Abstract:- This paper explores the feasibility of applying Neural Networks and Genetic Programming to Land Cover Mapping problem. Land Cover Mapping has been done traditionally by using the Maximum Likelihood Classier (MLC). Neural Net-works (NN) and Genetic Programming (GP) classiers have advantage over statistical methods because they are distribution free, i.e., no prior knowledge is needed about the statistical distribution of the data. Neural Network has been applied for the classication but we may not be sure of getting the optimal solution. GP has the ability to discover discriminant features for a class. GP has been applied for two-category(class) pattern classication. This idea is extended to -class image classication problem by mo...
Although developments in remote sensing have greatly improved land cover mapping, the mixed pixel pr...
Although developments in remote sensing have greatly improved land cover mapping, the mixed pixel pr...
Abstract. We compared the performance of several supervised classi-fication algorithms on multi-sour...
Artificial Neural Networks (ANN) have gained increasing popularity as an alternative to statistical ...
For land management and planning, information on the Land Use Land Cover (LULC) is vital. In this re...
Abstract: This paper investigates the effectiveness of the genetic algorithm evolved neural network ...
The diversity of data sources, analysis methodologies, and classification systems has led to a numbe...
The diversity of data sources, analysis methodologies, and classification systems has led to a numbe...
Land cover class composition of image pixels can be estimated using soft classification techniques. ...
Land cover class composition of image pixels can be estimated using soft classification techniques. ...
Land cover class composition of image pixels can be estimated using soft classification techniques. ...
Our approaches in this project emphasized mainly the technical aspects of the land-systems classific...
Although developments in remote sensing have greatly improved land cover mapping, the mixed pixel pr...
Our approaches in this project emphasized mainly the technical aspects of the land-systems classific...
Our approaches in this project emphasized mainly the technical aspects of the land-systems classific...
Although developments in remote sensing have greatly improved land cover mapping, the mixed pixel pr...
Although developments in remote sensing have greatly improved land cover mapping, the mixed pixel pr...
Abstract. We compared the performance of several supervised classi-fication algorithms on multi-sour...
Artificial Neural Networks (ANN) have gained increasing popularity as an alternative to statistical ...
For land management and planning, information on the Land Use Land Cover (LULC) is vital. In this re...
Abstract: This paper investigates the effectiveness of the genetic algorithm evolved neural network ...
The diversity of data sources, analysis methodologies, and classification systems has led to a numbe...
The diversity of data sources, analysis methodologies, and classification systems has led to a numbe...
Land cover class composition of image pixels can be estimated using soft classification techniques. ...
Land cover class composition of image pixels can be estimated using soft classification techniques. ...
Land cover class composition of image pixels can be estimated using soft classification techniques. ...
Our approaches in this project emphasized mainly the technical aspects of the land-systems classific...
Although developments in remote sensing have greatly improved land cover mapping, the mixed pixel pr...
Our approaches in this project emphasized mainly the technical aspects of the land-systems classific...
Our approaches in this project emphasized mainly the technical aspects of the land-systems classific...
Although developments in remote sensing have greatly improved land cover mapping, the mixed pixel pr...
Although developments in remote sensing have greatly improved land cover mapping, the mixed pixel pr...
Abstract. We compared the performance of several supervised classi-fication algorithms on multi-sour...