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Estimating chlorophyll content from hyperspectral vegetation indices: Modeling and validation

机译:从高光谱植被指数估算叶绿素含量:建模和验证

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Leaf chlorophyll content, a good indicator of photosynthesis activity, mutations, stress and nutritional state, is of special significance to precision agriculture. Recent studies have demonstrated the feasibility of retrieval of chlorophyll content from hyperspectral vegetation indices composed by the reflectance of specific bands. In this paper, a set of vegetation indices belonged to three classes (normalized difference vegetation index (NDVI), modified simple ratio (MSR) index and the modified chlorophyll absorption ratio index (MCARI, TCARI) and the integrated forms (MCARI/OSAVI and TCARI/OSAVI)) were tested using the PROSPECT and SAIL models to explore their potentials in chlorophyll content estimation. Different bands combinations were also used to derive the modified vegetation indices. In the sensitivity study, four new formed indices (MSR[705,750], MCARI[705,750], TCARI/OSAVI[705,750] and MCARI/OSAVI[705,750]) were proved to have better linearity with chlorophyll content and resistant to leaf area index (LAI) variations by taking into account the effect of quick saturation at 670nm with relatively low chlorophyll content. Validation study was also conducted at canopy scale using the ground truth data in the growth duration of winter wheat (chlorophyll content and reflectance data). The results showed that the integrated indices TCARI/OSAVI[705,750] and MCARI/OSAVI[705,750] are most appropriate for chlorophyll estimation with high correlation coefficients R po of 0.8808 and 0.9406, respectively, because more disturbances such as shadow, soil reflectance and nonphotosynthetic materials are taken into account. The high correlation between the vegetation indices obtained in the developmental stages of wheat and Hyperion data (R po of 0.6798 and 0.7618 for TCARI/OSAVI[705,750] and MCARI/OSAVI[705,750], respectively) indicated that these two integrated index can be used in practice to estimate the chlorophylls of different types of corns.
机译:叶片叶绿素含量是光合作用,突变,胁迫和营养状况的良好指标,对精准农业具有特殊意义。最近的研究证明了从高光谱植被指数中检索由特定谱带的反射组成的叶绿素含量的可行性。本文的植被指数集分为三类(归一化差异植被指数(NDVI),改良简单比(MSR)指数和改良叶绿素吸收比指数(MCARI,TCARI)和综合形式(MCARI / OSAVI和使用PROSPECT和SAIL模型对TCARI / OSAVI)进行了测试,以探索它们在估计叶绿素含量方面的潜力。还使用了不同的波段组合来得出修改后的植被指数。在敏感性研究中,四个新形成的指标(MSR [705,750],MCARI [705,750],TCARI / OSAVI [705,750]和MCARI / OSAVI [705,750])被证明具有较好的线性和叶绿素含量,并具有抗叶面积指数(考虑到在670nm处快速饱和且叶绿素含量相对较低的影响,导致LAI)变化。还使用冬小麦生长期间的地面真实数据(叶绿素含量和反射率数据)在冠层规模上进行了验证研究。结果表明,综合指数TCARI / OSAVI [705,750]和MCARI / OSAVI [705,750]最适合叶绿素估计,相关系数R po分别为0.8808和0.9406,这是因为阴影,土壤反射率和非光合作用等更多干扰因素考虑材料。小麦发育阶段获得的植被指数与Hyperion数据之间的高度相关性(TCARI / OSAVI [705,750]和MCARI / OSAVI [705,750]的R po分别为0.6798和0.7618)表明可以使用这两个综合指数在实践中估计不同类型玉米的叶绿素。

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