Department of Soil Science and Soil Protection, Faculty of Agrobiology, Food and Natural Resources, Czech University of Life Sciences Prague, Kamycka 129, Suchdol, 16500, Prague, Czech Republic.
Department of Soil Science and Soil Protection, Faculty of Agrobiology, Food and Natural Resources, Czech University of Life Sciences Prague, Kamycka 129, Suchdol, 16500, Prague, Czech Republic.
Environ Pollut. 2022 Oct 1;310:119828. doi: 10.1016/j.envpol.2022.119828. Epub 2022 Aug 9.
Finding an appropriate satellite image as simultaneous as possible with the sampling time campaigns is challenging. Fusion can be considered as a method of integrating images and obtaining more pixels with higher spatial, spectral and temporal resolutions. This paper investigated the impact of Landsat 8-OLI and Sentinel-2A data fusion on prediction of several toxic elements at a mine waste dump. The 30 m spatial resolution Landsat 8-OLI bands were fused with the 10 m Sentinel-2A bands using various fusion techniques namely hue-saturation-value (HSV), Brovey, principal component analysis (PCA), Gram-Schmidt (GS), wavelet, and area-to-point regression kriging (ATPRK). ATPRK was the best method preserving both spectral and spatial features of Landsat 8-OLI and Sentinel-2A after fusion. Furthermore, the partial least squares regression (PLSR) model developed on genetic algorithm (GA)-selected laboratory visible-near infrared-shortwave infrared (VNIR-SWIR) spectra yielded more accurate prediction results compared to the PLSR model calibrated on the entire spectra. It was hence, applied to both individual sensors and their ATPRK-fused image. In case of the individual sensors, except for As, Sentinel-2A provided more robust prediction models than Landsat 8-OLI. However, the best performances were obtained using the fused images, highlighting the potential of data fusion to enhance the toxic elements' prediction models.
寻找与采样时间尽可能同步的合适卫星图像具有挑战性。融合可以被视为一种整合图像的方法,可以获得更高空间、光谱和时间分辨率的更多像素。本文研究了 Landsat 8-OLI 和 Sentinel-2A 数据融合对矿山尾矿中几种有毒元素预测的影响。使用各种融合技术,将空间分辨率为 30 m 的 Landsat 8-OLI 波段与空间分辨率为 10 m 的 Sentinel-2A 波段融合,这些技术包括色调-饱和度-值(HSV)、Brovey、主成分分析(PCA)、Gram-Schmidt(GS)、小波和面积到点回归克里金(ATPRK)。ATPRK 是在融合后保留 Landsat 8-OLI 和 Sentinel-2A 的光谱和空间特征的最佳方法。此外,基于遗传算法(GA)选择的实验室可见-近红外-短波红外(VNIR-SWIR)光谱开发的偏最小二乘回归(PLSR)模型与基于整个光谱校准的 PLSR 模型相比,产生了更准确的预测结果。因此,它被应用于单个传感器及其 ATPRK 融合图像。对于单个传感器,除了 As 之外,Sentinel-2A 提供了比 Landsat 8-OLI 更稳健的预测模型。然而,使用融合图像获得了最佳性能,突出了数据融合增强有毒元素预测模型的潜力。