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Bayesian learning global competition and unsupervised image segmentation

机译:贝叶斯学习全球竞争和无监督图像分割

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摘要

A novel approach to unsupervised stochastic model-based image segmentation is presented and the problems of parameter estimation and image segmentation are formulated as Bayesian learning. In order to draw samples corresponding to different classes, a global competition strategy is adopted for label commitment based on the "power value" (PV) associated with each sample (or site). The smaller the value, the value, the more powerful the sample to compete. Parameter estimation and image segmentation are executed in the same process. Bayesian modeling of images by Markov random fields (MRFs) makes it easy to represent the power of each site for competition. The new procedure to unsupervised image segmentation is performed on synthetic and real images to show its success.
机译:提出了一种新的基于无监督随机模型的图像分割方法,并将参数估计和图像分割问题归结为贝叶斯学习。为了抽取对应于不同类别的样本,基于与每个样本(或站点)相关联的“功率值”(PV),采用全球竞争策略进行标签承诺。价值越小,价值越大,样本竞争的实力就越大。参数估计和图像分割在同一过程中执行。通过马尔可夫随机场(MRF)对图像进行贝叶斯建模,可以轻松表示每个站点进行竞争的能力。在合成图像和真实图像上执行无监督图像分割的新过程以显示其成功。

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