Remote sensed images contain a wealth of information. Next to diverse sensor technologies that allow us to measure different aspects of objects on the Earth (spectral characteristics in hyperspectral (HS) images, height in Light Detection And Ranging (LiDAR) data), we also have advanced image processing algorithms that have been developed to mine relevant information from multisensor remote sensing data for Earth observation. However, automatic interpretation of remote sensed images is still very difficult. In this paper, we compare multiple level features for fusion of HS and LiDAR data for urban area classification. Experimental results on fusion of HS and LiDAR data from the 2013 IEEE GRSS Data Fusion Contest demonstrate that middle-leve...
Combining different types of data from varying sensors has the potential to be more accurate than a ...
This study presents our findings on the fusion of Imaging Spectroscopy (IS) and LiDAR data for urban...
Concerning the strengths and limitations of multispectral and airborne LiDAR data, the fusion of suc...
Nowadays, we have very diverse sensor technologies and image processing algorithms that allow to mea...
Automatic interpretation of remote sensed images remains challenging. Nowadays, we have diverse sens...
Accurate urban land-use mapping is a challenging task in the remote-sensing field. With the availabi...
Limitations and deficiencies of different remote sensing sensors in extraction of different objects ...
Rapid technological advances in airborne hyperspectral and lidar systems paved the way for using mac...
One of the most sophisticated recent data fusions in remote sensing has involved the use of LiDAR an...
This paper proposes a semi-supervised graph-based fusion framework to couple dimensionality reductio...
This paper proposes a method to combine feature fusion and decision fusion together for multi-sensor...
Fusion of multisource data is becoming a widely used procedure due to the availability of complement...
This paper proposes a novel framework for the fusion of hyperspectral and light detection and rangi...
The heterogeneity of urban landscape in the vertical direction should not be neglected in urban ecol...
International audienceThe fusion of the hyperspectral image (HSI) and the light detecting and rangin...
Combining different types of data from varying sensors has the potential to be more accurate than a ...
This study presents our findings on the fusion of Imaging Spectroscopy (IS) and LiDAR data for urban...
Concerning the strengths and limitations of multispectral and airborne LiDAR data, the fusion of suc...
Nowadays, we have very diverse sensor technologies and image processing algorithms that allow to mea...
Automatic interpretation of remote sensed images remains challenging. Nowadays, we have diverse sens...
Accurate urban land-use mapping is a challenging task in the remote-sensing field. With the availabi...
Limitations and deficiencies of different remote sensing sensors in extraction of different objects ...
Rapid technological advances in airborne hyperspectral and lidar systems paved the way for using mac...
One of the most sophisticated recent data fusions in remote sensing has involved the use of LiDAR an...
This paper proposes a semi-supervised graph-based fusion framework to couple dimensionality reductio...
This paper proposes a method to combine feature fusion and decision fusion together for multi-sensor...
Fusion of multisource data is becoming a widely used procedure due to the availability of complement...
This paper proposes a novel framework for the fusion of hyperspectral and light detection and rangi...
The heterogeneity of urban landscape in the vertical direction should not be neglected in urban ecol...
International audienceThe fusion of the hyperspectral image (HSI) and the light detecting and rangin...
Combining different types of data from varying sensors has the potential to be more accurate than a ...
This study presents our findings on the fusion of Imaging Spectroscopy (IS) and LiDAR data for urban...
Concerning the strengths and limitations of multispectral and airborne LiDAR data, the fusion of suc...