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Image segmentation by dirichlet process mixture model with generalised mean

机译:基于Dirichlet过程混合模型的广义均值图像分割。

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The Dirichlet process mixture model (DPMM) with spatial constraints - e.g. hidden Markov random field (HMRF) model - has been considered as an effective algorithm for image processing application. However, the HMRF model is complex and time-consuming for implementation. A new DPMM has been introduced, where a generalised mean (GDM) is selected as the spatial constraints function. The GDM is applied not only on prior probability (and posterior probability) to incorporate local spatial information and component information, but also on conditional probability to incorporate local spatial information and observation information. The purpose of the HMRF model and GDM are the same for incorporating some spatial constraints into the system. However, compared to HMRF, GDM is easier, faster and simpler to implement. Finally, a variational Bayesian approach has been adopted for parameters estimation and model selection. Experimental results on image segmentation application demonstrate the improved performance of the proposed approach.
机译:具有空间约束的Dirichlet过程混合模型(DPMM)-例如隐藏的马尔可夫随机场(HMRF)模型-被认为是图像处理应用程序的有效算法。但是,HMRF模型实施起来很复杂且耗时。引入了新的DPMM,其中选择了广义均值(GDM)作为空间约束函数。 GDM不仅应用于先验概率(和后验概率)以合并局部空间信息和成分信息,而且还应用于条件概率以合并局部空间信息和观察信息。 HMRF模型和GDM的目的是为了将一些空间约束纳入系统。但是,与HMRF相比,GDM更容易,更快且更容易实现。最后,采用变分贝叶斯方法进行参数估计和模型选择。图像分割应用的实验结果证明了该方法的改进性能。

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    《Image Processing, IET》 |2014年第2期|103-111|共9页
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