Using aerial hyperspectral remote sensing imagery to estimate corn plant stand density

被引:0
|
作者
Thorp, K. R. [1 ]
Steward, B. L. [2 ]
Kaleita, A. L. [2 ]
Batchelor, W. D. [3 ]
机构
[1] USDA ARS USALARC, Maricopa, AZ 85238 USA
[2] Iowa State Univ, Dept Agr & Biosyst Engn, Ames, IA USA
[3] Mississippi State Univ, Dept Agr & Biol Engn, Mississippi State, MS 39762 USA
关键词
corn; hyperspectral; machine vision; population; remote sensing; spatial variability; stand density;
D O I
暂无
中图分类号
S2 [农业工程];
学科分类号
0828 ;
摘要
Since corn plant stand density is important for optimizing crop yield, several researchers have recently developed ground-based systems for automatic measurement of this crop growth parameter. Our objective was to use data from such a system to assess the potential for estimation of corn plant stand density using remote sensing images. Aerial hyperspectral remote sensing imagery was collected on three dates over three plots of corn in central Iowa during the 2004 growing season. The imagery had a spatial resolution of I m and a spectral resolution of 3 nm between 498 mn and 855 nm. A machine vision system for early-season measurement of corn plant stand density was also used to map every row of corn within the three plots, and a complete inventory of corn plants was generated as a rich ground reference dataset. A principal component regression analysis was used to assess relationships between plant stand density measurements and principal components of hyperspectral reflectance for each plot, on each image collection date, and at three different spatial resolutions (2, 6, and 10 m). The maximum R-2 for regressions was 0.79. Estimates of corn plant stand density were best when using imagery collected at the later vegetative and early reproductive corn growth stages. Quantization effects due to row width complicated corn plant stand density estimates at 2 m spatial resolution, and better estimations were typically seen at resolutions of 6 m and 10 m. Among the different cases of plot, image date, and spatial resolution, the principal components of reflectance most highly correlated with plant stand density were able to be classified into four distinct types, denoted as types A B, C, and D. Type A principal components contrasted all available visible red wavelengths with all available near-infiared wavelengths. Type B principal components contrasted green wavelengths (531 to 552 mn) plus shorter wave near-infrared (759 mn) with red wavelengths (675 to 693 nm) plus longer wave near-infrared (852 mn). Type C principal components summed green wavelengths (528 to 546 mn) and near-infrared wavelengths (717 to 855 nm). Type D principal components contrasted blue/green wavelengths (498 to 507 mn) with the red edge (717 mn). Remote sensing can be best used to estimate corn plant stand density at mid-season as long as plant stand variability exists and variability due to other factors is minimal.
引用
收藏
页码:311 / 320
页数:10
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