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Estimation of Paddy Rice Variables with a Modified Water Cloud Model and Improved Polarimetric Decomposition Using Multi-Temporal RADARSAT-2 Images

机译:修正的水云模型和改进的极化分解法利用多时相RADARSAT-2影像估算水稻变量

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Rice growth monitoring is very important as rice is one of the staple crops of the world. Rice variables as quantitative indicators of rice growth are critical for farming management and yield estimation, and synthetic aperture radar (SAR) has great advantages for monitoring rice variables due to its all-weather observation capability. In this study, eight temporal RADARSAT-2 full-polarimetric SAR images were acquired during rice growth cycle and a modified water cloud model (MWCM) was proposed, in which the heterogeneity of the rice canopy in the horizontal direction and its phenological changes were considered when the double-bounce scattering between the rice canopy and the underlying surface was firstly considered as well. Then, three scattering components from an improved polarimetric decomposition were coupled with the MWCM, instead of the backscattering coefficients. Using a genetic algorithm, eight rice variables were estimated, such as the leaf area index (LAI), rice height ( h ), and the fresh and dry biomass of ears ( F e and D e ). The accuracy validation showed the MWCM was suitable for the estimation of rice variables during the whole growth season. The validation results showed that the MWCM could predict the temporal behaviors of the rice variables well during the growth cycle (R 2 > 0.8). Compared with the original water cloud model (WCM), the relative errors of rice variables with the MWCM were much smaller, especially in the vegetation phase (approximately 15% smaller). Finally, it was discussed that the MWCM could be used, theoretically, for extensive applications since the empirical coefficients in the MWCM were determined in general cases, but more applications of the MWCM are necessary in future work.
机译:水稻生长监测非常重要,因为水稻是世界主要农作物之一。水稻变量作为水稻生长的量化指标对于农业管理和产量估算至关重要,合成孔径雷达(SAR)由于具有全天候观测能力,因此在监测水稻变量方面具有很大优势。在这项研究中,在水稻生长周期中获得了八幅时间RADARSAT-2全极化SAR图像,并提出了一种改进的水云模型(MWCM),其中考虑了水稻冠层在水平方向上的异质性及其物候变化。最初还考虑了水稻冠层和下表面之间的双重反弹散射。然后,将来自改进的极化分解的三个散射分量与MWCM耦合,而不是与后向散射系数耦合。使用遗传算法,估计了八个水稻变量,例如叶面积指数(LAI),水稻高度(h)以及耳朵的新鲜和干燥生物量(F e和D e)。准确性验证表明,MWCM适合估算整个生长季节的水稻变量。验证结果表明,MWCM可以很好地预测水稻在生育周期中的时间行为(R 2> 0.8)。与原始水云模型(WCM)相比,MWCM的水稻变量相对误差要小得多,尤其是在植被阶段(约小15%)。最后,讨论了MWCM在理论上可用于广泛的应用,因为MWCM中的经验系数是在一般情况下确定的,但是在未来的工作中MWCM的更多应用是必需的。

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