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Comparison of EO-1 Hyperion to AVIRIS for mapping forest composition in the Appalachian Mountains, USA

机译:美国ASPALACHIAN山区射击林组成的EO-1 Hyperion与Aviris的比较

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We used classification and regression trees (CART) to map forest composition with Hyperion and AVIRIS in the Central Appalachian Mountains. Imagery from both sensors exhibited strong topographic effects, with AVIRIS also having a view-angle dependent brightness gradient across the image swath. A DEM-based empirical adjustment to reflectance levels was implemented to reduce apparent topographic effects in the imagery. In general, classification accuracy improved using the topographically normalized imagery, although it is possible that the adjustments to the AVIRIS imagery diminished the superior signal:noise performance of the AVIRIS imagery. Subtle distinctions in forest composition were detectable from both AVIRIS and Hyperion imagery, and despite the superior S:N and spatial resolution of AVIRIS, classification of Hyperion images was as accurate or more accurate than AVIRIS for most species. We therefore demonstrate the utility of Hyperion imagery, but note that further comparisons are still required. In particular, the effects of sensor artifacts (such as striping and "smile") must still be addressed when using Hyperion data.
机译:我们使用分类和回归树(购物车)将森林成分用Hyperion和Aviris映射到中央阿巴拉契亚山脉。来自两个传感器的图像表现出强烈的地形效果,Aviris还在图像条形图中具有视角依赖性亮度梯度。实施了对反射率水平的基于DEM的实证调整,以减少图像中的表观形貌效果。通常,使用拓扑标准化图像的分类准确性改善,尽管Aviris图像的调整可能减少了优越的信号:Aviris图像的噪声性能。森林组合物中的微妙区别是可检测的,既可从阅兵和高血清图像中检测,尽管S:N:N和Aviris的空间分辨率,对于大多数物种而言,Hyperion图像的分类比Aviris更准确或更准确。因此,我们展示了Hyperion Imagery的效用,但请注意,仍然需要进一步的比较。特别是,在使用Hyperion数据时,仍然必须解决传感器伪影(例如条带和“微笑”)的影响。

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