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Plot 2
4, CONCLUSIONS AND RECOMMENDATIONS
The study showed that the spatial variations in weed density
within a soybean field could be mapped using CIR digital aerial
images in the earlier stages of crop growth. The correlation
coefficient between image data and weed data varied with
resolution. The maximum correlation coefficients (greater than
0.85) between weed map data and remote sensing image data
were found at 4.5-m/pixel resolution. Further studies are required
to investigate the effect of other field specific factors such as the
relative variability in weed density, weed size etc. and the sensor
specific factors such as spatial and spectral resolution on the
optimal spatial resolution for weed mapping.
The best time for weed mapping should also be selected based on
the critical time for weed control. A high spatial and spectral
resolution will be help to identify weeds from soil background
and crop, at early stages of crop growth.
This work also showed that selective and variable-rate herbicide
application methods had advantages over the uniform application
method. The variable rate method had greater advantages when
the weed density variation was high.
5. ACKNOWLEDGMENTS
This research has been supported by the Illinois Council of Food
and Agricultural Research (C-FAR), Project Number 971-124-3.
Special thanks to several of the author's former and current
graduate students: B. Steward, L. Tang, S. Bajwa, and
undergraduate student workers: M. Porter, A. Gemeny, etc. They
participated in the system design, retrofitting works and field
experiments.
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