Ejemplares similares: Pixels to pasture: Using machine learning and multispectral remote sensing to predict biomass and nutrient quality in tropical grasslands
- Early detection of plant virus infection using multispectral imaging and machine learning
- Comparison of the use of multispectral orthomosaics and RGB panoramic images for plant cover calculation in Urochloa hybrids
- An unmanned aerial vehicle (UAV) technology for estimating leaf N content in rice crops, from multispectral imagery
- Characterization of multispectral aerial images of sugarcane
- From pixels to plant health: Accurate detection of banana Xanthomonas wilt in complex African landscapes using high-resolution UAV images and deep learning
- Use of high-altitude multispectral drone imaging for efficient NDVI and vegetation cover assessment in silvopastoral monitoring
Autor: Zwick, Mike
Autor: Cardoso, Juan Andres
- Use of high-altitude multispectral drone imaging for efficient NDVI and vegetation cover assessment in silvopastoral monitoring
- Results of using machine learning and a proximal canopy reflectance sensor to predict biomass and nutritional quality in tropical forages (Urochloa humidicola) in three different locations in Colombia
- Near-infrared spectroscopy and wet chemistry dataset for forage nutritional quality assessment in Urochloa humidicola
- Improving seed germination in forage legumes for propagation and agronomic trials
- Root phenotyping in tropical forage grasses and potential for soil organic carbon accumulation
- Exploring the role of deep rooting ability on soil carbon accumulation in pasture-rice rotation systems in a Vertisol