Obtaining the Minimal Polygonal Representation of a Curve by Means of a Fuzzy Clustering
نویسنده
چکیده
The problem of obtaining of a minimal polygonal representation of a plane digital curve is treated. Means of a fuzzy clustering method are used. The fuzzy clustering is realized by relations of similarity and dissimilarity that are defined on a planar digital curve.
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