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Classification Using Unmixing Models in Areas With Substantial Endmember Variability

机译:在末端成员具有较大变异性的区域中使用混合模型进行分类

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Hyperspectral imagery (HSI) can significantly contribute to habitat monitoring which is essential to ecosystem management. Specifically, spectral unmixing in HSI is an important tool for habitat conservation status assessment. However, an issue found is the spectral variability of the endmembers that can be addressed by the Extended Linear Mixing Model (ELMM), which considers this spectral variability for obtaining accurate abundance maps. An analysis is performed in a mountainous ecosystem with high spectral variations. Classification maps are obtained from the abundance maps to assess the unmixing models. Results are very satisfactory, plausible abundances are estimated with accurate characterization of variability within the scene and overall accuracies over 83%are obtained. ELMM and Robust ELMM allow studying the features of each pixel, including additional information about characterization of mixed pixels, by considering spectral variability and being more robust to the absence ofpure pixels as well as to noise.
机译:高光谱图像(HSI)可以极大地促进栖息地监测,这对于生态系统管理至关重要。具体而言,HSI中的频谱分解是评估栖息地保护状态的重要工具。但是,发现的问题是可以通过扩展线性混合模型(ELMM)解决的端部成员的光谱变异性,该模型考虑了此光谱变异性以获得准确的丰度图。在具有高光谱变化的山区生态系统中进行分析。从丰富度图获得分类图,以评估分解模型。结果非常令人满意,可以对场景中的可变性进行准确的表征,从而估计出可能的丰度,并且可以获得超过83%的总体准确度。 ELMM和健壮的ELMM可以通过考虑光谱可变性来研究每个像素的特征,包括有关混合像素表征的其他信息,并且对于不存在纯像素以及噪声的情况更健壮。

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