average root mean square error (EAR)) with a recently introduced one (iterative endmember selection (IES)); and 3) develop and test a hybrid method, which combines the strengths of the previous two methods. We applied CoB/EAR, IES, and the new hybrid technique to mapping plant species and cover types in the Santa Ynez Mountains and Santa Barbara urban area, California, USA, using Airborne Visible Infrared Imaging Spectrometer (AVIRIS) data. For all endmember selection techniques, the number of selected endmembers varied across 25 random training samples. IES was consistently more accurate than CoB/EAR, but resulted in spectral libraries more than twice as large and failed to model rare species. The hybrid endmember selection technique resulted in the highest overall accuracy and kappa values and proved to be least sensitive to the random sampling protocols, but also produced the largest spectral libraries. A modified hybrid method, in which the number of endmembers selected was limited, produced the second highest accuracies, combining the strengths of the more parsimonious endmember selection by CoB/EAR with improved endmember selection by IES. Both IES and the hybrid methods selected endmembers that successfully classified a wide range of plant species and cover types, indicating their usefulness for these applications.
机译:建立代表性的光谱库并定量选择光谱子集以绘制遥感图像中的植物物种和土地覆盖/土地利用图,对于准确分类仍然具有挑战性。多个末端成员光谱混合分析(MESMA)可用于分类和建模分数组成,并且已应用于绘制多个生物地球物理变量。我们在这项研究中的主要目标是:1)测试用于建立独立且有代表性的训练和验证光谱库的采样设计; 2)通过两种既有技术(基于计数的选择(CoB)和最终成员平均均方根误差(EAR))的组合与最近引入的一种技术(迭代最终成员选择(IES))来比较最终成员选择; 3)开发并测试一种混合方法,该方法结合了前两种方法的优势。我们使用机载可见红外成像光谱仪(AVIRIS)数据,应用CoB / EAR,IES和新的混合技​​术来绘制美国加利福尼亚州圣伊内斯山脉和圣巴巴拉市区的植物种类和覆盖类型。对于所有端成员选择技术,在25个随机训练样本中,选定端成员的数量有所不同。 IES始终比CoB / EAR更加准确,但是导致光谱库的大小增加了一倍以上,并且无法对稀有物种进行建模。混合末端成员选择技术产生了最高的总体准确性和kappa值,并被证明对随机采样协议最不敏感,但同时也产生了最大的光谱库。一种改进的混合方法(其中选择的末端成员数量有限)产生了第二高的准确度,结合了CoB / EAR更加简约的末端成员选择的优势以及IES改善的末端成员选择的优势。 IES和混合方法都选择了成功地对各种各样的植物物种和覆盖类型进行分类的末端成员,表明了它们在这些应用中的有用性。

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