[PDF][PDF] Incorporating FCM and back propagation neural network for image segmentation

E Aghajari, MG Damayanti - Technology, 2014 - academia.edu
Technology, 2014academia.edu
Hybrid image segmentation is proposed in this paper. The input image is firstly
preprocessed in order to extract the features using Discrete Wavelet Transform (DWT). The
features are then fed to Fuzzy C-means algorithm which is unsupervised. The membership
function created by Fuzzy C-means (FCM) is used as a target to be fed in neural network.
Then the Back Propagation Neural network (BPN) has been trained based on targets which
is obtained by (FCM) and features as input data. Combining the FCM information and neural …
Abstract
Hybrid image segmentation is proposed in this paper. The input image is firstly preprocessed in order to extract the features using Discrete Wavelet Transform (DWT). The features are then fed to Fuzzy C-means algorithm which is unsupervised. The membership function created by Fuzzy C-means (FCM) is used as a target to be fed in neural network. Then the Back Propagation Neural network (BPN) has been trained based on targets which is obtained by (FCM) and features as input data. Combining the FCM information and neural network in unsupervised manner lead us to achieve better segmentation. The proposed algorithm is tested on various Berkeley database gray level images.
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