首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >A comparison of empirical and neural network approaches for estimating corn and soybean leaf area index from Landsat ETM+ imagery
【24h】

A comparison of empirical and neural network approaches for estimating corn and soybean leaf area index from Landsat ETM+ imagery

机译:利用Landsat ETM +影像估算玉米和大豆叶面积指数的经验和神经网络方法的比较

获取原文
获取原文并翻译 | 示例
       

摘要

Plant foliage density expressed as leaf area index (LAI) is used in many ecological, meteorological, and agronomic models, and as a means of quantifying crop spatial variability for precision farming. LAI retrieval using spectral vegetation indices (SVI) from optical remotely sensed data usually requires site-specific calibration values from the surface or the use of within-scene image information without surface calibrations to invert radiative transfer models. An evaluation of LAI retrieval methods was conducted using (1) empirical methods employing the normalized difference vegetation index (NDVI) and a new SVI that uses green wavelength reflectance, (2) a scaled NDVI approach that uses no calibration measurements, and (3) a hybrid approach that uses a neural network (NN) and a radiative transfer model without site-specific calibration measurements. While research has shown that under a variety of conditions NDVI is not optimal for LAI retrieval, its continued use for remote sensing applications and in analysis seeking to develop improved parameter retrieval algorithms based on NDVI suggests its value as a "benchmark" or standard against which other methods can be compared. Landsat-7 ETM+ data for July 1 and July 8 from the Soil Moisture Experiment 2002 (SMEX02) field campaign in the Walnut Creek watershed south of Ames, IA, were used for the analysis. Sun photometer data collected from a site within the watershed were used to atmospherically correct the imagery to surface reflectance. LAI validation measurements of corn and soybeans were collected close to the dates of the Landsat-7 overpasses. Comparable results were obtained with the empirical SVI methods and the scaled SVI method within each date. The hybrid method, although promising, did not account for as much of the variability as the SVI methods. Higher atmospheric optical depths for July 8 leading to surface reflectance errors are believed to have resulted in overall poorer performance for this date. Use of SVIs employing green wavelengths, improved method for the definition of image minimum and maximum clusters used by the scaled NDVI method, and further development of a soil reflectance index used by the hybrid NN approach are warranted. More importantly, the results demonstrate that reasonable LAI estimates are possible using optical remote sensing methods without in situ, site-specific calibration measurements.
机译:以叶面积指数(LAI)表示的植物叶子密度已在许多生态,气象和农艺模型中使用,并作为量化作物精确农耕空间变异性的手段。使用来自光学遥感数据的光谱植被指数(SVI)进行的LAI检索通常需要从表面进行特定于站点的校准值,或者需要使用场景内图像信息而无需进行表面校准来转换辐射传输模型。使用(1)使用归一化植被指数(NDVI)和使用绿色波长反射率的新SVI的经验方法进行LAI检索方法的评估,(2)不使用校准测量的缩放NDVI方法,和(3)一种混合方法,使用神经网络(NN)和辐射传递模型,而无需进行特定于站点的校准测量。虽然研究表明NDVI在各种条件下都不是LAI检索的最佳选择,但它在遥感应用中的持续使用以及在寻求开发基于NDVI的改进的参数检索算法的分析中都表明,NDVI具有“基准”或标准的价值其他方法可以比较。分析使用了7月1日和7月8日在爱荷华州艾姆斯以南的核桃溪流域进行的2002年土壤水分实验(SMEX02)野外活动的Landsat-7 ETM +数据。从分水岭内某个地点收集的太阳光度计数据用于对图像进行大气校正以达到表面反射率。在接近Landsat-7立交桥的日期收集了玉米和大豆的LAI验证测量值。在每个日期内,使用经验SVI方法和规模化SVI方法均获得了可比的结果。混合方法尽管很有前途,但并没有像SVI方法那样说明可变性。据信,7月8日更高的大气光学深度会导致表面反射率误差,从而导致该日期的整体效果较差。确保使用采用绿色波长的SVI,改进的方法来定义比例缩放NDVI方法使用的图像最小和最大簇,以及进一步开发混合NN方法使用的土壤反射率指数。更重要的是,这些结果表明,使用光学遥感方法而无需就地进行特定于现场的校准测量,就可以进行合理的LAI估算。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号