Spatial series approach to estimate soil moisture over wheat fields from a single SAR image

IF 6.5 1区 农林科学 Q1 AGRONOMY
Wentao Han , Mingxu Wang , Yangyang Cao , Zhengdong Luo , Cui Zhou , Jianjun Zhu , Haiqiang Fu , Qinghua Xie
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Abstract

The coupling of soil moisture (SM) with other factors, such as surface roughness and vegetation coverage, impedes the generation of large-scale high-precision SM products. Eliminating the effects of vegetation and roughness based on backscattering intensity ratios (BIRs) from time-series data is the primary approach for addressing this problem. However, this method is susceptible to the low temporal resolution of SAR images, leading to unstable retrieval results. In this study, we propose to decouple SM from other factors using a spatial series approach (SSA), which requires only a single synthetic aperture radar (SAR) image and utilizes the BIRs of spatial series points to retrieve SM. The core idea is to employ BIRs to implicitly compensate for vegetation and roughness effects, thereby avoiding explicit parameter estimation with inherent biases. For this purpose, spatial series points are selected based on the incidence angle, volume scattering power, canopy dominant orientation, and roughness. Then, the BIRs of these points are used for SM retrieval. Experiments are conducted using L-band UAVSAR data acquired at different times. The experimental results show that the root mean square error (RMSE) of SM retrieved by the SSA is around 10 %, and the correlation coefficient exceeds 0.7. This approach holds value by expanding the observational dimensions and enhancing SM monitoring capabilities, particularly in scenarios where time-series SAR data acquisition is unfeasible. Future integration with temporal-series methods could establish a spatiotemporal-series inversion framework, which would markedly advance large-scale SM retrieval research.
单幅SAR影像估算麦田土壤湿度的空间序列方法
土壤湿度与地表粗糙度、植被覆盖度等因素的耦合影响了大规模高精度土壤湿度产品的生成。基于时间序列数据后向散射强度比(BIRs)消除植被和粗糙度的影响是解决这一问题的主要方法。然而,该方法容易受到SAR图像时间分辨率低的影响,导致检索结果不稳定。在本研究中,我们提出使用空间序列方法(SSA)将SM与其他因素解耦,该方法只需要一张合成孔径雷达(SAR)图像,利用空间序列点的BIRs来检索SM。核心思想是利用BIRs隐式补偿植被和粗糙度效应,从而避免显式参数估计具有固有偏差。为此,根据入射角、体散射功率、冠层优势方位和粗糙度选择空间序列点。然后,利用这些点的BIRs进行SM检索。实验采用不同时间采集的l波段UAVSAR数据进行。实验结果表明,SSA提取的SM的均方根误差(RMSE)在10 %左右,相关系数超过0.7。这种方法通过扩大观测维度和增强SM监测能力而具有价值,特别是在时间序列SAR数据采集不可行的情况下。未来与时间序列方法的融合可以建立一个时空序列反演框架,这将显著推进大规模SM检索研究。
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来源期刊
Agricultural Water Management
Agricultural Water Management 农林科学-农艺学
CiteScore
12.10
自引率
14.90%
发文量
648
审稿时长
4.9 months
期刊介绍: Agricultural Water Management publishes papers of international significance relating to the science, economics, and policy of agricultural water management. In all cases, manuscripts must address implications and provide insight regarding agricultural water management.
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