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Temporal and Spatial Relationships between Within-Field Yield Variability in Cotton and High-Spatial Hyperspectral Remote Sensing Imagery

机译:棉花田间产量变异与高空间高光谱遥感影像之间的时空关系

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摘要

Traditional remote sensing methods for yield estimation rely on broadband vegetation indices, such as the Normalized Difference Vegetation Index, NDVI. Despite demonstrated relationships between such traditional indices and yield, NDVI saturates at larger leaf area index (LAI) values, and it is affected by soil background. We present results obtained with several new narrow-band hyperspectral indices calculated from the Airborne Visible and Near Infrared (AVNIR) hyperspectral sensor flown over a cotton (Gossypium hirsutum L.) field in California (USA) collected over an entire growing season at 1-m spatial resolution. Within-field variability of yield monitor spatial data collected during harvest was correlated with hyperspectral indices related to crop growth and canopy structure, chlorophyll concentration, and water content. The time-series of indices calculated from the imagery were assessed to understand within-field yield variability in cotton at different growth stages. A K means clustering method was used to perform field segmentation on hyperspectral indices in classes of low, medium, and high yield, and confusion matrices were used to calculate the kappa () coefficient and overall accuracy. Structural indices related to LAI [Renormalized Difference Vegetation Index (RDVI), Modified Triangular Vegetation Index (MTVI), and Optimized Soil-Adjusted Vegetation Index (OSAVI)] obtained the best relationships with yield and field segmentation at early growth stages. Hyperspectral indices related to crop physiological status [Modified Chlorophyll Absorption Index (MCARI) and Transformed Chlorophyll Absorption Index (TCARI)] were superior at later growth stages, close to harvest. From confusion matrices and class analyses, the overall accuracy (and kappa) of RDVI at early stages was 61% ( = 0.39), dropping to 39% ( = 0.08) before harvest. The MCARI chlorophyll index remained sensitive to within-field yield variability at late preharvest stage, obtaining overall accuracy of 51% ( = 0.22).
机译:用于估计产量的传统遥感方法 依赖宽带植被指数,例如归一化差异植被指数(NDVI)。尽管 这样的传统指标与产量之间存在明显关系,但NDVI在更大的 叶面积指数(LAI)值时会饱和,并且受土壤背景的影响。 我们介绍了几种新的窄带高光谱指数获得的结果,这些指数是根据空中传播的可见和近红外(sup> (AVNIR)高光谱传感器在棉花上飞行(棉质 < / sup> hirsutum L.)字段以1 m的空间分辨率收集了整个 生长季节。收获期间收集的产量监测器空间数据的田间变异性 与与作物生长和冠层结构,叶绿素浓度和含水量。对从图像中计算出的指数的 时间序列进行了评估 ,以了解棉花在不同 生长阶段的田间产量变异性。 AK表示使用聚类方法对低, 和高产量类别的高光谱指数执行 场分割,并使用混淆矩阵对 计算kappa()系数和整体精度。与LAI相关的结构性 指数[重新归一化差异植被指数(sDVI)(RDVI),改良的三角植被指数(MTVI)和优化的 土壤调整的植被指数(OSAVI)]在生长的早期阶段获得了与产量和田间分割的最佳关系 。与作物生理状态有关的高光谱指数[改良叶绿素吸收指数(MCARI)和转化叶绿素吸收指数(TCARI)]在后期生长时表现优异阶段,接近 收获。根据混淆矩阵和类别分析,早期RDVI的总体 准确度(和kappa)为61%(= 0.39),之前的 降至39%(= 0.08)收获。 MCARI叶绿素 指数对 后期收获前期的田间产量变异仍然敏感,总体准确度为51%(= 0.22)。 sup>

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  • 来源
    《Agronomy Journal》 |2005年第3期|641-653|共13页
  • 作者单位

    Cent. for Spatial Technol. and Remote Sensing (CSTARS), Dep. of Land, Air, and Water Resour. (LAWR), One Shields Ave., The Barn, Univ. of California, Davis, CA 95616-8671, USA;

    Cent. for Spatial Technol. and Remote Sensing (CSTARS), Dep. of Land, Air, and Water Resour. (LAWR), One Shields Ave., The Barn, Univ. of California, Davis, CA 95616-8671, USA;

    Cent. for Spatial Technol. and Remote Sensing (CSTARS), Dep. of Land, Air, and Water Resour. (LAWR), One Shields Ave., The Barn, Univ. of California, Davis, CA 95616-8671, USA;

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  • 入库时间 2022-08-17 23:24:39

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