The aim of this study was to investigate to which degree the accuracy of vegetation classification could be improved by combining optical satellite data and airborne laser scanner (ALS) data, compared with using satellite data only. A Satellite Pour l'Observation de la Terre (SPOT) 5 scene and Leica ALS 50-II data from 2009, covering a test area in the mid-Sweden (latitude 60° 43′ N, longitude 16° 43′ E), were used in maximum likelihood and decision tree classifications. Training and validation data were obtained from the interpretation of digital aerial photo stereo models. Combination of SPOT and ALS data gave classification accuracies up to 72%, compared with 56% using only SPOT data. This indicates that integrating features from large a...
Multispectral airborne laser scanning (MS-ALS) sensors are a new promising source of data for auto-m...
Airborne laser scanning (ALS) is considered as the most accurate remote sensing data for the predict...
This paper investigated the potential of multispectral airborne laser scanning (ALS) data for indivi...
The aim of this study was to investigate to which degree the accuracy of vegetation classification c...
In this thesis, the utility of airborne laser scanning (ALS) for monitoring vegetation of relevance ...
Creation of accurate vegetation maps from optical satellite data requires use of reference data to a...
The use of multi-temporal laser scanner data is potentially an efficient method for monitoring of ve...
A workflow for combining airborne lidar, optical satellite data and National Forest Inventory (NFI) ...
In the work, a fully automatic approach for vegetation delineation using ALS data is presented. Nowa...
A workflow for combining airborne lidar, optical satellite data and National Forest Inventory (NFI) ...
Multispectral Airborne Laser Scanning (ALS) is a new technology and its output data have not been fu...
Properties of individual trees can be estimated from airborne laser scanning (ALS) data provided tha...
Multispectral airborne laser scanning (MS-ALS) sensors are a new promising source of data for auto-m...
Airborne laser scanning (ALS) is considered as the most accurate remote sensing data for the predict...
This paper investigated the potential of multispectral airborne laser scanning (ALS) data for indivi...
The aim of this study was to investigate to which degree the accuracy of vegetation classification c...
In this thesis, the utility of airborne laser scanning (ALS) for monitoring vegetation of relevance ...
Creation of accurate vegetation maps from optical satellite data requires use of reference data to a...
The use of multi-temporal laser scanner data is potentially an efficient method for monitoring of ve...
A workflow for combining airborne lidar, optical satellite data and National Forest Inventory (NFI) ...
In the work, a fully automatic approach for vegetation delineation using ALS data is presented. Nowa...
A workflow for combining airborne lidar, optical satellite data and National Forest Inventory (NFI) ...
Multispectral Airborne Laser Scanning (ALS) is a new technology and its output data have not been fu...
Properties of individual trees can be estimated from airborne laser scanning (ALS) data provided tha...
Multispectral airborne laser scanning (MS-ALS) sensors are a new promising source of data for auto-m...
Airborne laser scanning (ALS) is considered as the most accurate remote sensing data for the predict...
This paper investigated the potential of multispectral airborne laser scanning (ALS) data for indivi...