Mapping agricultural crops is an important application of remote sensing. However, in many cases it is based either on hyperspectral imagery or on multitemporal coverage, both of which are difficult to scale up to large-scale deployment at high spatial resolution. In the present paper, we evaluate the possibility of crop classification based on single images from very high-resolution (VHR) satellite sensors. The main objective of this work is to expose performance difference between state-of-the-art parcel-based smoothing and purely data-driven conditional random field (CRF) smoothing, which is yet unknown. To fulfill this objective, we perform extensive tests with four different classification methods (Support Vector Machines, Random Fores...
International audienceA new procedure is proposed for agricultural land-use mapping that addresses a...
The integration of the modern Machine Learning (ML) models into remote sensing and agriculture has e...
This work investigates a Sentinel-2 based crop identification methodology for the monitoring of the ...
Mapping agricultural crops is an important application of remote sensing. However, in many cases it ...
With the latest development and increasing availability of high spatial resolution sensors, earth ob...
Mapping the spatial distribution of crops has become a fundamental input for agricultural production...
The overarching aim of this research was to develop a method for deriving crop maps from a time seri...
Land Use/Land Cover (LU/LC) of agricultural areas derived from remotely sensed data still remains ve...
Accurate and reliable information regarding crop yields and soil conditions of agricultural fields a...
WOS: 000381331000026Accurate and reliable information regarding crop yields and soil conditions of a...
The upcoming launch of the next generation of hyperspectral satellites (PRISMA, EnMap, HyspIRI, etc....
A comparison of agricultural crop maps from independent field-based classifications of the Satellite...
A new procedure is proposed for agricultural land-use mapping that addresses a known weakness of cla...
Sentinel-2 images are expected to improve global crop monitoring even in challenging tropical small ...
As the global population increases, we face increasing demand for food and nutrition. Remote sensing...
International audienceA new procedure is proposed for agricultural land-use mapping that addresses a...
The integration of the modern Machine Learning (ML) models into remote sensing and agriculture has e...
This work investigates a Sentinel-2 based crop identification methodology for the monitoring of the ...
Mapping agricultural crops is an important application of remote sensing. However, in many cases it ...
With the latest development and increasing availability of high spatial resolution sensors, earth ob...
Mapping the spatial distribution of crops has become a fundamental input for agricultural production...
The overarching aim of this research was to develop a method for deriving crop maps from a time seri...
Land Use/Land Cover (LU/LC) of agricultural areas derived from remotely sensed data still remains ve...
Accurate and reliable information regarding crop yields and soil conditions of agricultural fields a...
WOS: 000381331000026Accurate and reliable information regarding crop yields and soil conditions of a...
The upcoming launch of the next generation of hyperspectral satellites (PRISMA, EnMap, HyspIRI, etc....
A comparison of agricultural crop maps from independent field-based classifications of the Satellite...
A new procedure is proposed for agricultural land-use mapping that addresses a known weakness of cla...
Sentinel-2 images are expected to improve global crop monitoring even in challenging tropical small ...
As the global population increases, we face increasing demand for food and nutrition. Remote sensing...
International audienceA new procedure is proposed for agricultural land-use mapping that addresses a...
The integration of the modern Machine Learning (ML) models into remote sensing and agriculture has e...
This work investigates a Sentinel-2 based crop identification methodology for the monitoring of the ...