Crop mapping is one major component of agricultural resource monitoring using remote sensing. Yield orwater demand modeling requires that both, the total surface that is cultivated and the accurate distributionof crops, respectively is known. Map quality is crucial and influences the model outputs. Althoughthe use of multi-spectral time series data in crop mapping has been acknowledged, the potentially highdimensionality of the input data remains an issue. In this study Support Vector Machines (SVM) are usedfor crop classification in irrigated landscapes at the object-level. Input to the classifications is 71 multiseasonalspectral and geostatistical features computed from RapidEye time series. The random forest (RF)feature importance score ...
The overarching aim of this research was to develop a method for deriving crop maps from a time seri...
ABSTRACT: Seven types of crops have been named as sensitive crops by the Taiwan Council of Agricultu...
Remote sensing can facilitate rapid collection of data in agriculture at relatively low ...
Agricultural management increasingly uses crop maps based on classification of remotely sensed data....
Accurate crop identification and crop area estimation are important for studies on irrigated agricul...
Crop mapping and time series analysis of agronomic cycles are critical for monitoring land use and l...
Estimating key crop parameters (e.g., phenology, yield prediction) is a prerequisite for optimizing ...
First, an SVM analysis was evaluated against a series of classifiers with particular regard to the e...
Identification of crop and its accuracy is an important aspect in predicting crop production using R...
Accurate spatial distribution and area of crops are important basic data for assessing agricultural ...
Accurate and up-to-date spatial agricultural information is essential for applications including agr...
The increased feature space available in object-based classification environments (e.g., extended sp...
Land cover mapping using high dimensional data is a common task in remote sensing. Random Forest (RF...
The increased feature space available in object-based classification environments (e.g., extended sp...
Abstract—The accuracy of supervised land cover classifications depends on factors such as the chosen...
The overarching aim of this research was to develop a method for deriving crop maps from a time seri...
ABSTRACT: Seven types of crops have been named as sensitive crops by the Taiwan Council of Agricultu...
Remote sensing can facilitate rapid collection of data in agriculture at relatively low ...
Agricultural management increasingly uses crop maps based on classification of remotely sensed data....
Accurate crop identification and crop area estimation are important for studies on irrigated agricul...
Crop mapping and time series analysis of agronomic cycles are critical for monitoring land use and l...
Estimating key crop parameters (e.g., phenology, yield prediction) is a prerequisite for optimizing ...
First, an SVM analysis was evaluated against a series of classifiers with particular regard to the e...
Identification of crop and its accuracy is an important aspect in predicting crop production using R...
Accurate spatial distribution and area of crops are important basic data for assessing agricultural ...
Accurate and up-to-date spatial agricultural information is essential for applications including agr...
The increased feature space available in object-based classification environments (e.g., extended sp...
Land cover mapping using high dimensional data is a common task in remote sensing. Random Forest (RF...
The increased feature space available in object-based classification environments (e.g., extended sp...
Abstract—The accuracy of supervised land cover classifications depends on factors such as the chosen...
The overarching aim of this research was to develop a method for deriving crop maps from a time seri...
ABSTRACT: Seven types of crops have been named as sensitive crops by the Taiwan Council of Agricultu...
Remote sensing can facilitate rapid collection of data in agriculture at relatively low ...