Publication | Open Access
Estimating chlorophyll with thermal and broadband multispectral high resolution imagery from an unmanned aerial system using relevance vector machines for precision agriculture
169
Citations
88
References
2015
Year
Precision AgricultureEnvironmental MonitoringUnmanned Aerial SystemEngineeringLand UseMultispectral ImagingAgricultural EconomicsTerrestrial SensingRelevance Vector MachinesEarth ScienceRelevance Vector MachinePrecision FarmingUnmanned Aerial SystemsHyperspectral ImagingAgricultural ModelingRemote SensingOptical Remote SensingHigh Spatial ResolutionCross Validation
Precision agriculture requires high-resolution information to enable greater precision in the management of inputs to production. Actionable information about crop and field status must be acquired at high spatial resolution and at a temporal frequency appropriate for timely responses. In this study, high spatial resolution imagery was obtained through the use of a small, unmanned aerial system called AggieAirTM. Simultaneously with the AggieAir flights, intensive ground sampling for plant chlorophyll was conducted at precisely determined locations. This study reports the application of a relevance vector machine coupled with cross validation and backward elimination to a dataset composed of reflectance from high-resolution multi-spectral imagery (VIS–NIR), thermal infrared imagery, and vegetative indices, in conjunction with in situ SPAD measurements from which chlorophyll concentrations were derived, to estimate chlorophyll concentration from remotely sensed data at 15-cm resolution. The results indicate that a relevance vector machine with a thin plate spline kernel type and kernel width of 5.4, having LAI, NDVI, thermal and red bands as the selected set of inputs, can be used to spatially estimate chlorophyll concentration with a root-mean-squared-error of 5.31 μg cm−2, efficiency of 0.76, and 9 relevance vectors.
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