Reddy R. Pullanagari
Massey University
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Publication
Featured researches published by Reddy R. Pullanagari.
Remote Sensing for Agriculture, Ecosystems, and Hydrology XVIII | 2016
I. J. Yule; Reddy R. Pullanagari; Gábor Kereszturi
Airborne and satellite hyperspectral remote sensing is a key technology to observe finite change in ecosystems and environments. The role of such sensors will improve our ability to monitor and mitigate natural and agricultural environments on a much larger spatial scale than can be achieved using field measurements such as soil coring or proximal sensors to estimate the chemistry of vegetation. Hyperspectral sensors for commentarial and scientific activities are increasingly available and cost effective, providing a great opportunity to measure and detect changes in the environment and ecosystem. This can be used to extract critical information to develop more advanced management practices. In this research, we provide an overview of the data acquisition, processing and analysis of airborne, full-spectrum hyperspectral imagery from a small-scale aerial mapping project in hill-country farms in New Zealand, using an AISA Fenix sensor (Specim, Finland). The imagery has been radiometrically and atmospherically corrected, georectified and mosaicked. The hyperspectral data cube was then spectrally and spatially smoothed using Savitzky-Golay and median filter, respectively. The mosaicked imagery used to calculate bio-chemical properties of surface vegetation, such as pasture. Ground samples (n = 200) were collected a few days after the over-flight are used to develop a calibration model using partial least squares regression method. In-leaf nitrogen, potassium and phosphorous concentration were calculated using the reflectance values from the airborne hyperspectral imagery. In total, three surveys of an example property have been acquired that show changes in the pattern of availability of a major element in vegetation canopy, in this case nitrogen.
Archive | 2012
I. J. Yule; Reddy R. Pullanagari
Optical sensors offer the opportunity to assess the amount and quality of pasture and crops growing in the field. This is of great importance to farmers as it will allow them to; allocate feed for animals much more accurately than previously possible, and also, design fertiliser and chemical treatments for crops based on the actual crop need calculated through observing the plant. Both of these applications are important as agriculture attempts to satisfy the twin demands for increased production and improved sustainability, requiring efficient resource use. Present methods often involve destructive sampling and removing samples to a laboratory, results often take a number of weeks to produce.
Remote Sensing for Agriculture, Ecosystems, and Hydrology XVII | 2015
Reddy R. Pullanagari; Gábor Kereszturi; I. J. Yule; M. E. Irwin
Pasture quality is a critical determinant which influences animal performance (live weight gain, milk and meat production) and animal health. Assessment of pasture quality is therefore required to assist farmers with grazing planning and management, benchmarking between seasons and years. Traditionally, pasture quality is determined by field sampling which is laborious, expensive and time consuming, and the information is not available in real-time. Hyperspectral remote sensing has potential to accurately quantify biochemical composition of pasture over wide areas in great spatial detail. In this study an airborne imaging spectrometer (AisaFENIX, Specim) was used with a spectral range of 380-2500 nm with 448 spectral bands. A case study of a 600 ha hill country farm in New Zealand is used to illustrate the use of the system. Radiometric and atmospheric corrections, along with automatized georectification of the imagery using Digital Elevation Model (DEM), were applied to the raw images to convert into geocoded reflectance images. Then a multivariate statistical method, partial least squares (PLS), was applied to estimate pasture quality such as crude protein (CP) and metabolisable energy (ME) from canopy reflectance. The results from this study revealed that estimates of CP and ME had a R2 of 0.77 and 0.79, and RMSECV of 2.97 and 0.81 respectively. By utilizing these regression models, spatial maps were created over the imaged area. These pasture quality maps can be used for adopting precision agriculture practices which improves farm profitability and environmental sustainability.
Precision Agriculture | 2012
Reddy R. Pullanagari; I. J. Yule; M. P. Tuohy; M. J. Hedley; R. A. Dynes; W. M. King
Meat Science | 2015
Reddy R. Pullanagari; I. J. Yule; M. Agnew
Isprs Journal of Photogrammetry and Remote Sensing | 2016
Reddy R. Pullanagari; Gábor Kereszturi; I. J. Yule
Grass and Forage Science | 2013
Reddy R. Pullanagari; I. J. Yule; M. P. Tuohy; M. J. Hedley; R. A. Dynes; W. M. King
Precision Agriculture | 2012
Reddy R. Pullanagari; I. J. Yule; M. J. Hedley; M. P. Tuohy; R. A. Dynes; W. M. King
International Journal on Smart Sensing and Intelligent Systems | 2011
Reddy R. Pullanagari; I. J. Yule; W. M. King; D. Dalley; R. A. Dynes
European Journal of Soil Science | 2014
I. Kim; Reddy R. Pullanagari; M. Deurer; Ranvir Singh; Keun-Young Huh; Brent Clothier