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Unsupervised image segmentation combining region and boundary estimation

机译:结合区域和边界估计的无监督图像分割

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摘要

An integrated approach to image segmentation is presented that combines region and boundary information using maximum a posteriori estimation and decision theory. The algorithm employs iterative, decision--directed estimation performed on a novel multi--resolution representation. The use of a multi-resolution technique ensures both robustness in noise and efficiency of computation, while the model- based estimation and decision process is flexible and spatially local, thus avoiding assumptions about global homogeneity or size and number of regions. A comparative evaluation of the method against region-only and boundary-only methods is presented and is shown to produce accurate segmentations at quite low signal-to-noise ratios.
机译:提出了一种图像分割的集成方法,该方法使用最大的后验估计和决策理论将区域和边界信息进行组合。该算法采用对新颖的多分辨率表示形式进行的迭代,决策指导的估计。多分辨率技术的使用确保了噪声的鲁棒性和计算效率,而基于模型的估计和决策过程则是灵活的并且在空间上是局部的,因此避免了关于全局同质性或区域大小和数量的假设。提出了对该方法与仅区域方法和仅边界方法的比较评估,并显示了在相当低的信噪比下可以产生准确的分割效果。

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