In our paper, performance of four fuzzy membership function generation methods was studied. These methods were studied in the context of implementing Mamdani fuzzy classification on a set of satellite images for western Iraqi territory. The first method generate triangulate membership functions using mean, minimum (min) and maximum (max) of histogram attribute values (AV), while peak and standard deviation (STD) of these AV were used in the second. On the other hand, in the third and fourth methods, Gaussian membership functions are generated using same mentioned values in the first and second method respectively. The goal was to generate a Mamdani type fuzzy inference system the membership function (MF) of each fuzzy set and implementing t...
This article presents the use of kernel functions in fuzzy classifiers for an efficient land use/lan...
The classes in fuzzy classification schemes are defined as fuzzy sets, partitioning the feature spac...
Because of the degradation of classification accuracy that is caused by the uncertainty of pixel cla...
The main idea behind any image classification process is to obtain highest accuracy possible. Minimu...
This article offers an original ISAR image classification procedure based on Mamdani fuzzy inference...
This article offers an original ISAR image classification procedure based on Mamdani fuzzy inference...
This article offers an original ISAR image classification procedure based on Mamdani fuzzy inference...
This article offers an original ISAR image classification procedure based on Mamdani fuzzy inference...
This study is to classify satellite data based on supervised fuzzy classification technique. Attempt...
In this paper, we describe an algorithm to extract classification rules from training samples using ...
This paper explores two different methods for improved learning in multimodular fuzzy neural network...
This study compares the performance of two non-parametric classifiers and Gaussian Maximum Likelihoo...
This paper explores two different methods for improved learning in multimodular fuzzy neural network...
This paper develops a novel classification optimization approach integrating class adaptive Markov R...
This paper develops a novel classification optimization approach integrating class adaptive Markov R...
This article presents the use of kernel functions in fuzzy classifiers for an efficient land use/lan...
The classes in fuzzy classification schemes are defined as fuzzy sets, partitioning the feature spac...
Because of the degradation of classification accuracy that is caused by the uncertainty of pixel cla...
The main idea behind any image classification process is to obtain highest accuracy possible. Minimu...
This article offers an original ISAR image classification procedure based on Mamdani fuzzy inference...
This article offers an original ISAR image classification procedure based on Mamdani fuzzy inference...
This article offers an original ISAR image classification procedure based on Mamdani fuzzy inference...
This article offers an original ISAR image classification procedure based on Mamdani fuzzy inference...
This study is to classify satellite data based on supervised fuzzy classification technique. Attempt...
In this paper, we describe an algorithm to extract classification rules from training samples using ...
This paper explores two different methods for improved learning in multimodular fuzzy neural network...
This study compares the performance of two non-parametric classifiers and Gaussian Maximum Likelihoo...
This paper explores two different methods for improved learning in multimodular fuzzy neural network...
This paper develops a novel classification optimization approach integrating class adaptive Markov R...
This paper develops a novel classification optimization approach integrating class adaptive Markov R...
This article presents the use of kernel functions in fuzzy classifiers for an efficient land use/lan...
The classes in fuzzy classification schemes are defined as fuzzy sets, partitioning the feature spac...
Because of the degradation of classification accuracy that is caused by the uncertainty of pixel cla...