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A Geographic Information-Assisted Temporal Mixture Analysis for Addressing the Issue of Endmember Class and Endmember Spectra Variability

机译:地理信息辅助的时间混合分析用于解决端成员类和端成员光谱变异性的问题

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摘要

Spectral mixture analysis (SMA) is a common approach for parameterizing biophysical fractions of urban environment and widely applied in many fields. For successful SMA, the selection of endmember class and corresponding spectra has been assumed as the most important step. Thanks to the spatial heterogeneity of natural and urban landscapes, the variability of endmember class and corresponding spectra has been widely considered as the profound error source in SMA. To address the challenging problems, we proposed a geographic information-assisted temporal mixture analysis (GATMA). Specifically, a logistic regression analysis was applied to analyze the relationship between land use/land covers and surrounding socio-economic factors, and a classification tree method was used to identify the present status of endmember classes throughout the whole study area. Furthermore, an ordinary kriging analysis was employed to generate a spatially varying endmember spectra at all pixels in the remote sensing image. As a consequence, a fully constrained temporal mixture analysis was conducted for examining the fractional land use land covers. Results show that the proposed GATMA achieved a promising accuracy with an RMSE of 6.81%, SE of 1.29% and MAE of 2.6%. In addition, comparative analysis result illustrates that a significant accuracy improvement has been found in the whole study area and both developed and less developed areas, and this demonstrates that the variability of endmember class and endmember spectra is essential for unmixing analysis.
机译:光谱混合分析(SMA)是用于参数化城市环境中生物物理成分的一种常用方法,已广泛应用于许多领域。对于成功的SMA,端部件种类和相应光谱的选择被认为是最重要的步骤。由于自然景观和城市景观的空间异质性,端构件类别和相应光谱的可变性已被广泛认为是SMA中的重要误差源。为了解决具有挑战性的问题,我们提出了一种地理信息辅助的时间混合分析(GATMA)。具体而言,采用逻辑回归分析来分析土地利用/土地覆盖与周围社会经济因素之间的关系,并使用分类树方法来确定整个研究区域中终端成员类别的现状。此外,采用普通克里金法分析在遥感图像中的所有像素处生成空间变化的端成员光谱。结果,进行了完全受限的时间混合分析,以检查部分土地利用土地覆盖。结果表明,提出的GATMA达到了令人满意的准确性,RMSE为6.81%,SE为1.29%,MAE为2.6%。此外,比较分析结果表明,在整个研究区域以及发达区域和欠发达区域都发现了显着的精度提高,这表明端成员类别和端成员光谱的可变性对于解混分析至关重要。

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