Spelling suggestions: "subject:"agriculture - remote sensing"" "subject:"agriculture - demote sensing""
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INFLUENCE OF COARSE FRAGMENTS AND SUN ANGLE ALTITUDE ON THE REFLECTANCE OF SOILS.Abdi, Omar Mohamed, 1957- January 1986 (has links)
No description available.
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Principal Component Analysis and Spatial Regression Techniques to Model and Map Corn and Soybean Yield Variability with Radiometrically Calibrated Multitemporal and Multispectral Digital Aerial ImageryPritsolas, Joshua 08 June 2018 (has links)
<p> Remotely sensed data has been discussed as a possible alternative to the standard precision agriculture systems of combine-mounted yield monitors because of the burden, cost, end of season use, and inherent errors that are associated with these systems. Due to the potential quantitative use of remote sensing in precision agriculture, the primary focus of this study was to test the relationship between multitemporal/multispectral digital aerial imagery with corn (<i>Zea mays</i> L.) and soybean (<i>Glycine max </i> L.) yield. Digital aerial imagery was gathered on nine different dates throughout the 2015 growing season from two fields (one corn and one soybean) located on a farm in Story County, Iowa. To begin assessing this relationship, the digital aerial imagery was radiometrically calibrated. The radiometric calibration process used calibration tarps with known reflectance values (3, 6, 12, 22, 44, and 56 percent). The calibrated imagery was then used to calculate and output 12 different vegetation indices (VIs) and three calibrated wavebands (red, green, and near-infrared). </p><p> Next, the calibrated VIs and wavebands from the 2015 growing season were used to examine their relationship with the corn and soybean yield data collected from a combine yield monitor system. This relationship between multitemporal/multispectral digital aerial imagery with corn and soybean yield was investigated with principal component analysis and spatial modeling techniques. The results from spatial modeling of corn revealed that VIs utilizing the green waveband performed strongly. VIs such as, chlorophyll index-green, chlorophyll vegetation index, and green normalized difference vegetation index accounted for 81.6, 83.0, and 82.4 percent of the yield variability, respectively. Strong modeling relationships were also found in soybean using just the near-infrared waveband or VIs that utilized the near-infrared waveband. The near-infrared waveband captured 89.1 percent of the yield variation, while VIs such as, difference vegetation index, triangular vegetation index, soil adjusted vegetation index, and optimized soil adjusted vegetation index accounted for 87.3, 87.3, 83.9, and 83.8 percent of soybean yield variability, respectively. The temporal assessment of the remotely sensed data also identified certain VIs and wavebands that captured pivotal growth stages for detecting potential yield limiting factors. These specific growth stages varied for different VIs and wavebands for both corn and soybean. Overall, the results from this study identified that mid-to-late vegetative growth stages (prior to tasseling) and late-season reproductive stages were important parameters that provided unique information in the modeling of corn yield variability, while the later reproductive stages (just prior to senescence) were essential to capturing soybean yield variability. </p><p> Lastly, this research produced corn and soybean yield maps from the digital aerial imagery. The digital aerial imagery yield maps were then compared with maps that used kriging interpolation of the combine yield monitor data gathered from the same corn and soybean fields. The results indicated that both corn and soybean yield maps produced with multitemporal/multispectral digital aerial imagery were comparable with a standard method of kriging interpolation from yield monitor data.</p><p>
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Remote sensing of crop biophysical parameters for site-specific agricultureRabe, Nicole J., University of Lethbridge. Faculty of Arts and Science January 2003 (has links)
Support for sustainable agriculture by farmers and consumers is increasing as environmental and socio-economic issues rise due to more intensive farm practices. Site-specific crop management is an important component of sutainable agriculture, within which remote sensing can play an integral role. Field and image data were acquired over a farm in Saskatchewan as part of a national research project to demonstrate the advantages of site-specific agriculture for farmers. This research involved the estimation of crop biophysical parameters from airborne hyperspectral imagery using Spectral Mixture Analysis (SMA), a relatively new sub-pixel scale image processing method that derives the fraction of sunlit canopy, soil and shadow that is contributing to a pixel's relectance. SMA of three crop types (peas, wheat and canola) performed slightly better than conventional vegetation indices in predicting leaf area index (LAI) and biomass using Probe-1 imagery acquired early in the growing season. Other potential advantages for SMA were also indentified, and it was conclude that future research is warranted to assess the full potential of SMA in a multi-temporal sense throughout the growing season. / xiv, 194 leaves : ill. (some col.) ; 29 cm.
