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A model-fitting approach to cluster validation with application to stochastic model-based image segmentation

机译:一种模型拟合的聚类验证方法,并应用于基于模型的随机图像分割

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摘要

A clustering scheme is used for model parameter estimation. Most of the existing clustering procedures require prior knowledge of the number of classes, which is often, as in unsupervised image segmentation, unavailable and must be estimated. This problem is known as the cluster validation problem. For unsupervised image segmentation the solution of this problem directly affects the quality of the segmentation. A model-fitting approach to the cluster validation problem based on Akaike's information criterion is proposed, and its efficacy and robustness are demonstrated through experimental results for synthetic mixture data and image data.
机译:聚类方案用于模型参数估计。现有的大多数聚类过程都需要对类别数量有先验知识,这在无监督图像分割中通常是不可用的,必须进行估计。此问题称为群集验证问题。对于无监督图像分割,该问题的解决方案直接影响分割的质量。提出了一种基于Akaike信息准则的聚类验证问题的模型拟合方法,并通过合成混合物数据和图像数据的实验结果证明了其有效性和鲁棒性。

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