Aerial image and LiDAR data offers a great possibility for agricultural land cover mapping. Unfortunately, these images leads to shadowy pixels. Management of shadowed areas for classification without image enhancement were investigated. Image segmentation approach using three different segmentation scales were used and tested to segment the image for ground features since only the ground features are affected by shadow caused by tall features. The RGB band and intensity were the layers used for the segmentation having an equal weights. A segmentation scale of 25 was found to be the optimal scale that will best fit for the shadowed and non-shadowed area classification. The SVM using Radial Basis Function kernel was then applied to extract c...
The delineation of shifting cultivation landscapes using remote sensing in mountainous regions is ch...
Light Detection and Ranging (LiDAR) provides high resolution horizontal and vertical spatial point c...
Identification of crop species is an important issue in agricultural management. In recent years, m...
ABSTRACT: Land cover classification is a valuable asset for the ecosystem-oriented natural resources...
A method for automatic feature extraction from multispectral aerial images and lidar data based on f...
High-resolution imagery is becoming increasingly available for use in land-cover mapping; however, p...
derivations This paper provides the application of the Light Detection and Ranging (LiDAR) derived p...
Ethiopia is a largely agrarian country with nearly 85% of its employment coming from agriculture. Ne...
ABSTRACT: This paper illustrates the classification of corn in the LiDAR data using Landsat indices ...
Land cover identification and area quantification are key aspects in determining support payments to...
In this study, a land cover classification method based on multi-class Support Vector Machines (SVM)...
First, an SVM analysis was evaluated against a series of classifiers with particular regard to the e...
The purpose of this study was to evaluate the usefulness of the spectral information of digital aeri...
LiDAR data are becoming increasingly available, which has opened up many new applications. One such ...
In recent decades, plastic-mulched farmland has expanded rapidly in China as well as in the rest of ...
The delineation of shifting cultivation landscapes using remote sensing in mountainous regions is ch...
Light Detection and Ranging (LiDAR) provides high resolution horizontal and vertical spatial point c...
Identification of crop species is an important issue in agricultural management. In recent years, m...
ABSTRACT: Land cover classification is a valuable asset for the ecosystem-oriented natural resources...
A method for automatic feature extraction from multispectral aerial images and lidar data based on f...
High-resolution imagery is becoming increasingly available for use in land-cover mapping; however, p...
derivations This paper provides the application of the Light Detection and Ranging (LiDAR) derived p...
Ethiopia is a largely agrarian country with nearly 85% of its employment coming from agriculture. Ne...
ABSTRACT: This paper illustrates the classification of corn in the LiDAR data using Landsat indices ...
Land cover identification and area quantification are key aspects in determining support payments to...
In this study, a land cover classification method based on multi-class Support Vector Machines (SVM)...
First, an SVM analysis was evaluated against a series of classifiers with particular regard to the e...
The purpose of this study was to evaluate the usefulness of the spectral information of digital aeri...
LiDAR data are becoming increasingly available, which has opened up many new applications. One such ...
In recent decades, plastic-mulched farmland has expanded rapidly in China as well as in the rest of ...
The delineation of shifting cultivation landscapes using remote sensing in mountainous regions is ch...
Light Detection and Ranging (LiDAR) provides high resolution horizontal and vertical spatial point c...
Identification of crop species is an important issue in agricultural management. In recent years, m...