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Temporal and spatial relationships of canopy spectral measurementsBamatraf, Abdurhman Mohamed. January 1986 (has links)
Ground-based, remotely sensed reflectance and temperature data were collected over differentially irrigated, developing cotton and sorghum canopies in order to investigate interrelations of these parameters; to monitor their temporal changes ; to understand their spatial structure ; and to estimate crop coefficient (KO from canopy reflectance. Spectral reflectance and derived vegetation indices showed ability to significantly discriminate among differential irrigation levels of sorghum canopies, starting the fourth week of growth. All vegetation indices increased as a result of crop development, with the perpendicular vegetation index (PVI ) demonstrating the greatest potential for assessing water stress conditions, whereas, soil indices behaved independently of crop development and water stress. Canopy temperature and derived water stress indices, on the other hand, were in high concordance and were able to detect crop water stress with variable degrees of sensitivity. Experimental variograms revealed that cotton reflectance and temperature were not spatially dependent when all water treatments were included. For the moisture stress treatments, only canopy temperature exhibited spatial dependence early in the period of stress. Sorghum canopy reflectance and temperature demonstrated some spatial structure; however, a drift was suspected due to regularity in the data spatial distribution. Normalized difference (ND), normalized perpendicular vegetation index (NPVI) and normalized green vegetation index (NGVI), for fifty days covering the period from planting to heading, were fitted with a complementary error function equation with minor adjustment. Both NPVI and NGVI displayed a 1:1 relation with interpolated tabular values of basal Kc, whereas ND deviated from the 1:1 relation for the period beyond 30 days after planting. The model was also found to be valid for estimating K(c) for moderately deficit irrigation conditions.
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Agricultural vulnerability to drought in southern Alberta : a quantitative assessmentRen, Xiaomeng, University of Lethbridge. Faculty of Arts and Science January 2007 (has links)
Agricultural vulnerability is generally referred to as the degree to which agricultural systems are likely to experience harm due to a stress. In this study, an existing analytical method to quantify vulnerability was adopted to assess the magnitude as well as the spatial pattern of agricultural vulnerability to varying drought conditions in Southern Alberta. Based on the farm reported data and remote sensing imagery, two empirical approaches were developed to implement vulnerability assessment in Southern Alberta at the quarter-section and 30 meter by 30 meter pixel levels. Cereal crop yield and the Standardized Precipitation Index (SPI) were specified as the agricultural wellbeing and stress pair in the study. Remote sensing data were used to generate cereal crop yield estimations, which were then implemented in vulnerability quantification. The utility of the remote sensing data source for vulnerability assessment were proved. The spatial pattern of agricultural vulnerability to different severity and duration of drought were mapped. / xii, 127 leaves : ill. ; 29 cm.
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Development of remote sensing techniques for the implementation of site-specific herbicide managementEddy, Peter R., University of Lethbridge. Faculty of Arts and Science January 2007 (has links)
Selective application of herbicide in agricultural cropping systems provides both economic and environmental benefits. Implementation of this technology requires knowledge of the location and density of weed species within a crop. In this study, two image classification techniques (Artificial Neural Networks (ANNs) and Maximum Likelihood Classification (MLC)) are compared for accuracy in weed/crop species discrimination. In the summer of 2005, high spatial resolution (1.25mm) ground-based hyperspectral image data were acquired over field plots of three crop species seeded with two weed species. Image data were segmented using a threshold technique to identify vegetation for classification. The ANNs consistently outperformed MLC in single-date and multitemporal classification accuracy. With advancements in imaging technology and computer processing speed, these network models would constitute an option for real-time detection and mapping of weeds for the implementation of site-specific herbicide management. / xii, 106 leaves : ill. (col. ill.) ; 29 cm
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Applications of remote sensing in sugarcane agriculture at Umfolozi, South Africa.Gers, Craig Jonathan. January 2004 (has links)
The aim of this study was to evaluate potential applications of remote sensing technology in sugarcane agriculture, using the Umfolozi Mill Supply Area as a case study. Several objectives included the
evaluation of remotely sensed satellite information for the following applications: mapping of
sugarcane areas, identifying sugarcane characteristics including phenology, cultivar and yield,
monitoring the sugarcane inventory throughout the milling season and yield prediction.
Four Landsat 7 ETM+ (Enhanced Thematic Mapper Plus) images were obtained for the 2001-2002
season. Mapping of sugarcane areas was conducted by .means of unsupervised hierarchical
classifications, on three relatively cloud free, Tasseled Cap transformed images. The Brightness,
Greenness and Wetness bands for each Tasseled Cap transformed image were combined into a
single image for this classification.
The investigation into relationships between satellite spectral reflectances and phenology, cultivar
and yield involved the cosine of the solar zenith angle (COST) method for atmospheric correction
of all four Landsat 7 ETM+ images. Detailed agronomic records and field boundary information,
for a selection of sugarcane fields, were used to extract the at-satellite reflectances on a pixel basis .
These values were stored in a relational database for analysis.
Monitoring of the sugarcane inventory throughout the milling season was conducted by means of
unsupervised classifications on the Brightness, Greenness and Wetness bands for each of the four
time-step Tasseled Cap transformed images. Accurate field boundary information for all sugarcane
fields was used to mask out non-sugarcane areas. The remaining sugarcane areas in each time-step
image were then classified by means of unsupervised classification techniques to ascertain the relative
proportions of the different land covers, namely: harvested immature and mature sugarcane by visual
interpretation of the classification results.
