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    基于Ada-Xgboost模型的SAR图像植被覆盖度反演

    Ada-Xgboost model-based fractional vegetation cover inversion from synthetic aperture radar images

    • 摘要: 针对光学遥感卫星在云雨雾天气下无法提供有效植被覆盖度(fractional vegetation cover, FVC)数据的问题,该文提出一种基于合成孔径雷达(synthetic aperture Radar,SAR)图像的FVC反演方法。首先,提取Sentinel-1 SLC影像中的极化熵、各向异性、极化角、协方差矩阵分量和雷达植被指数等25种SAR特征,结合Pearson相关性分析方法筛选出对FVC敏感的关键特征,将其用于反演研究区域的FVC; 其次,为优化图像质量,采用欧洲航天局发布的全球10 m土地覆盖数据剔除非植被区域; 最后,采用投票法构建Ada-Xgboost模型对开封市FVC进行反演。结果表明,Ada-Xgboost模型在捕捉FVC的空间分布特征和提高反演精度方面具有显著优势(决定系数R2为0.781 0,均方根误差为0.179 3,均方误差为0.032 1,平均绝对误差为0.126 4,特征数量为7),相比于单一模型(Adaboost和Xgboost),有效降低了SAR特征的冗余性,并达到了与参考FVC更高的空间一致性。研究进一步表明SAR数据能够有效弥补光学遥感的局限性,可为大规模时序植被覆盖动态监测提供强有力的数据支撑。

       

      Abstract: Optical remote sensing satellites cannot provide valid fractional vegetation cover (FVC) data under cloudy, rainy, and foggy weather conditions. To address this, this study proposed a method for FVC inversion based on synthetic aperture radar (SAR) images. First, this study extracted a total of 25 SAR features from Sentinel-1 single look complex (SLC) images, including polarization entropy, anisotropy, alpha angle, covariance matrix elements, and radar vegetation index. Among them, key features sensitive to FVC were selected using Pearson correlation analysis and then utilized for FVC inversion in the study area. Moreover, to optimize overall image quality, this study excluded non-vegetated areas using the European Space Agency (ESA) WorldCover 10m land cover dataset. Finally, it conducted FVC inversion in Kaifeng City by constructing an Ada-Xgboost model using the voting method. The results indicate that the Ada-Xgboost model exhibited significant advantages in capturing the spatial distribution patterns of FVC and improving inversion accuracy. These advantages are evinced by a coefficient of determination (R2) of 0.781 0, a root mean square error (RMSE) of 0.179 3, a mean squared error (MSE) of 0.032 1, a mean absolute error (MAE) of 0.126 4, and a feature number (FN) of seven. Compared to individual models such as AdaBoost and XGBoost, the Ada-XGBoost model effectively reduced the redundancy of SAR features and achieved higher spatial consistency with the reference FVC data. This study further demonstrates that SAR data can effectively compensate for the limitations of optical remote sensing, offering robust data support for large-scale, time-series dynamic FVC monitoring.

       

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