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New MRF Parameter Estimation Technique for Texture Image Segmentation using Hierarchical GMRF Model Based on Random Spatial Interaction and Mean Field Theory

机译:基于随机空间相互作用和均值场理论的分层GMRF模型用于纹理图像分割的MRF参数估计新技术

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This paper presents a new Markov random field (MRF) parameter estimation technique using hierarchical MRF model based on the random spatial interaction (RSI) and the mean field theory for the textured image segmentation. By considering spatial interaction of the MRF as random fields, the fluctuation of the spatial interaction that occurs in the conventional MRF model can be efficiently alleviated. Also, by assuming randomness of the spatial interaction as the MRF model, it allows us to obtain more robust information for segmentation during the feature extraction. The Gaussian MRF model is applied to the proposed hierarchical MRF scheme, and the expectation of the RSI is uniquely obtained by simple linear equation without using a window based on the mean field theory. Experimental results on synthetic and real world images show that the proposed algorithm provides good feature extraction and segmentation
机译:本文提出了一种新的马尔可夫随机场(MRF)参数估计技术,该算法使用基于随机空间相互作用(RSI)和均场理论的分层MRF模型对带纹理的图像进行分割。通过将MRF的空间相互作用视为随机场,可以有效地缓解常规MRF模型中发生的空间相互作用的波动。此外,通过将空间交互作用的随机性假定为MRF模型,它使我们能够在特征提取期间获得更可靠的信息以进行分割。将高斯MRF模型应用于所提出的分层MRF方案,并且通过简单的线性方程式而无需使用基于均值场理论的窗口,就可以唯一地获得RSI的期望值。在合成和真实世界图像上的实验结果表明,该算法提供了良好的特征提取和分割

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