Hyperspectral imaging linked to subsequent neural networks based analysis has proven its suitability to unravel complex information in a number of different application areas, such as geology, defence, etc. The extension of this approach to crop plant research, plant breeding, and agriculture has started quite recently. Here, the image acquisition ranges from airborne sensing mainly for agricultural applications down to single leaf analysis in the context of precision and high-throughput plant phenotyping. All these applications have in common, that particular relevant compounds of the plant need to be determined by means of hyperspectral signatures as substitute to extensive biochemical analysis. This paper describes the quantitative asses...
The prediction and early detection of physiological disorders based on the nutritional conditions an...
Hyperspectral imaging is a technique with an increasing range of applications in plant science. Here...
The feasibility of using hyperspectral imaging with convolutional neural network (CNN) to identify r...
Hyperspectral imaging of crop plants offers the means for a non-invasive, precise and high-throughpu...
Hyperspectral signatures can provide abundant information regarding health status of crops; however ...
Hyperspectral signatures can provide abundant information regarding health status of crops; however ...
Hyperspectral signatures can provide abundant information regarding health status of crops; however ...
We have investigated the application of neural nets to the determination of fundamental leaf canopy ...
Copyright © 2012 Ana-Isabel de Castro et al. This is an open access article distributed under the Cr...
This study used hyperspectral data to determine nitrogen, weed, and water stresses in a corn (Zea m...
Traditional plant phenotyping usually relies on manual measurement of selected traits from a small n...
Hyperspectral imaging is a technique with an increasing range of applications in plant science. Here...
Traditional plant phenotyping usually relies on manual measurement of selected traits from a small n...
The spectral reflectance signature of living organisms pro-vides information that closely reflects t...
Traditional plant phenotyping usually relies on manual measurement of selected traits from a small n...
The prediction and early detection of physiological disorders based on the nutritional conditions an...
Hyperspectral imaging is a technique with an increasing range of applications in plant science. Here...
The feasibility of using hyperspectral imaging with convolutional neural network (CNN) to identify r...
Hyperspectral imaging of crop plants offers the means for a non-invasive, precise and high-throughpu...
Hyperspectral signatures can provide abundant information regarding health status of crops; however ...
Hyperspectral signatures can provide abundant information regarding health status of crops; however ...
Hyperspectral signatures can provide abundant information regarding health status of crops; however ...
We have investigated the application of neural nets to the determination of fundamental leaf canopy ...
Copyright © 2012 Ana-Isabel de Castro et al. This is an open access article distributed under the Cr...
This study used hyperspectral data to determine nitrogen, weed, and water stresses in a corn (Zea m...
Traditional plant phenotyping usually relies on manual measurement of selected traits from a small n...
Hyperspectral imaging is a technique with an increasing range of applications in plant science. Here...
Traditional plant phenotyping usually relies on manual measurement of selected traits from a small n...
The spectral reflectance signature of living organisms pro-vides information that closely reflects t...
Traditional plant phenotyping usually relies on manual measurement of selected traits from a small n...
The prediction and early detection of physiological disorders based on the nutritional conditions an...
Hyperspectral imaging is a technique with an increasing range of applications in plant science. Here...
The feasibility of using hyperspectral imaging with convolutional neural network (CNN) to identify r...