According to the FAO (Food and Agriculture Organization), Malaysia lost 8.6% of its forest cover between 1990 and 2005. In forest cover change detection, remote sensing plays an important role. A lot of change detection methods have been developed, and most of them are semi-automated. These methods are time consuming and difficult to apply. One of the new and robust methods for change detection is artificial neural network (ANN). In this study, (ANN) classification scheme is used to detect the forest cover changes in the Johor state in Malaysia. Landsat Thematic Mapper images covering a period of 9 years (2000 and 2009) are used. Results obtained with ANN technique was compared with Maximum likelihood classification (MLC) to investigate whe...
Remote sensing is moving toward mapping the Earth surface using the highly technology implement. Th...
Consistent estimates of forest land-use and change over time are important for understanding and man...
Land use and land cover (LULC) form a baseline thematic map for monitoring, resource management, and...
According to the FAO (Food and Agriculture Organization), Malaysia lost 8.6% of its forest cover bet...
The aim of this research was to detect tree cover changes through Artificial Neural Network classifi...
This study compares the level of uncertainty of a Back-Propagation Perceptron Network and the Maximu...
Land cover classification is an essential process in many remote sensing applications. Classificatio...
Land use land cover (LULC) has altered dramatically because of anthropogenic activities, particularl...
Land is becoming a scarce natural resource due to the burgeoning population growth and urbanization....
The present study evaluates the application of the hybrid machine learning methods to detect changes...
Spatial data classification is famous over recent years in order to extract knowledge and insights i...
Timely and accurate change detection of the Earth's surface features provides the foundation for bet...
peer reviewedScenarios for monitoring land cover on a large scale, involving large volumes of data, ...
Natural landscapes have changed significantly through anthropogenic activities, particularly in area...
Landcover classification using automated classification techniques, while employing remotely sensed ...
Remote sensing is moving toward mapping the Earth surface using the highly technology implement. Th...
Consistent estimates of forest land-use and change over time are important for understanding and man...
Land use and land cover (LULC) form a baseline thematic map for monitoring, resource management, and...
According to the FAO (Food and Agriculture Organization), Malaysia lost 8.6% of its forest cover bet...
The aim of this research was to detect tree cover changes through Artificial Neural Network classifi...
This study compares the level of uncertainty of a Back-Propagation Perceptron Network and the Maximu...
Land cover classification is an essential process in many remote sensing applications. Classificatio...
Land use land cover (LULC) has altered dramatically because of anthropogenic activities, particularl...
Land is becoming a scarce natural resource due to the burgeoning population growth and urbanization....
The present study evaluates the application of the hybrid machine learning methods to detect changes...
Spatial data classification is famous over recent years in order to extract knowledge and insights i...
Timely and accurate change detection of the Earth's surface features provides the foundation for bet...
peer reviewedScenarios for monitoring land cover on a large scale, involving large volumes of data, ...
Natural landscapes have changed significantly through anthropogenic activities, particularly in area...
Landcover classification using automated classification techniques, while employing remotely sensed ...
Remote sensing is moving toward mapping the Earth surface using the highly technology implement. Th...
Consistent estimates of forest land-use and change over time are important for understanding and man...
Land use and land cover (LULC) form a baseline thematic map for monitoring, resource management, and...