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An optimal graph theoretic approach to data clustering: theory and its application to image segmentation

机译:数据聚类的最优图论方法:理论及其在图像分割中的应用

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A novel graph theoretic approach for data clustering is presented and its application to the image segmentation problem is demonstrated. The data to be clustered are represented by an undirected adjacency graph G with arc capacities assigned to reflect the similarity between the linked vertices. Clustering is achieved by removing arcs of G to form mutually exclusive subgraphs such that the largest inter-subgraph maximum flow is minimized. For graphs of moderate size ( approximately 2000 vertices), the optimal solution is obtained through partitioning a flow and cut equivalent tree of G, which can be efficiently constructed using the Gomory-Hu algorithm (1961). However for larger graphs this approach is impractical. New theorems for subgraph condensation are derived and are then used to develop a fast algorithm which hierarchically constructs and partitions a partially equivalent tree of much reduced size. This algorithm results in an optimal solution equivalent to that obtained by partitioning the complete equivalent tree and is able to handle very large graphs with several hundred thousand vertices. The new clustering algorithm is applied to the image segmentation problem. The segmentation is achieved by effectively searching for closed contours of edge elements (equivalent to minimum cuts in G), which consist mostly of strong edges, while rejecting contours containing isolated strong edges. This method is able to accurately locate region boundaries and at the same time guarantees the formation of closed edge contours.
机译:提出了一种新颖的图论数据聚类方法,并说明了其在图像分割中的应用。要聚类的数据由一个无向的邻接图G表示,其分配的电弧容量可反映链接的顶点之间的相似性。通过除去G的弧以形成互斥的子图来实现聚类,从而最大的子图间最大流量被最小化。对于中等大小的图形(大约2000个顶点),可以通过对G的流进行割并割等价树来获得最佳解,可以使用Gomory-Hu算法(1961)有效地构造G。但是,对于较大的图形,此方法不切实际。导出了子图缩合的新定理,然后将其用于开发一种快速算法,该算法可分层构造和划分大小相当减少的部分等效树。此算法产生的最佳解决方案与通过分割完整的等效树获得的解决方案等效,并且能够处理具有数十万个顶点的非常大的图。新的聚类算法被应用于图像分割问题。通过有效搜索边缘元素的闭合轮廓(相当于G中的最小切口)来实现分割,该轮廓主要由强边缘组成,而拒绝包含孤立的强边缘的轮廓。这种方法能够精确定位区域边界,同时确保形成闭合的边缘轮廓。

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