DISCRIMINANT ANALYSIS OF HYPERSPECTRAL DATA FOR ASSESSING WATER AND NITROGEN STRESSES IN CORN
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The development and implementation of both economically and environmentally sustainable precision crop
management systems can be greatly enhanced through the use of remote sensing. In this study, the potential of
narrow-waveband hyperspectral observations in the discrimination of nitrogen and water stresses in corn (Zea mays L.) was
investigated. A field experiment was conducted in the summer of 2002 at the Macdonald Research Farm, McGill University,
Ste-Anne-de-Bellevue, Quebec, Canada. Corn was grown in forty 9.0 × 10.0 m test plots laid out in a split-plot design with
irrigation (non-irrigated, irrigated) as the main treatment and nitrogen fertilizer application rate (50, 100, 150, 200, and
250 kg ha-1) as the sub-treatment. Hyperspectral measurements in 2151 wavebands (350 to 2500 nm) were made with a field
spectroradiometer during the entire growing season. Using a stepwise procedure, the most effective wavebands capable of
discriminating treatment effects were selected. By applying a discrimination procedure with a well-chosen subset of the
selected wavebands, treatments were correctly classified with more than 95% accuracy. Specific narrow wavebands, from
different portions of the spectrum, allowed the discrimination of plots differing in their irrigation and nitrogen treatments.
This study supports past work suggesting that greater spectral resolution should lead to more consistent relationships between
the spectral data and different crop status indicators.