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The Optimal Image Date Selection for Evaluating Cultivated Land Quality Based on Gaofen-1 Images

机译:基于高分1号影像的耕地质量评价最佳影像日期选择

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摘要

This study proposes a method for determining the optimal image date to improve the evaluation of cultivated land quality (CLQ). Five vegetation indices: leaf area index (LAI), difference vegetation index (DVI), enhanced vegetation index (EVI), normalized difference vegetation index (NDVI), and ratio vegetation index (RVI) are first retrieved using the PROSAIL model and Gaofen-1 (GF-1) images. The indices are then introduced into four regression models at different growth stages for assessing CLQ. The optimal image date of CLQ evaluation is finally determined according to the root mean square error (RMSE). This method is tested and validated in a rice growth area of Southern China based on 115 sample plots and five GF-1 images acquired at the tillering, jointing, booting, heading to flowering, and milk ripe and maturity stage of rice in 2015, respectively. The results show that the RMSEs between the measured and estimated CLQ from four vegetation index-based regression models at the heading to flowering stage are smaller than those at the other growth stages, indicating that the image date corresponding with the heading to flowering stage is optimal for CLQ evaluation. Compared with other vegetation index-based models, the LAI-based logarithm model provides the most accurate estimates of CLQ. The optimal model is also driven using the GF-1 image at the heading to flowering stage to map CLQ of the study area, leading to a relative RMSE of 14.09% at the regional scale. This further implies that the heading to flowering stage is the optimal image time for evaluating CLQ. This study is the first effort to provide an applicable method of selecting the optimal image date to improve the estimation of CLQ and thus advanced the literature in this field.
机译:这项研究提出了一种确定最佳影像日期的方法,以改善对耕地质量的评估。五个植被指数:叶面积指数(LAI),差异植被指数(DVI),增强植被指数(EVI),归一化差异植被指数(NDVI)和比率植被指数(RVI)首先使用PROSAIL模型和Gaofen- 1(GF-1)图像。然后将这些指数引入到处于不同增长阶段的四个回归模型中,以评估CLQ。最后根据均方根误差(RMSE)确定CLQ评估的最佳图像日期。根据2015年水稻分the,拔节,孕穗,开花期,乳熟和成熟期分别获得的115个样地和5个GF-1图像,对该方法进行了测试和验证。 。结果表明,抽穗期至开花期四种基于植被指数的回归模型的实测值和估计值的均方根误差均小于其他生长期的均方根误差,表明与抽穗期至开花期相对应的影像数据是最优的。用于CLQ评估。与其他基于植被指数的模型相比,基于LAI的对数模型提供了最准确的CLQ估算值。最佳模型的驱动还包括在开花期的GF-1图像绘制研究区域的CLQ图,从而导致区域范围内的相对RMSE为14.09%。这进一步暗示,进入开花期是评估CLQ的最佳图像时间。这项研究是首次尝试提供一种选择最佳图像日期的方法,以改善CLQ的估计,从而推动该领域的文献发展。

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