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

机译:基于随机模型的图像分割的应用程序验证模型拟合方法

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A model-fitting approach to the cluster validation problem based upon Akaike's information criterion (AIC) is proposed. The explicit evaluation of the AIC for the image segmentation problem is achieved through an approximate maximum-likelihood-estimation algorithm. The efficacy of the proposed approach is demonstrated through experimental results for both synthetic mixture data, where the number of clusters is known, and stochastic model-based image segmentation operating on real-world images, for which the number of clusters is unknown. This approach is shown to correctly identify the known number of clusters in the synthetically generated data and to result in good subjective segmentations in aerial photographs.
机译:提出了一种基于Akaike信息标准(AIC)的集群验证问题的模型拟合方法。通过近似最大似然估计算法实现了图像分割问题的AIC的显式评估。通过对合成混合数据的实验结果证明了所提出的方法的功效,其中簇的数量是已知的,并且在真实世界图像上运行的随机模型的图像分割,其中簇的数量未知。示出该方法可以在合成产生的数据中正确识别已知的群集,并导致航空照片中的良好主观分段。

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