森林环境分析。作为高光谱仪器性能度量的分类

J.S. Pearlman, A. Dyk, D. Goodenough, Zhenkui Ma, M. Crawford, A. Neuenschwander, Jisoo Ham
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引用次数: 7

摘要

在考虑设计可操作的天基高光谱成像仪时,诸如信噪比、地面分辨率和光谱覆盖等仪器特性是影响系统性能和成本的因素。为了为成像仪的优化提供依据,本文以样例标准考察了成像仪特征对森林物种分类的影响。用Hyperion和AVIRIS对一个有纯和混合的西铁杉和花旗松的研究地点进行了成像。使用最大后验贝叶斯分类器对选择的最大噪声分数(MNF)变换特征进行分类精度分析,并使用随机子空间二元分层分类器作为仪器性能的度量。信噪比、地面分辨率和光谱范围的定量结果建议了高光谱成像系统的操作参数,并清楚地表明需要在分析高光谱数据的方法上取得进展。
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Analysis of forest environments - classification as a metric of hyperspectral instrument performance
In considering the design of an operational space-based hyperspectral imager, instrument characteristics such as signal-to-noise, ground resolution and spectral coverage are factors for both system capability and cost. To provide a basis for imager optimization, an exploratory study was performed to investigate the impact of instrument characteristics on forest species classification, as an example criterion. A study site with pure and mixed western hemlock and Douglas fir stands was imaged with Hyperion and AVIRIS. The data were analyzed using classification accuracy of a maximum a posteriori Bayesian classifier applied to selected maximum noise fraction (MNF) transformed features and a random subspace binary hierarchical classifier as a metric for instrument performance. Quantitative results for signal-to-noise, ground resolution, and spectral range suggest operational parameters for hyperspectral imaging systems and clearly indicate the need for advances in methodology for analysis of hyperspectral data.
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