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Unsupervised segmentation of images

机译:无监督的图像分割

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摘要

We present an unsupervised segmentation algorithm comprising a simulated annealing process on a single Markov Chain to directly calculate the MAP segmentation over a viable number of regions. The algorithm is applied to both Isotropic and Gaussian Hierarchical Markov Random Field (MRF) Models, which may be combined with low level line processes. The annealing algorithm utilizes a sampling framework that unified the processes of model selection, parameter estimation and image segmentation in a single Markov Chain. To achieve this, reversible jumps are incorporated to allow movement between different model spaces. A new method for generating jump proposals is given, which is more efficient than existing methodologies and is applicable to other, less specific model selection problems. It is based on the use of partial decoupling, rather than the more traditional Gibbs Sampler, to update the labels of the MRF. Partial decoupling is a derivative of the better known Swendsen-Wang algorithm in which an auxiliary variable bondmap is used to define regions of the image whose labels are then updated independently. We further propose a novel mechanisms by which deterministic methods, such as Gabor filtering, may be incorporated into this algorithm to sped up the convergence of the MCMC sampling process and hence, that of simulated annealing.
机译:我们提出了一种无监督的分割算法,包括在单个马尔可夫链上的模拟退火过程,直接通过可行数量的区域计算地图分段。该算法应用于各向同性和高斯分层马尔科夫随机字段(MRF)模型,其可以与低级别线路处理组合。退火算法利用采样框架,使单个马尔可夫链中的模型选择,参数估计和图像分割过程统一。为实现这一点,并入可逆跳转以允许在不同模型空间之间移动。给出了一种用于生成跳跃提案的新方法,比现有方法更有效,并且适用于其他更少的特定模型选择问题。它是基于使用部分解耦,而不是更传统的GIBBS采样器来更新MRF的标签。局部解耦是更好的已知Swendsen-Wang算法的导数,其中辅助变量Bondmap用于定义独立更新标签的图像的区域。我们进一步提出了一种新的机制,通过该机制,可以将诸如Gabor滤波的确定方法可以掺入该算法中以加速MCMC采样过程的收敛,从而使模拟退火的收敛性。

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