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Edge detection with multilayer feed forward neural network by using back propagation learning

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EN
In this study, availability of a multilayer feed forward neural network structure by using back propagation learning algorithm in edge detection problem is studied . Based on the edge detection problem, two types of feed forward neural network tree structures are designed. First structure is used with a 9 input for 3x3 mask and the other structure is used with 4 input for 2x2 mask. 6 black and white images are used as input to the feed forward neural network structure. 3 of the 6 images contained simple shape patterns and the rest of the 3 contained complex context. A back propagation learning technique is used in multilayer feed forward neural network that uses gradient algorithm for error minimization in hidden layers. Generated output edge profile images of the given inputs to the multilayer feed forward neural network structure are compared against the conventional edge detection techniques of Canny and Sobel mask operators.
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Bibliografia
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bwmeta1.element.baztech-article-BAT5-0032-0007
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