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Image segmentation by cue selection and integration

机译:通过提示选择和集成进行图像分割

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In many recent works, image segmentation has been cast to a graph partitioning problem in which an affinity matrix represents the pairwise similarity of the nodes (pixels). In this paper, we develop an approach for the computation of the affinity matrix based on the combination of affinity matrices from various cues and its integration in the segmentation process. A principal components analysis (PCA) applied to the whole set of the normalized affinity matrices provides the uncorrelated relevant cues and their respective weights for the final combination. We then propose to integrate the evaluation of the affinity matrix at each iteration of an agglomerative algorithm in order to take into account the dynamics of the segmentation process. We finally define a criterion of satisfaction based on the variance-covariance matrix of the affinity matrices, which determines the end of the iterations. Experiments on a range of various images provide significant results.
机译:在许多最近的工作中,图像分割已被提出来解决图形分割问题,其中亲和度矩阵表示节点(像素)的成对相似性。在本文中,我们基于各种线索的亲和力矩阵的组合及其在分割过程中的集成,开发了一种用于计算亲和力矩阵的方法。应用于整个归一化亲和矩阵集的主成分分析(PCA)提供了不相关的相关线索及其对于最终组合的各自权重。然后,我们建议在凝聚算法的每次迭代中集成对亲和度矩阵的评估,以考虑分割过程的动态性。最后,我们根据亲和度矩阵的方差-协方差矩阵定义满足条件,该标准确定迭代的结束。在各种图像上进行的实验提供了明显的结果。

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