In this paper, we report on recent results from the Heterogeneous Agricultural Research Via Interactive, Scalable Technology (HARVIST) project. HARVIST seeks to provide the tools and scalability required to enable practicioners to analyze large, diverse data sets that may come from different data sources. We have focused on agricultural applications, and our current results demonstrate the ability of the system to train a crop type classifier that operates on orbital remote sensing images. We find that this classifier can label crops with an accuracy of 82%, comparable to other published results
The upcoming launch of the next generation of hyperspectral satellites (PRISMA, EnMap, HyspIRI, etc....
Abstract The downside risk of crop production affects the entire supply chain of th...
In the context of a growing interest in remote sensing for precision agriculture applications, the u...
Regarding environmental changes and more extreme weather conditions, forecasting crop yields and cap...
Based on remote sensing data, it is possible to create a real-time database of agricultural sectors ...
Remote sensing provides a lucid and effective means for crop coverage identification. Crop coverage ...
Reliable and accurate crop classification maps are an important data source for agricultural monitor...
Accurate classification and mapping of crops is essential for supporting sustainable land management...
Techniques that provide a rapid and widespread assessment of crop properties equip industry decision...
As the global population increases, we face increasing demand for food and nutrition. Remote sensing...
Mapping agricultural crops is an important application of remote sensing. However, in many cases it ...
Techniques that provide a rapid and widespread assessment of crop properties equip industry decisio...
WOS: 000381331000026Accurate and reliable information regarding crop yields and soil conditions of a...
Mapping agricultural crops is an important application of remote sensing. However, in many cases it ...
SIGLEAvailable from British Library Document Supply Centre-DSC:DXN046292 / BLDSC - British Library D...
The upcoming launch of the next generation of hyperspectral satellites (PRISMA, EnMap, HyspIRI, etc....
Abstract The downside risk of crop production affects the entire supply chain of th...
In the context of a growing interest in remote sensing for precision agriculture applications, the u...
Regarding environmental changes and more extreme weather conditions, forecasting crop yields and cap...
Based on remote sensing data, it is possible to create a real-time database of agricultural sectors ...
Remote sensing provides a lucid and effective means for crop coverage identification. Crop coverage ...
Reliable and accurate crop classification maps are an important data source for agricultural monitor...
Accurate classification and mapping of crops is essential for supporting sustainable land management...
Techniques that provide a rapid and widespread assessment of crop properties equip industry decision...
As the global population increases, we face increasing demand for food and nutrition. Remote sensing...
Mapping agricultural crops is an important application of remote sensing. However, in many cases it ...
Techniques that provide a rapid and widespread assessment of crop properties equip industry decisio...
WOS: 000381331000026Accurate and reliable information regarding crop yields and soil conditions of a...
Mapping agricultural crops is an important application of remote sensing. However, in many cases it ...
SIGLEAvailable from British Library Document Supply Centre-DSC:DXN046292 / BLDSC - British Library D...
The upcoming launch of the next generation of hyperspectral satellites (PRISMA, EnMap, HyspIRI, etc....
Abstract The downside risk of crop production affects the entire supply chain of th...
In the context of a growing interest in remote sensing for precision agriculture applications, the u...