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Application of a regularized model inversion system (REGFLEC) to multi-temporal RapidEye imagery for retrieving vegetation characteristics

机译:正则化模型反演系统(REGFLEC)在多时相RapidEye影像中检索植被特征的应用

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摘要

Accurate retrieval of canopy biophysical and leaf biochemical constituents from space observations is critical to diagnosing the functioning and condition of vegetation canopies across spatio-temporal scales. Retrieved vegetation characteristics may serve as important inputs to precision farming applications and as constraints in spatially and temporally distributed model simulations of water and carbon exchange processes. However significant challenges remain in the translation of composite remote sensing signals into useful biochemical, physiological or structural quantities and treatment of confounding factors in spectrum-trait relations. Bands in the red-edge spectrum have particular potential for improving the robustness of retrieved vegetation properties. The development of observationally based vegetation retrieval capacities, effectively constrained by the enhanced information content afforded by bands in the red-edge, is a needed investment towards optimizing the benefit of current and future satellite sensor systems. In this study, a REGularized canopy reFLECtance model (REGFLEC) for joint leaf chlorophyll (Chll) and leaf area index (LAI) retrieval is extended to sensor systems with a band in the red-edge region for the first time. Application to time-series of 5 m resolution multi-spectral RapidEye data is demonstrated over an irrigated agricultural region in central Saudi Arabia, showcasing the value of satellite-derived crop information at this fine scale for precision management. Validation against in-situ measurements in fields of alfalfa, Rhodes grass, carrot and maize indicate improved accuracy of retrieved vegetation properties when exploiting red-edge information in the model inversion process. © (2015) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE).
机译:从空间观测中准确检索冠层生物物理和叶片生化成分对于跨时空尺度诊断植被冠层的功能和状况至关重要。检索到的植被特征可以作为精确农业应用的重要输入,并且可以作为水和碳交换过程的时空分布模型仿真的约束条件。然而,在将复合遥感信号转换为有用的生化,生理或结构量以及如何处理光谱特征关系中的混杂因素方面,仍然存在重大挑战。红边光谱中的谱带对于提高检索到的植被特性的鲁棒性具有特殊的潜力。基于观测的植被恢复能力的发展,有效地受到红边波段提供的增强信息内容的限制,是对优化当前和未来卫星传感器系统的效益进行的一项必要投资。在这项研究中,用于联合叶绿素(Chll)和叶面积指数(LAI)检索的正则化冠层反射模型(REGFLEC)首次扩展到在红边区域中具有条带的传感器系统。在沙特阿拉伯中部的一个灌溉农业地区,证明了将其用于5 m分辨率多光谱RapidEye数据的时间序列,显示了在这种精细规模上进行精确管理所衍生的作物信息的价值。对苜蓿,罗得草,胡萝卜和玉米田间实地测量的验证表明,当在模型反演过程中利用红边信息时,检索到的植被特性的准确性提高。 ©(2015)版权所有,光电仪器工程师协会(SPIE)。

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