Exploring the effects of crop growth differences on radar vegetation index response and crop height estimation using dynamic monitoring model

Bo Wang, Yu Liu, Qinghong Sheng, Jun Li, Shuwei Wang, Yunfeng Qiao, Honglin He
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Abstract

Abstract. Synthetic aperture radar (SAR) has emerged as a promising technology for monitoring crop plant height due to its ability to capture the geometric properties of crops. Radar vegetation index (RVI) has been extensively utilized for qualitative and quantitative remote sensing monitoring of vegetation growth dynamics. However, the combination of crop, growing environment, and temporal dynamics makes crop monitoring data a complex task. Despite the relatively simple underlying mechanisms of this phenomenon, there is still a need for more research to identify specific vegetation structures that correspond to changes in the response of vegetation indices. Building upon this premise, this study utilized a dynamic monitoring model to conduct dynamic monitoring of plant height for three common crops: rice, wheat, and maize. The findings revealed that (1) models developed for specific spatial and temporal scales of particular crop varieties may not accurately predict crop growth in different regions or with different varieties in a timely manner, due to growth variations; (2) these models maintain accuracy over a range of plant heights, such as rice at around 70cm, wheat at around 50cm, and maize at around 150cm; (3) among the three crops, planting density was identified as the main factor influencing the differences in RVI response. This research contributes to our comprehension of the dynamic response of RVI to different growth conditions in crops, and offers valuable insights and references for agricultural monitoring.
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利用动态监测模型探索作物生长差异对雷达植被指数响应和作物高度估算的影响
摘要合成孔径雷达(SAR)能够捕捉作物的几何特性,因此已成为监测作物株高的一项前景广阔的技术。雷达植被指数(RVI)已被广泛用于对植被生长动态进行定性和定量遥感监测。然而,作物、生长环境和时间动态的结合使得作物监测数据成为一项复杂的任务。尽管这一现象的基本机制相对简单,但仍需开展更多研究,以确定与植被指数响应变化相对应的特定植被结构。在此前提下,本研究利用动态监测模型对水稻、小麦和玉米三种常见作物的植株高度进行了动态监测。研究结果表明:(1) 针对特定作物品种的特定时空尺度开发的模型,由于生长变化,可能无法及时准确地预测不同地区或不同品种的作物生长情况;(2) 这些模型在一定植株高度范围内保持准确性,如水稻在 70 厘米左右,小麦在 50 厘米左右,玉米在 150 厘米左右;(3) 在三种作物中,种植密度被认为是影响植被指数响应差异的主要因素。这项研究有助于我们理解 RVI 对作物不同生长条件的动态响应,并为农业监测提供有价值的见解和参考。
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