Changes in vegetation cover, building construction, road network and traffic conditions caused by urban expansion affect the human habitat as well as the natural environment in rapidly developing cities. It is crucial to assess these changes and respond accordingly by identifying man-made and natural structures with accurate classification algorithms. With the increase in use of multi-sensor remote sensing systems, researchers are able to obtain a more complete description of the scene of interest. By utilizing multi-sensor data, the accuracy of classification algorithms can be improved. In this paper, we propose a method for combining 3D LiDAR point clouds and high-resolution color images to classify urban areas using Gaussian processes (G...
The mapping and classification of urban areas play a crucial role in the planning of the city and mo...
Urbanization is commonly accepted as an important contributor to the growth of man-made structures a...
This study introduces a method for filtering lidar data based on a Support Vector Machines (SVMs) cl...
Changes in vegetation cover, building construction, road network and traffic conditions caused by ur...
Airborne lidar provides accurate height information of objects on the earth and has been recognized ...
Geographical object classification and information extraction is an important topic for the construc...
Visual clarity of aerial LiDAR image textures with integration of LiDAR points is critical for accur...
Satellite images and aerial images with high spatial resolution have improved visual interpretation ...
Support Vector Machine (SVM), as a powerful statistical learning method, , has been found that its p...
Many calamities in history like hurricanes, tornado and flooding are proof to the large scale impact...
Airborne Light Detection and Ranging (LiDAR) generates high-density 3D point clouds to provide a com...
Rapid technological advances in airborne hyperspectral and lidar systems paved the way for using mac...
Multispectral LiDAR (light detection and ranging) data have been initially used for land cover class...
Multispectral LiDAR (light detection and ranging) data have been initially used for land cover class...
Combining different types of data from varying sensors has the potential to be more accurate than a ...
The mapping and classification of urban areas play a crucial role in the planning of the city and mo...
Urbanization is commonly accepted as an important contributor to the growth of man-made structures a...
This study introduces a method for filtering lidar data based on a Support Vector Machines (SVMs) cl...
Changes in vegetation cover, building construction, road network and traffic conditions caused by ur...
Airborne lidar provides accurate height information of objects on the earth and has been recognized ...
Geographical object classification and information extraction is an important topic for the construc...
Visual clarity of aerial LiDAR image textures with integration of LiDAR points is critical for accur...
Satellite images and aerial images with high spatial resolution have improved visual interpretation ...
Support Vector Machine (SVM), as a powerful statistical learning method, , has been found that its p...
Many calamities in history like hurricanes, tornado and flooding are proof to the large scale impact...
Airborne Light Detection and Ranging (LiDAR) generates high-density 3D point clouds to provide a com...
Rapid technological advances in airborne hyperspectral and lidar systems paved the way for using mac...
Multispectral LiDAR (light detection and ranging) data have been initially used for land cover class...
Multispectral LiDAR (light detection and ranging) data have been initially used for land cover class...
Combining different types of data from varying sensors has the potential to be more accurate than a ...
The mapping and classification of urban areas play a crucial role in the planning of the city and mo...
Urbanization is commonly accepted as an important contributor to the growth of man-made structures a...
This study introduces a method for filtering lidar data based on a Support Vector Machines (SVMs) cl...