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Hierarchical Image Segmentation Based on Semidefinite Programming

机译:基于半定规划的分层图像分割

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Image segmentation based on graph representations has been a very active field of research recently. One major reason is that pairwise similarities (encoded by a graph) are also applicable in general situations where prototypical image descriptors as partitioning cues are no longer adequate. In this context, we recently proposed a novel convex programming approach for segmentation in terms of optimal graph cuts which compares favorably with alternative methods in several aspects. In this paper we present a fully elaborated version of this approach along several directions: first, an image preprocessing method is proposed to reduce the problem size by several orders of magnitude. Furthermore, we argue that the hierarchical partition tree is a natural data structure as opposed to enforcing multiway cuts directly. In this context, we address various aspects regarding the fully automatic computation of the final segmentation. Experimental results illustrate the encouraging performance of our approach for unsupervised image segmentation.
机译:基于图形表示的图像分割是近来非常活跃的研究领域。一个主要的原因是,成对相似性(由图编码)也适用于一般情况下,在这种情况下,原型图像描述符作为划分线索已不再足够。在这种情况下,我们最近提出了一种新颖的凸规划方法,用于根据最优图割进行分割,该方法在多个方面与替代方法相比具有优势。在本文中,我们从几个方向介绍了该方法的完整版本:首先,提出了一种图像预处理方法,以将问题大小减小几个数量级。此外,我们认为分层分区树是自然的数据结构,与直接执行多路剪切相反。在这种情况下,我们将解决与最终分割的全自动计算有关的各个方面。实验结果说明了我们的无监督图像分割方法的令人鼓舞的性能。

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