Land cover of a Mediterranean region was classified within an artificial neural network (ANN) on a per-field basis using Landsat Thematic Mapper (TM) imagery. In addition to spectral information, the classifier used geostatistical structure functions and texture measures extracted from the co-occurrence matrix. Geostatistical measures of texture resulted in a more accurate classification of Mediterranean land cover than statistics derived from the co-occurrence matrix. The primary advantage of geostatistical measures was their robustness over a wide range of land cover types, field sizes and forms of class mixing. Spectral information and the variogram (geostatistical texture measure) resulted in the highest overall classification accuracie...
Landscape fragmentation is quite dominant in Mediterranean regions and poses significant problems in...
Land cover class composition of remotely sensed image pixels can be estimated using soft classificat...
Albeit the advent of fast computing facilities, digital image classification of remotely sensed data...
Land cover of a Mediterranean region was classified within an artificial neural network (ANN) on a p...
The aim of this study was to develop an efficient and accurate procedure for classifying Mediterrane...
Maximum likelihood (ML) and artificial neural network (ANN) classifiers were applied to three Landsa...
The aim of this study was to develop an efficient and accurate procedure for classifying Mediterrane...
The aim of this thesis was to develop an effective procedure (by means of maximising the percentage ...
Information on Earth's land surface cover is commonly obtained through digital image analysis of dat...
A Random Forest (RF) classifier was applied to spectral as well as mono- and multi-seasonal textural...
Describing the pattern and the spatial distribution of land cover is traditionally based on remote s...
The automatic generation of land-cover inventories by using remote-sensing data is a very difficult ...
An artificial neural network approach was evaluated in multispectral image processing applications, ...
The main objective of this study is to find out the importance of machine vision approach for the cl...
Abstract-Neural nets offer the potential to classify data based upon a rapid match to overall patter...
Landscape fragmentation is quite dominant in Mediterranean regions and poses significant problems in...
Land cover class composition of remotely sensed image pixels can be estimated using soft classificat...
Albeit the advent of fast computing facilities, digital image classification of remotely sensed data...
Land cover of a Mediterranean region was classified within an artificial neural network (ANN) on a p...
The aim of this study was to develop an efficient and accurate procedure for classifying Mediterrane...
Maximum likelihood (ML) and artificial neural network (ANN) classifiers were applied to three Landsa...
The aim of this study was to develop an efficient and accurate procedure for classifying Mediterrane...
The aim of this thesis was to develop an effective procedure (by means of maximising the percentage ...
Information on Earth's land surface cover is commonly obtained through digital image analysis of dat...
A Random Forest (RF) classifier was applied to spectral as well as mono- and multi-seasonal textural...
Describing the pattern and the spatial distribution of land cover is traditionally based on remote s...
The automatic generation of land-cover inventories by using remote-sensing data is a very difficult ...
An artificial neural network approach was evaluated in multispectral image processing applications, ...
The main objective of this study is to find out the importance of machine vision approach for the cl...
Abstract-Neural nets offer the potential to classify data based upon a rapid match to overall patter...
Landscape fragmentation is quite dominant in Mediterranean regions and poses significant problems in...
Land cover class composition of remotely sensed image pixels can be estimated using soft classificat...
Albeit the advent of fast computing facilities, digital image classification of remotely sensed data...