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Unsupervised segmentation of noisy image in a multi-scale framework

机译:多尺度框架下的无监督图像噪声分割

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We present a multi-scale framework for segmentation of image modeled by Markov random field(MRF). In this framework, a multi-scale representations of the original image are derived in nonlinear scale-space using anisotropic diffusion, which has the advantage of smoothing unwanted structures while preserving semantically meaningful structures at any scale. Then we apply segmentation using a "from coarse to fine" scheme. A histogram analysis method is developed to approximately estimate the parameters and the maximum a posterior (MAP) estimation of the label field is got at the coarasest scale using fast iterative conditional modes (ICM), and then the labeling result is mapped to the next-finer scale taken as initial labeling, while the parameters is modified using maximum likelihood(ML) estimation. This procedure is continued until the finest scale is reached. At each scale, simple and fast ICM algorithm is applied. Experiment results on real and synthetic image show good performance of our scheme.
机译:我们提出了一种基于马尔可夫随机场(MRF)建模的图像分割的多尺度框架。在此框架中,使用各向异性扩散在非线性比例空间中导出原始图像的多比例表示,其优点是可以平滑不需要的结构,同时保留任何比例的语义有意义的结构。然后,我们使用“从粗到细”方案进行细分。开发了一种直方图分析方法来近似估计参数,并使用快速迭代条件模式(ICM)在最粗尺度上获得最大的后方(MAP)估计,然后将标记结果映射到下一个较小的比例作为初始标记,而参数使用最大似然(ML)估计进行修改。继续此过程,直到达到最佳比例。在每个规模上,都应用了简单,快速的ICM算法。实,合成图像实验结果表明,该方案具有良好的性能。

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