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A pipeline using multi-layer Tumors Automata for interactive multi-label image segmentation

机译:用于交互式多标签图像分割的多层肿瘤自动机的管道

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In this paper, we investigate a novel algorithm to the problem of interactive image segmentation. We propose an extension of the Growcut framework using the Tumors Automata (TA) formed from the superpixel. The proposed TA is similar to Cellular Automata but can directly deal with superpixel. The superpixels (image segments) can provide powerful boundary cues to guide segmentation, where superpixels can be collected easily by over-segmenting the image using any reasonable existing segmentation algorithms. Given a small number of user-labelled superpixels, the rest of the image is segmented automatically by a TA. When the automaton labels the image, the segmentation evolution is faster than Growcut because of the iterative process. Moreover, a level set method and multi-layer TA are employed to further improve the performance. Experiments conducted on the Berkeley Segmentation Database demonstrate the superior performance of our method over the state-of-the-art methods.
机译:在本文中,我们调查了一种新的算法对交互式图像分割问题的研究。我们使用由超像素形成的肿瘤自动机(TA)提出凸轮框架的延伸。所提出的TA类似于蜂窝自动机,但可以直接处理超像素。超像素(图像段)可以提供强大的边界线索来引导分割,其中可以通过使用任何合理的现有分割算法过度分割图像来容易地收集超顶。鉴于少量用户标记的超像素,图像的其余部分由TA自动分段。当自动机器标记图像时,由于迭代过程,分割演变比生成仪更快。此外,采用水平设定方法和多层TA来进一步提高性能。在伯克利分割数据库上进行的实验证明了我们对最先进的方法的方法的优越性。

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