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Unsupervised texture image segmentation by improved neural network ART2

Zhiling Wang, G. Sylos Labini, R. Mugnuolo, Diletta Di Marco

Year
1994
Citations
2

Abstract

We here propose a segmentation algorithm of texture image for a computer vision system on a space robot. An improved adaptive resonance theory (ART2) for analog input patterns is adapted to classify the image based on a set of texture image features extracted by a fast spatial gray level dependence method (SGLDM). The nonlinear thresholding functions in input layer of the neural network have been constructed by two parts: firstly, to reduce the effects of image noises on the features, a set of sigmoid functions is chosen depending on the types of the feature; secondly, to enhance the contrast of the features, we adopt fuzzy mapping functions. The cluster number in output layer can be increased by an autogrowing mechanism constantly when a new pattern happens. Experimental results and original or segmented pictures are shown, including the comparison between this approach and K-means algorithm. The system written in C language is performed on a SUN-4/330 sparc-station with an image board IT-150 and a CCD camera.

Keywords

Artificial intelligenceComputer scienceImage segmentationImage textureArtificial neural networkPattern recognition (psychology)Computer visionTexture (cosmology)SegmentationScale-space segmentation

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