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Biophysical and yield information for precision farming from near-real-time and historical Landsat TM images

机译:来自近实时和历史Landsat TM图像的精确农业的生物物理和产量信息

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摘要

The main goal of this study was to quantify within and between field variability in mapping agricultural crop types, their biophysical characteristics, and yield for precision-farming applications using near-real-time and historical (archival) Landsat Thematic Mapper (TM) images. Data for six crops (wheat, barley, chickpea, lentil, vetch and cumin) were gathered from a representative benchmark study area in the semi-arid environment of the world. Spectro-biophysical and yield models were established for each crop using a near-realtime TM image of 6 April 1998 acquired to coincide with an extensive ground data collection campaign. The models developed using this near-real-time acquisition were then used to extrapolate and quantify characteristics in the historical Landsat TM images of 5 April 1986 and 4 May 1988 acquired for the same area with limited ground data, thus adding scientific and commercial value to archival TM images. A farm-by-farm (or pixel-by-pixel) within and between field variability in agricultural land cover, biophysical quantities [e.g. biomass and Leaf Area Index (LAI)] and yield was established and illustrated. For the near-realtime image of 1998: (a) quantitative biophysical characteristics such as LAI and biomass were mapped at 81% overall accuracy (K_(hat) = 0.76) or higher; (b) within field variability (commission errors) was mapped with an accuracy between 74-100%; and (c) between field variability (omission errors) was mapped with an accuracy between 76-100%. Temporal variability in biomass and LAI were mapped for the study area and highlighted for individual farms. Significant relationships existed between grain yields measured using field-based combine-mounted sensors and Landsat TM derived indices. The results demonstrate the ability of using near-real-time and historical Landsat TM images for obtaining quantitative biophysical and yield information that highlight within and between field variability, which is of critical importance in precision-farming applications.
机译:这项研究的主要目标是,使用近实时和历史(档案)Landsat Thematic Mapper(TM)图像,量化田间变异性在绘制农作物类型,其生物物理特征和产量方面,以进行精确农业应用。六种作物(小麦,大麦,鹰嘴豆,小扁豆,v子和小茴香)的数据是从世界半干旱环境中的代表性基准研究区域收集的。使用与广泛的地面数据收集活动相一致的1998年4月6日获得的近实时TM图像,为每种作物建立了光谱生物物理和产量模型。然后使用通过这种近实时采集开发的模型来推断和量化1986年4月5日和1988年5月4日针对同一地区的有限地面数据采集的历史Landsat TM图像中的特征,从而为该地区增加了科学和商业价值。档案TM图片。在农业用地覆盖范围内的田间变异性,生物物理量[例如,生物量和叶面积指数(LAI)]和产量得到建立和说明。对于1998年的近实时图像:(a)定量的生物物理特征(如LAI和生物量)以81%的总精度(K_(hat)= 0.76)或更高的精度进行绘制; (b)以74-100%的准确度绘制现场可变性(调试误差); (c)场之间的变异性(遗漏误差)的准确度在76%至100%之间。针对研究区域绘制了生物量和LAI的时间变异性,并针对单个农场进行了突出显示。使用基于现场的联合安装传感器测量的谷物产量与Landsat TM得出的指数之间存在显着的关系。结果证明了使用近实时和历史Landsat TM图像获取定量生物物理和产量信息的能力,这些信息突出了田间变异性及其之间的差异,这在精确农业应用中至关重要。

著录项

  • 来源
    《International journal of remote sensing》 |2003年第14期|p.2879-2904|共26页
  • 作者

    P. S. THENKABAIL;

  • 作者单位

    Center for Earth Observation (CEO), Department of Geology and Geophysics, Kline Geology Laboratory, PO Box 208109, 210 Whitney Avenue, Yale University, New Haven, CT 06520-8109, USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 遥感技术;
  • 关键词

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