Bayesian Inferen e for Color Image Quantization via Model-Based Clustering Trees
نویسندگان
چکیده
منابع مشابه
Bayesian Inference for Color Image Quantization via Model-Based Clustering Trees
\Ve consider the problem of color image quantization, or clustering of the color space. vVe propose a new methodology for doing this, called model-based clustering trees. This is grounded in model-based clustering, which bases inference on finite mixture models estimated by maximum likelihood using the EM algorithm, and automatically chooses the number of clusters by Bayesian model selection, a...
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