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Weight adaptation and oscillatory correlation for image segmentation
2000
IEEE Transactions on Neural Networks
We propose a method for image segmentation based on a neural oscillator network. Unlike previous methods, weight adaptation is adopted during segmentation to remove noise and preserve significant discontinuities in an image. Moreover, a logarithmic grouping rule is proposed to facilitate grouping of oscillators representing pixels with coherent properties. We show that weight adaptation plays the roles of noise removal and feature preservation. In particular, our weight adaptation scheme is
doi:10.1109/72.870043
pmid:18249838
fatcat:wikb2qb2krbyfoexsm37al2gyi