Makrogiannis Sokratis, Economou George, Fotopoulos Spiros
Computer Science and Engineering Department, Wright State University, Dayton, OH 45435-0001, USA.
IEEE Trans Syst Man Cybern B Cybern. 2005 Feb;35(1):44-53. doi: 10.1109/tsmcb.2004.837756.
This paper proposes a methodology that incorporates principles from cluster analysis and graph representation to achieve efficient image segmentation results. More specifically, a feature-based, inter-region dissimilarity relation is considered here in order to determine the dissimilarity matrix in a graph-based segmentation scheme. The calculation of the dissimilarity function between adjacent elementary image regions is based on the proximity of each region's feature vector to the main clusters that are formed by the image samples in the feature space. In contrast to typical segmentation approaches of the literature, the global feature space information is included in the spatial graph representation that was derived from the initial Watershed partitioning. A region grouping process is applied next to form the final segmentation results. The proposed approach was also compared to approaches that use feature-based, or spatial information exclusively, to indicate its effectiveness.
本文提出了一种将聚类分析和图形表示的原理相结合的方法,以实现高效的图像分割结果。更具体地说,这里考虑了一种基于特征的区域间不相似关系,以便在基于图形的分割方案中确定不相似矩阵。相邻基本图像区域之间不相似函数的计算基于每个区域的特征向量与特征空间中由图像样本形成的主要聚类的接近程度。与文献中的典型分割方法相比,全局特征空间信息包含在从初始分水岭分割派生的空间图形表示中。接下来应用区域分组过程以形成最终的分割结果。还将所提出的方法与仅使用基于特征或空间信息的方法进行了比较,以表明其有效性。