Filtros
Filtrar por:
Tipo de publicación
- Artículo (1)
- Objeto de congreso (1)
Autores
- Berhanu Tadesse Ertiro (1)
- David Hodson (1)
- Francelino Rodrigues (1)
- Gerald Blasch (1)
Años de Publicación
Editores
Repositorios Orígen
Tipos de Acceso
- oa:openAccess (2)
Idiomas
- eng (2)
Materias
- CIENCIAS AGROPECUARIAS Y BIOTECNOLOGÍA (2)
- BREEDING (1)
- Disease Detection Methods (1)
- Early Growth Stages (1)
- HIGH-THROUGHPUT PHENOTYPING (1)
Selecciona los temas de tu interés y recibe en tu correo las publicaciones más actuales
2 resultados, página 1 de 1
Stage-gate advancement and testing strategies for Product Development at CIMMYT
Berhanu Tadesse Ertiro (2022, [Objeto de congreso])
CIENCIAS AGROPECUARIAS Y BIOTECNOLOGÍA STAGES BREEDING MAIZE TESTING
Gerald Blasch David Hodson Francelino Rodrigues (2023, [Artículo])
Very high (spatial and temporal) resolution satellite (VHRS) and high-resolution unmanned aerial vehicle (UAV) imagery provides the opportunity to develop new crop disease detection methods at early growth stages with utility for early warning systems. The capability of multispectral UAV, SkySat and Pleiades imagery as a high throughput phenotyping (HTP) and rapid disease detection tool for wheat rusts is assessed. In a randomized trial with and without fungicide control, six bread wheat varieties with differing rust resistance were monitored using UAV and VHRS. In total, 18 spectral features served as predictors for stem and yellow rust disease progression and associated yield loss. Several spectral features demonstrated strong predictive power for the detection of combined wheat rust diseases and the estimation of varieties’ response to disease stress and grain yield. Visible spectral (VIS) bands (Green, Red) were more useful at booting, shifting to VIS–NIR (near-infrared) vegetation indices (e.g., NDVI, RVI) at heading. The top-performing spectral features for disease progression and grain yield were the Red band and UAV-derived RVI and NDVI. Our findings provide valuable insight into the upscaling capability of multispectral sensors for disease detection, demonstrating the possibility of upscaling disease detection from plot to regional scales at early growth stages.
Very High Resolution Imagery Disease Detection Methods Early Growth Stages CIENCIAS AGROPECUARIAS Y BIOTECNOLOGÍA UNMANNED AERIAL VEHICLES STEM RUST PHENOTYPING HIGH-THROUGHPUT PHENOTYPING WHEAT