In this paper, a mapping procedure exploiting object boundaries in very high-resolution (VHR) images is proposed. After discrimination between boundary and nonboundary pixel sets, each of the two sets is separately classified. The former are labeled using a neural network (NN), and the shape of the pixel set is finely tuned by enforcing a few geometrical constraints, while the latter are classified using an adaptive Markov random field (MRF) model. The two mapping outputs are finally combined through a decision fusion process. Experimental results on hyperspectral and satellite VHR imagery show the superior performance of this method over conventional NN and MRF classifiers
In recent decades, it is easy to obtain remote sensing images which have been successfully applied t...
It is a classical task to automatically extract road networks from very high-resolution (VHR) images...
The accurate and timely monitoring of regional urban extent is helpful for analyzing urban sprawl an...
In this paper, a mapping procedure exploiting object boundaries in very high-resolution (VHR) images...
The availability of 4-metre spatial resolution satellite sensor imagery represents an important step...
Land-cover proportions of mixed pixels can be predicted using soft classification. From the land-cov...
This paper presents a segmentation method that exploits object based region merging to delineate the...
New approaches for using supplementary data such as panchromatic and fused imagery and Light Detecti...
Soft classification techniques have been developed to estimate the class composition of image pixels...
Recent advances in computer vision and pattern recognition have demonstrated the superiority of deep...
Superresolution mapping is a set of techniques to increase the spatial resolution of a land cover ma...
In this paper, three post-classification techniques are proposed to improve the information content,...
Very high resolution (VHR) remote sensing imagery has been used for land cover classification, and i...
New challenges in remote sensing require the design of a pixel classification method that...
This letter investigates fully convolutional networks (FCNs) for the detection of informal settlemen...
In recent decades, it is easy to obtain remote sensing images which have been successfully applied t...
It is a classical task to automatically extract road networks from very high-resolution (VHR) images...
The accurate and timely monitoring of regional urban extent is helpful for analyzing urban sprawl an...
In this paper, a mapping procedure exploiting object boundaries in very high-resolution (VHR) images...
The availability of 4-metre spatial resolution satellite sensor imagery represents an important step...
Land-cover proportions of mixed pixels can be predicted using soft classification. From the land-cov...
This paper presents a segmentation method that exploits object based region merging to delineate the...
New approaches for using supplementary data such as panchromatic and fused imagery and Light Detecti...
Soft classification techniques have been developed to estimate the class composition of image pixels...
Recent advances in computer vision and pattern recognition have demonstrated the superiority of deep...
Superresolution mapping is a set of techniques to increase the spatial resolution of a land cover ma...
In this paper, three post-classification techniques are proposed to improve the information content,...
Very high resolution (VHR) remote sensing imagery has been used for land cover classification, and i...
New challenges in remote sensing require the design of a pixel classification method that...
This letter investigates fully convolutional networks (FCNs) for the detection of informal settlemen...
In recent decades, it is easy to obtain remote sensing images which have been successfully applied t...
It is a classical task to automatically extract road networks from very high-resolution (VHR) images...
The accurate and timely monitoring of regional urban extent is helpful for analyzing urban sprawl an...