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Multi-temporal hyperspectral mixture analysis and feature selection for invasive species mapping in rainforests

机译:雨林中入侵物种的多时相高光谱混合分析和特征选择

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We evaluated the potential of a multi-temporal Multiple Endmember Spectral Mixture Analysis (MESMA) for invasive species mapping in Hawaiian rainforests. Earth Observing-1 Hyperion time series data were compiled in a single image cube and ingested into MESMA. While the temporal analysis provided a way to incorporate species phenology, a feature selection technique automatically identified the best time and best spectral feature set to optimize the separability among the native and invasive tree species in our study area. We initiated an alternative Separability Index (SI)-based feature selection approach in which a boundary condition reduced the amount of correlation in the selected spectral subset. We hypothesized that redundant spectral information could be avoided, and improved plant detection accuracy could be achieved, with reduced computational time due to the selection of fewer bands in the mixture analysis. Our analysis showed a systematic increase in the invasive species detection success when we compared the output of multi-temporal MESMA (Kappa=0.78) with that of the traditional unitemporal approach (Kappa=0.51-0.69). Even for unitemporal MESMA, in which only a single input image was used, the band selection strategy was beneficial both in plant detection accuracy and computational time. We could further demonstrate that, despite a lack of imagery covering all phenological events, a proper band selection strategy can emphasize subtle spectral and phenological differences between species and can thereby partly compensate for this lack of data. This creates opportunities for mapping in areas where cloud cover is a limiting factor for building extended spectral image time series. This approach is sufficiently general and inherently adaptive, thereby supporting species mapping using Hyperion and forthcoming space-borne imaging spectrometers.
机译:我们评估了多时相多末端元光谱混合分析(MESMA)在夏威夷雨林中进行入侵物种制图的潜力。将Earth Observing-1 Hyperion时间序列数据汇总到一个图像立方体中,并提取到MESMA中。虽然时态分析提供了一种结合物种物候的方法,但特征选择技术会自动识别最佳时间和最佳光谱特征集,以优化我们研究区域内原生树种和入侵树种之间的可分离性。我们启动了另一种基于可分离性指数(SI)的特征选择方法,其中边界条件减少了所选光谱子集中的相关量。我们假设可以避免多余的光谱信息,并且由于在混合物分析中选择了较少的谱带,从而减少了计算时间,从而提高了植物检测的准确性。当我们比较多时态MESMA(Kappa = 0.78)和传统单时态方法(Kappa = 0.51-0.69)的输出时,我们的分析表明入侵物种检测成功的系统增加。即使对于仅使用单个输入图像的单位时间MESMA,频带选择策略在植物检测精度和计算时间上均有益。我们可以进一步证明,尽管缺乏覆盖所有物候事件的图像,但是适当的谱带选择策略可以强调物种之间细微的光谱和物候差异,从而可以部分弥补这种数据不足。这为在云层覆盖范围是建立扩展光谱图像时间序列的限制因素的地区提供了制图的机会。这种方法具有足够的通用性和固有的适应性,从而支持使用Hyperion和即将推出的星载成像光谱仪进行物种制图。

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