The main idea of this paper is to integrate the non-contextual support vector machines (SVM) classifiers with Markov random fields (MRF) approach to develop a contextual framework for monitoring of agricultural land cover. To this end, the SVM and MRF approaches were integrated to exploit both spectral and spatial contextual information in the image for more accurate classification of remote sensing data from an agricultural region in Biddinghuizen, the Netherlands. Comparative analysis of this study clearly demonstrated that the proposed contextual method based on SVM-MRF models generates a higher average accuracy, overall accuracy and Kappa coefficient compared with non-contextual SVM method. Since the spatial information is considered in...
The increasing availability of multitemporal satellite remote sensing data offers new potential for ...
This doctoral thesis investigates the potential of classification methods based on spatial context t...
In the context of remote sensing image classification, Markov random fields (MRFs) have been used to...
in terms of image classi cation, this strategy results in an intrinsically noncontextual approach an...
Classification of land cover is one of the most important tasks and one of the primary objectives in...
Land cover mapping using high dimensional data is a common task in remote sensing. Random Forest (RF...
Abstract—Recent studies show that hyperspectral image classi-fication techniques that use both spect...
I dedicate this thesis to my brother, Sujit Kumar Roy. iii Classification of hyperspectral data is v...
In this paper, a novel context-sensitive classification technique based on Support Vector Machines (...
Accurate crop identification and crop area estimation are important for studies on irrigated agricul...
Fundação de Amparo à Pesquisa do Estado de São Paulo (FAPESP)Conselho Nacional de Desenvolvimento Ci...
Crop mapping and time series analysis of agronomic cycles are critical for monitoring land use and l...
Geospatial land use databases contain important information with high benefit for several users, esp...
This doctoral thesis investigates the potential of classification methods based on spatial context t...
The increasing availability of multitemporal satellite remote sensing data offers new potential for ...
The increasing availability of multitemporal satellite remote sensing data offers new potential for ...
This doctoral thesis investigates the potential of classification methods based on spatial context t...
In the context of remote sensing image classification, Markov random fields (MRFs) have been used to...
in terms of image classi cation, this strategy results in an intrinsically noncontextual approach an...
Classification of land cover is one of the most important tasks and one of the primary objectives in...
Land cover mapping using high dimensional data is a common task in remote sensing. Random Forest (RF...
Abstract—Recent studies show that hyperspectral image classi-fication techniques that use both spect...
I dedicate this thesis to my brother, Sujit Kumar Roy. iii Classification of hyperspectral data is v...
In this paper, a novel context-sensitive classification technique based on Support Vector Machines (...
Accurate crop identification and crop area estimation are important for studies on irrigated agricul...
Fundação de Amparo à Pesquisa do Estado de São Paulo (FAPESP)Conselho Nacional de Desenvolvimento Ci...
Crop mapping and time series analysis of agronomic cycles are critical for monitoring land use and l...
Geospatial land use databases contain important information with high benefit for several users, esp...
This doctoral thesis investigates the potential of classification methods based on spatial context t...
The increasing availability of multitemporal satellite remote sensing data offers new potential for ...
The increasing availability of multitemporal satellite remote sensing data offers new potential for ...
This doctoral thesis investigates the potential of classification methods based on spatial context t...
In the context of remote sensing image classification, Markov random fields (MRFs) have been used to...