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Vegetation index correction to reduce background effects in orchards with high spatial resolution imagery

机译:植被指数校正可减少具有高空间分辨率图像的果园的背景影响

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High spatial resolution satellite imagery provides an alternative for time consuming and labor intensive in situ measurements of biophysical variables, such as chlorophyll and water content. However, despite the high spatial resolution of current satellite sensors, mixtures of canopies and backgrounds will be present, hampering the estimation of biophysical variables. Traditional correction methodologies use spectral differences between canopies and backgrounds, but fail with spectrally similar canopies and backgrounds. In this study, the lack of a generic solution to reduce background effects is tackled. Through synthetic imagery, the mixture problem was demonstrated with regards to the estimation of biophysical variables. A correction method was proposed, rescaling vegetation indices based on the canopy cover fraction. Furthermore, the proposed method was compared to traditional background correction methodologies (i.e. soil-adjusted vegetation indices and signal unmixing) for different background scenarios. The results of a soil background scenario showed the inability of soil-adjusted vegetation indices to reduce background admixture effects, while signal unmixing and the proposed method removed background influences for chlorophyll (AR~2 = ~0.3; ΔRMSE = -1.6 μg/cm~2) and water (ΔR~2 = ~0.3; ΔRMSE = ~0.5 mg/cm~2) related vegetation indices. For the weed background scenario, signal unmixing was unable to remove the background influences for chlorophyll content (ΔR~2 = -0.1; ΔRMSE = -0.6 μg/cm~2), while the proposed correction method reduced background effects (ΔR~2 = 0.1; ΔRMSE = 0.4 μg/cm~2). Overall, the proposed vegetation index correction method reduced the background influence irrespective of background type, making useful comparison between management blocks possible.
机译:高空间分辨率的卫星图像为生物物理变量(例如叶绿素和水含量)的费时费力的原位测量提供了另一种选择。但是,尽管当前的卫星传感器具有很高的空间分辨率,但仍会出现树冠和背景的混合物,从而妨碍了对生物物理变量的估计。传统的校正方法使用冠层和背景之间的光谱差异,但由于光谱相似的冠层和背景而失败。在本研究中,解决了缺乏减少背景影响的通用解决方案的问题。通过合成图像,在估计生物物理变量方面证明了混合问题。提出了一种校正方法,根据冠层覆盖率重新定标植被指数。此外,针对不同的背景场景,将提出的方法与传统的背景校正方法(即土壤调整的植被指数和信号分解)进行了比较。土壤背景情景的结果表明,土壤调节的植被指数无法降低背景混合效应,而信号分解和所提出的方法消除了叶绿素的背景影响(AR〜2 =〜0.3;ΔRMSE= -1.6μg/ cm〜 2)和与水有关的植被指数(ΔR〜2 =〜0.3;ΔRMSE=〜0.5 mg / cm〜2)。对于杂草背景情况,信号分解无法消除对叶绿素含量的背景影响(ΔR〜2 = -0.1;ΔRMSE= -0.6μg/ cm〜2),而拟议的校正方法减少了背景影响(ΔR〜2 = 0.1;ΔRMSE= 0.4μg/ cm〜2)。总体而言,所提出的植被指数校正方法可以减少背景影响,而与背景类型无关,从而可以在管理模块之间进行有用的比较。

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