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A cellular coevolutionary algorithm for image segmentation

机译:一种用于图像分割的细胞协同进化算法

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Clustering is inherently a difficult problem, both with respect to the definition of adequate models as well as to the optimization of the models. We present a model for the cluster problem that does not need knowledge about the number of clusters a priori . This property is among others useful in the image segmentation domain, which we especially address. Further, we propose a cellular coevolutionary algorithm for the optimization of the model. Within this scheme multiple agents are placed in a regular two-dimensional (2-D) grid representing the image, which imposes neighboring relations on them. The agents cooperatively consider pixel migration from one agent to the other in order to improve the homogeneity of the ensemble of the image regions they represent. If the union of the regions of neighboring agents is homogeneous then the agents form alliances. On the other hand, if an agent discovers a deviant subject, it isolates the subject. In the experiments we show the effectiveness of the proposed method and compare it to other segmentation algorithms. The efficiency can easily be improved by exploiting the intrinsic parallelism of the proposed method.
机译:就适当模型的定义以及模型的优化而言,聚类天生就是一个难题。我们提出了一个聚类问题的模型,该模型不需要先验的聚类数知识。该属性在图像分割领域尤其有用,尤其有用。此外,我们提出了一种用于模型优化的细胞协同进化算法。在此方案中,将多个代理放置在代表图像的规则二维(2-D)网格中,该网格在其上施加了相邻关系。代理协作考虑像素从一种代理迁移到另一种代理的情况,以改善它们代表的图像区域集合的均匀性。如果相邻代理的区域联合是同质的,则代理会形成联盟。另一方面,如果一个代理发现了一个异常的主体,它将隔离该主体。在实验中,我们证明了该方法的有效性,并将其与其他分割算法进行了比较。利用所提出方法的内在并行性可以很容易地提高效率。

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