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Evaluation of single-date and multi-seasonal spatial and spectral information of Sentinel-2 imagery to assess growing stock volume of a Mediterranean forest

机译:Sentinel-2图像的单日和多季节空间和光谱信息评估地中海森林的生长股票

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摘要

Accurate growing stock volume (GSV) estimation is essential for forest inventory updating, terrestrial carbon stocks reporting, and ecosystem services assessment. This study investigates the potential of spectral and spatial features derived from single-date and multi-seasonal Sentinel-2 Multi Spectral Instrument (Sentinel-2 MSI) images, for GSV estimation in a Mediterranean region of Northeastern Greece. Original spectral bands, spectral indices, first-order statistics, Gray-Level Co-Occurrence Matrix (GLCM) texture measures, and Local Indicators of Spatial Association (LISA), based on the multi-seasonal and single-date Sentinel-2 MSI imagery, were used for GSV model development using the bagging LASSO algorithm. For both single and multi-date approaches, the spectral indices models were more accurate compared to the respective ones developed with the original Sentinel-2 MSI bands. Also, models based on texture were more efficient than the spectral models. The GLCM measures derived from July image, provided the most accurate single-date estimate of GSV (R-2 = 0.89, RMSE = 35.21), while their multi-seasonal counterparts improved slightly the accuracy (R-2 = 0.91, RMSE = 32.77). Fusion of spatial and textural information resulted in marginal or no-improvement on the texture model accuracy, however the fused models yielded higher predictive results than the spectral models alone.
机译:准确的股票量(GSV)估计对于森林库存更新,陆地碳储备报告和生态系统服务评估至关重要。本研究调查了从单日和多季节的哨障-2多光谱仪器(Sentinel-2 MSI)图像的光谱和空间特征的潜力,用于东北希腊地中海地区的GSV估计。基于多季节和单日哨哨所-2 MSI图像,原始光谱频带,频谱索引,一阶统计,灰度共出矩阵(GLCM)纹理测量和空间关联(LISA)的局部指标,用于使用袋装套索算法的GSV模型开发。对于单一和多日期方法,与使用原始哨声-2 MSI频带开发的相应的相比,光谱指数模型更准确。此外,基于纹理的模型比光谱模型更有效。 GLCM措施从7月IMAGE获得,提供了GSV的最准确的单日估计(R-2 = 0.89,RMSE = 35.21),而其多季节性对应物略有提高(R-2 = 0.91,RMSE = 32.77 )。空间和纹理信息的融合导致质地模型精度的边际或无改善,但融合模型比单独的光谱模型产生更高的预测结果。

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