The yield forecasting approach utilized a time-step approach in which Vegetation Indices (VIs) were
accumulated over different periods or time frames and compared with annual production. VIs were
derived from both the National Oceanic and Atmospheric Administration (NOAA) and Landsat 7
ETM+ sensors. Different periods or times were used for each sensor.
The results for the mapping of sugarcane areas showed that the mapping accuracies for the large scale
grower fields was higher than for the small-scale growers. In both instances, the level of
accuracy was below that of the recommended sugar industry mapping standard, namely 1% of the
true area. Despite the low mapping accuracies, much benefit could be realized from the map product
in terms of identifying new areas of sugarcane expansion. These would require detailed accurate
mapping. The results for monitoring of the sugarcane inventory throughout showed that remote sensing, in
conjunction with detailed field information, was able to accurately measure the areas harvested in
each time-step image. These results may have highly beneficial applications in sugarcane supply
management and monitoring.
The results for time-step approach to yield forecasting yielded poor results in general. The Landsat
derived VIs showed limited potential; however, the data were only available for one season, making
it difficult to quantify the impact of climatic conditions on these results. All results for the time-step
approach using NOAA data yielded negative results.
The results for the investigation into relationships between satellite spectral reflectances and
phenology, cultivar and yield showed that that different phenological stages of sugarcane growth
were identifiable from Landsat 7 ETM+ at-satellite reflectances. The sugarcane yields and cultivar
types were not correlated with the at-satellite reflectances. These results combined with the sugarcane
area monitoring may provide valuable information in the management and monitoring of sugarcane
supply. / Thesis (M.Sc.)-University of KwaZulu-Natal, Pietermaritzburg, 2004.
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Application of machine learning methods and airborne hyperspectral remote sensing for crop yield estimationUno, Yoji January 2003 (has links)
This study investigated the potential of developing in-season crop yield forecasting and mapping systems based on interpretation of airborne hyperspectral remote sensing imagery by machine learning algorithms. The data used for this study was obtained over a corn (Zea mays L.) field in eastern Canada. / The experimental plots were set up at the Emile A. Lods Agronomy Research Center, Montreal, Quebec. Corn was grown under the twelve combinations of three nitrogen application rates (60, 120, and 250 kg N/ha), and four weed control strategies (Broad leaf weed, Grass weed, Broad leaf and grass weed control, and no weed control). The images of the experimental field were taken with a Compact Airborne Spectrographic Imager (CASI) at three times (June 30 for early growth stage, August 5 for tassel stage, and Aug 25 for mature stage) during the year 2000 growing season. / Two machine learning algorithms, Artificial Neural Networks (ANN) and Decision Tree (DT) were evaluated. The performance of ANNs was compared with four conventional modeling methods. For the DT algorithms, two different aspects, (i) DT as a classification method, and (ii) DT as a feature selection tool, were explored in this study.
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Soil landscape characterization of crop stubble covered fields using Ikonos high resolution panchromatic images /Pelcat, Yann S. January 2006 (has links) (PDF)
Thesis (M.Sc.)--University of Manitoba, 2006. / A thesis submitted to the Faculty of Graduate Studies in partial fulfillment of the requirements for the degree of Master of Science, Department of Soil Science. Includes bibliographical references.
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The use of Landsat ETM imagery as a suitable data capture source for alien acacia species for the WFW programmeCobbing, Benedict Louis January 2007 (has links)
Geographic Information System technology today allows for the rapid analysis of vast amounts of spatial and non-spatial data. The power of a GIS can only be effected with the rapid collection of accurate input data. This is particularly true in the case of the South African National Working for Water (WFW) Programme where large volumes of spatial data on alien vegetation infestations are captured throughout the country. Alien vegetation clearing contracts cannot be generated, for WFW, without this data, so that the accurate capture of such data is crucial to the success of the programme. Mapping Invasive Alien Plant (IAP) data within WFW is a perennial problem (Coetzee, pers com, 2002), because not enough mapping is being done to meet the annual requirements of the programme in the various provinces. This is re-iterated by Richardson, 2004, who states that there is a shortage of accurate data on IAP abundance in South Africa. Therefore there is a need to investigate alternate methods of data capture; such as remote sensing, whilst working within the existing WFW data capture standards. The aim of this research was to investigate the use of Landsat ETM imagery as a data capture source for mapping alien vegetation for the WFW Programme in terms of their approved mapping methods, for both automated and manual classification techniques. The automated and manual classification results were compared to control data captured by differential Global Positioning Systems (DGPS). The research tested the various methods of data capture using Landsat ETM images over a range of study sites of varying complexity: a simple grassland area, a medium complexity grassy fynbos site and a complicated indigenous forest site. An important component of the research was to develop a mapping (classification) Ranking System based upon variables identified by WFW as fundamental in data capture decision making: spatial and positional accuracy, time constraints and cost constraints for three typical alien invaded areas. The mapping Ranking System compared the results of the various mapping methods for each factor for the study sites against each other. This provided an indication of which mapping method is the most efficient or suitable for a particular area.
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