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  4. Unsupervised texture image segmentation by improved neural network ART2
 
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Unsupervised texture image segmentation by improved neural network ART2

Author(s)
Mugnuolo, Raffaele  
Wang, Zhiling
Labini, G. Sylos
Subjects

ALGORITHMS

COMPUTER VISION

FUZZY SYSTEMS

IMAGE CLASSIFICATION

IMAGE ENHANCEMENT

NEURAL NETS

PATTERN RECOGNITION

ROBOT SENSORS

TEXTURES

Date Issued
1994-03-01
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.
URI
https://hdl.handle.net/20.500.13025/169
URL
http://ntrs.nasa.gov/search.jsp?R=19940026044
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